"Phylogeny-Driven Approaches to Genomics and Metagenomics" talk by Jonathan Eisen at U. Washington...
-
Upload
jonathan-eisen -
Category
Health & Medicine
-
view
4.863 -
download
5
description
Transcript of "Phylogeny-Driven Approaches to Genomics and Metagenomics" talk by Jonathan Eisen at U. Washington...
Phylogeny-Driven Approaches to Genomics and Metagenomics
Jonathan A. EisenUniversity of California, Davis
@phylogenomics
Talk atUniversity of Washington
October 23, 2013
Wednesday, October 23, 13
My Obsessions
Jonathan A. EisenUniversity of California, Davis
@phylogenomics
Talk atUniversity of Washington
October 23, 2013
Wednesday, October 23, 13
Open Science
Wednesday, October 23, 13
Open Science
XWednesday, October 23, 13
Social Media & Science
Wednesday, October 23, 13
Social Media & Science
XWednesday, October 23, 13
• RedSox
RedSox
Wednesday, October 23, 13
• RedSox
RedSox
XWednesday, October 23, 13
Microbial Evolution
Wednesday, October 23, 13
Sequencing
Wednesday, October 23, 13
Sequencing, Phylogeny, Microbes
Wednesday, October 23, 13
Four Eras of Sequencing & Microbes
Wednesday, October 23, 13
Era I: The Tree of Life
Wednesday, October 23, 13
Tree from Woese. 1987. Microbiological Reviews 51:221
Lost in Graduate School?
Colias
Wednesday, October 23, 13
Tree from Woese. 1987. Microbiological Reviews 51:221
XLost in Graduate School?
Colias Phil Hanawalt
Wednesday, October 23, 13
Tree from Woese. 1987. Microbiological Reviews 51:221
XLost in Graduate School?
Colias Phil Hanawalt Adaptive Mutation
Wednesday, October 23, 13
Tree from Woese. 1987. Microbiological Reviews 51:221
X XLost in Graduate School?
Colias Phil Hanawalt Adaptive Mutation
@RELenski
Wednesday, October 23, 13
Tree from Woese. 1987. Microbiological Reviews 51:221
Lost in Graduate School?
Get A Map
Wednesday, October 23, 13
Tree from Woese. 1987. Microbiological Reviews 51:221
Woese - Three Domains 1977
Wednesday, October 23, 13
Tree from Woese. 1987. Microbiological Reviews 51:221
Map for Graduate School
Wednesday, October 23, 13
Limited Sampling of RRR Studies
Tree from Woese. 1987. Microbiological Reviews 51:221
Wednesday, October 23, 13
My Study Organisms
Tree from Woese. 1987. Microbiological Reviews 51:221
Wednesday, October 23, 13
E.coli vs. H. volcanii UV survival
1E-07
1E-06
1E-05
0.0001
0.001
0.01
0.1
1
RelativeSurvival
0 50 100 150 200 250 300 350 400
UV J/m2
UV Survival E.coli vs H.volcanii
H.volcanii WFD11
E.coli NR10125 mfd+
E.coli NR10121 mfd-
Wednesday, October 23, 13
H. volcanii Excision Repair
0
0.2
0.4
0.6
0 2000 4000 6000 8000 10000 12000 14000 16000 18000
Avg. Mol. Wt.(Base Pairs)
H. volcanii UV Repair Label 7 - 45J / m2)
45 J/m2 Dark 24 Hours
45 J/m2 Photoreac.
45 J/m2 t0
0 J/m2 t0
Wednesday, October 23, 13
RecA vs. rRNA
Eisen 1995 Journal of Molecular Evolution 41: 1105-1123..
Wednesday, October 23, 13
RecA vs. rRNA
Eisen 1995 Journal of Molecular Evolution 41: 1105-1123..
Wednesday, October 23, 13
Whatever the History: Try to Incorporate It
from Lake et al. doi: 10.1098/rstb.2009.0035
Wednesday, October 23, 13
adapted from Baldauf, et al., in Assembling the Tree of Life, 2004
Tree Updated
Wednesday, October 23, 13
Era II: rRNA in the Environment
Wednesday, October 23, 13
DNA extraction
PCRSequence
rRNA genes
Sequence alignment = Data matrixPhylogenetic tree
PCR
rRNA1
Yeast
Makes lots of copies of the rRNA genes in sample
E. coli
Humans
A
T
T
A
G
A
A
C
A
T
C
A
C
A
A
C
A
G
G
A
G
T
T
CrRNA1
E. coli Humans
Yeast
rRNA1 5’
...TACAGTATAGGTGGAGCTAGCGATCGATC
GA... 3’
PCR and phylogenetic analysis of rRNA genes
Wednesday, October 23, 13
Chemosynthetic Symbionts
Eisen et al. 1992Eisen et al. 1992. J. Bact.174: 3416
Wednesday, October 23, 13
DNA extraction
PCRSequence
rRNA genes
Sequence alignment = Data matrixPhylogenetic tree
PCR
rRNA1
rRNA2
Makes lots of copies of the rRNA genes in sample
rRNA1 5’
...ACACACATAGGTGGAGCTAGCGATCGAT
CGA... 3’
E. coli
Humans
A
T
T
A
G
A
A
C
A
T
C
A
C
A
A
C
A
G
G
A
G
T
T
CrRNA1
E. coli Humans
rRNA2
rRNA2 5’
...TACAGTATAGGTGGAGCTAGCGATCGATC
GA... 3’
PCR and phylogenetic analysis of rRNA genes
Yeast T A C A G TYeast
Wednesday, October 23, 13
DNA extraction
PCRSequence
rRNA genes
Sequence alignment = Data matrixPhylogenetic tree
PCR
rRNA1
rRNA2
Makes lots of copies of the rRNA genes in sample
rRNA1 5’...ACACACATAGGTGGAGCTA
GCGATCGATCGA... 3’
E. coli
Humans
A
T
T
A
G
A
A
C
A
T
C
A
C
A
A
C
A
G
G
A
G
T
T
CrRNA1
E. coli Humans
rRNA2rRNA2
5’..TACAGTATAGGTGGAGCTAGCGACGATCGA... 3’
PCR and phylogenetic analysis of rRNA genes
rRNA3 5’...ACGGCAAAATAGGTGGATT
CTAGCGATATAGA... 3’
rRNA4 5’...ACGGCCCGATAGGTGGATT
CTAGCGCCATAGA... 3’
rRNA3 C A C T G T
rRNA4 C A C A G T
Yeast T A C A G T
Yeast
rRNA3 rRNA4
Wednesday, October 23, 13
DNA extraction
PCRSequence
rRNA genes
Sequence alignment = Data matrixPhylogenetic tree
PCR
rRNA1
rRNA2
Makes lots of copies of the rRNA genes in sample
rRNA1 5’...ACACACATAGGTGGAGCTA
GCGATCGATCGA... 3’
E. coli
Humans
A
T
T
A
G
A
A
C
A
T
C
A
C
A
A
C
A
G
G
A
G
T
T
CrRNA1
E. coli Humans
rRNA2rRNA2
5’..TACAGTATAGGTGGAGCTAGCGACGATCGA... 3’
PCR and phylogenetic analysis of rRNA genes
rRNA3 5’...ACGGCAAAATAGGTGGATT
CTAGCGATATAGA... 3’
rRNA4 5’...ACGGCCCGATAGGTGGATT
CTAGCGCCATAGA... 3’
rRNA3 C A C T G T
rRNA4 C A C A G T
Yeast T A C A G T
Yeast
rRNA3 rRNA4
Phylogeny
Wednesday, October 23, 13
• OTUs• Taxonomic lists• Relative abundance of taxa• Ecological metrics (alpha / beta diversity)
• Phylogenetic metrics• Binning• Identification of novel groups• Clades• Rates of change• LGT• Convergence• PD• Phylogenetic ecology (e.g., Unifrac)
Uses of rRNA Phylogeny
Wednesday, October 23, 13
Approaching to NGS
Discovery of DNA structure(Cold Spring Harb. Symp. Quant. Biol. 1953;18:123-31)
1953
Sanger sequencing method by F. Sanger(PNAS ,1977, 74: 560-564)
1977
PCR by K. Mullis(Cold Spring Harb Symp Quant Biol. 1986;51 Pt 1:263-73)
1983
Development of pyrosequencing(Anal. Biochem., 1993, 208: 171-175; Science ,1998, 281: 363-365)
1993
1980
1990
2000
2010
Single molecule emulsion PCR 1998
Human Genome Project(Nature , 2001, 409: 860–92; Science, 2001, 291: 1304–1351)
Founded 454 Life Science 2000
454 GS20 sequencer(First NGS sequencer) 2005
Founded Solexa 1998
Solexa Genome Analyzer(First short-read NGS sequencer) 2006
GS FLX sequencer(NGS with 400-500 bp read lenght) 2008
Hi-Seq2000(200Gbp per Flow Cell) 2010
Illumina acquires Solexa(Illumina enters the NGS business) 2006
ABI SOLiD(Short-read sequencer based upon ligation) 2007
Roche acquires 454 Life Sciences(Roche enters the NGS business) 2007
NGS Human Genome sequencing(First Human Genome sequencing based upon NGS technology) 2008
From Slideshare presentation of Cosentino Cristianhttp://www.slideshare.net/cosentia/high-throughput-equencing
MiseqRoche JrIon TorrentPacBioOxford
Sequencing Has Gone Crazy
Wednesday, October 23, 13
rRNA PCR Revolution
• More PCR products
• Deeper sequencing• The rare biosphere• Relative abundance estimates
• More samples (with barcoding)• Times series• Spatially diverse sampling• Fine scale sampling
Wednesday, October 23, 13
Beta-Diversity
a broader range of Proteobacteria, but yielded similar results(Fig. S1 and Tables S2 and S3).Across all samples, we identified 4,931 quality Nitrosomadales
sequences, which grouped into 176 OTUs (operational taxo-nomic units) using an arbitrary 99% sequence similarity cutoff.This cutoff retained a high amount of sequence diversity, butminimized the chance of including diversity because of se-quencing or PCR errors. Most (95%) of the sequences appearclosely related either to the marine Nitrosospira-like clade,known to be abundant in estuarine sediments (e.g., ref. 19) or tomarine bacterium C-17, classified as Nitrosomonas (20) (Fig. S2).Pairwise community similarity between the samples was calcu-lated based on the presence or absence of each OTU usinga rarefied Sørensen’s index (4). Community similarity using thisincidence index was highly correlated with the abundance-basedSørensen index (Mantel test: ! = 0.9239; P = 0.0001) (21).A plot of community similarity versus geographic distance for
each pairwise set of samples revealed that the Nitrosomonadalesdisplay a significant, negative distance-decay curve (slope = !0.08,P < 0.0001) (Fig. 2). Furthermore, the slope of this curve variedsignificantly among the three spatial scales. The distance-decayslope within marshes was significantly shallower than the overallslope (slope=!0.04;P< 0.0334) and steeper acrossmarsheswithina region than the overall slope (slope= !0.27, P < 0.0007) (Fig. 2).In contrast, at the continental scale, the distance-decay curve didnot differ from zero (P = 0.0953). Thus, there is no evidence thatsampling across continents contributed Nitromonadales OTU di-versity in addition to what was already observed at the marsh andregional scales. Furthermore, additional analyses suggest that theseresults are not driven by a few outlier samples (Fig. S3).Over all spatial scales, both the environment and dispersal lim-
itation appear to influence Nitrosomonadales "-diversity. Rankedpartial Mantel tests revealed that the similarity in Nitrosomo-nadales community composition between samples was highly cor-related with environmental distance (!=!0.5339; P=0.0001) andgeographic distance (! = !0.2803; P = 0.0001), but not plantcommunity similarity (P = 0.72) (Table S2).To further identify the relative importance of factors con-
tributing to these correlations, we used a multiple regression onmatrices (MRM). The partial regression coefficients of an MRMmodel give a measure of the rate of change in community sim-ilarity per standardized unit of similarity for the variable of in-terest; all other explanatory variables are held constant (22).Over all scales, the MRMmodel explained a large and significantproportion (R2 = 46%; P < 0.0001) of the variability in Nitro-
somonadales community similarity. Geographic distance con-tributed the largest partial regression coefficient (b = 0.40,P < 0.0001), with sediment moisture, nitrate concentration, plantcover, salinity, and air and water temperature contributing tosmaller, but significant, partial regression coefficients (b = 0.09–0.17, P < 0.05) (Table 1). Because salt marsh bacteria may bedispersing through ocean currents, we also used a global oceancirculation model (23), as applied previously (24), to estimaterelative dispersal times of hypothetical microbial cells betweeneach sampling location. Dispersal times between sampling pointsdid not explain more variability in bacterial community similarity(ln dispersal time: b= 0.06, P= !0.0799; with dispersal R2 = 0.47vs. without 0.46). Therefore, in the remaining analyses we usegeographic distance rather than dispersal time.As hypothesized, the relative importance of environmental
factors versus geographic distance to Nitrosomadales communitysimilarity differed across the three spatial scales. Contrary to ourexpectations, however, geographic distance had a strong effecton community similarity within salt marshes (partial regressioncoefficient b = 0.47) but no effect at larger scales (Table 1).Furthermore, the relative importance of different environmentalvariables varied by scale. Sediment moisture, which is likely re-lated to unmeasured variables, such as oxygen availability, wasthe most important variable explaining community similaritywithin marshes (b = 0.63). In contrast, water temperature (b =0.45) and nitrate concentrations (b = 0.17) were more importantat the regional and continental scales, respectively.The varying importance of the environmental parameters at
different spatial scales likely reflects differences in their un-derlying variability at these scales. For example, the MRMmodeldid exceptionally well in explaining variation in Nitrosomadalescommunity similarity at the regional scale (R2 = 0.61) (Table 1).Notably, this spatial scale captures a latitudinal gradient on theeast and west coasts of North America, which results in highvariability in water temperature. Previous studies in the field andlaboratory support the idea that AOB composition is particularlysensitive to temperature (e.g., refs. 25 and 26). Within marshes,
Fig. 1. The 13 marshes sampled (see Table S1 for details). Marshes com-pared with one another within regions are circled. (Inset) The arrangementof sampling points within marshes. Six points were sampled along a 100-mtransect, and a seventh point was sampled "1 km away. Two marshes in theNortheast United States (outlined stars) were sampled more intensively,along four 100-m transects in a grid pattern.
Fig. 2. Distance-decay curves for the Nitrosomadales communities. Thedashed, blue line denotes the least-squares linear regression across all spatialscales. The solid lines denote separate regressions within each of the threespatial scales: within marshes, regional (across marshes within regions circled inFig. 1), and continental (across regions). The slopes of all lines (except the solidlight blue line) are significantly less than zero. The slopes of the solid red linesare significantly different from the slope of the all scale (blue dashed) line.
Martiny et al. PNAS | May 10, 2011 | vol. 108 | no. 19 | 7851
ECOLO
GY
a broader range of Proteobacteria, but yielded similar results(Fig. S1 and Tables S2 and S3).Across all samples, we identified 4,931 quality Nitrosomadales
sequences, which grouped into 176 OTUs (operational taxo-nomic units) using an arbitrary 99% sequence similarity cutoff.This cutoff retained a high amount of sequence diversity, butminimized the chance of including diversity because of se-quencing or PCR errors. Most (95%) of the sequences appearclosely related either to the marine Nitrosospira-like clade,known to be abundant in estuarine sediments (e.g., ref. 19) or tomarine bacterium C-17, classified as Nitrosomonas (20) (Fig. S2).Pairwise community similarity between the samples was calcu-lated based on the presence or absence of each OTU usinga rarefied Sørensen’s index (4). Community similarity using thisincidence index was highly correlated with the abundance-basedSørensen index (Mantel test: ! = 0.9239; P = 0.0001) (21).A plot of community similarity versus geographic distance for
each pairwise set of samples revealed that the Nitrosomonadalesdisplay a significant, negative distance-decay curve (slope = !0.08,P < 0.0001) (Fig. 2). Furthermore, the slope of this curve variedsignificantly among the three spatial scales. The distance-decayslope within marshes was significantly shallower than the overallslope (slope=!0.04;P< 0.0334) and steeper acrossmarsheswithina region than the overall slope (slope= !0.27, P < 0.0007) (Fig. 2).In contrast, at the continental scale, the distance-decay curve didnot differ from zero (P = 0.0953). Thus, there is no evidence thatsampling across continents contributed Nitromonadales OTU di-versity in addition to what was already observed at the marsh andregional scales. Furthermore, additional analyses suggest that theseresults are not driven by a few outlier samples (Fig. S3).Over all spatial scales, both the environment and dispersal lim-
itation appear to influence Nitrosomonadales "-diversity. Rankedpartial Mantel tests revealed that the similarity in Nitrosomo-nadales community composition between samples was highly cor-related with environmental distance (!=!0.5339; P=0.0001) andgeographic distance (! = !0.2803; P = 0.0001), but not plantcommunity similarity (P = 0.72) (Table S2).To further identify the relative importance of factors con-
tributing to these correlations, we used a multiple regression onmatrices (MRM). The partial regression coefficients of an MRMmodel give a measure of the rate of change in community sim-ilarity per standardized unit of similarity for the variable of in-terest; all other explanatory variables are held constant (22).Over all scales, the MRMmodel explained a large and significantproportion (R2 = 46%; P < 0.0001) of the variability in Nitro-
somonadales community similarity. Geographic distance con-tributed the largest partial regression coefficient (b = 0.40,P < 0.0001), with sediment moisture, nitrate concentration, plantcover, salinity, and air and water temperature contributing tosmaller, but significant, partial regression coefficients (b = 0.09–0.17, P < 0.05) (Table 1). Because salt marsh bacteria may bedispersing through ocean currents, we also used a global oceancirculation model (23), as applied previously (24), to estimaterelative dispersal times of hypothetical microbial cells betweeneach sampling location. Dispersal times between sampling pointsdid not explain more variability in bacterial community similarity(ln dispersal time: b= 0.06, P= !0.0799; with dispersal R2 = 0.47vs. without 0.46). Therefore, in the remaining analyses we usegeographic distance rather than dispersal time.As hypothesized, the relative importance of environmental
factors versus geographic distance to Nitrosomadales communitysimilarity differed across the three spatial scales. Contrary to ourexpectations, however, geographic distance had a strong effecton community similarity within salt marshes (partial regressioncoefficient b = 0.47) but no effect at larger scales (Table 1).Furthermore, the relative importance of different environmentalvariables varied by scale. Sediment moisture, which is likely re-lated to unmeasured variables, such as oxygen availability, wasthe most important variable explaining community similaritywithin marshes (b = 0.63). In contrast, water temperature (b =0.45) and nitrate concentrations (b = 0.17) were more importantat the regional and continental scales, respectively.The varying importance of the environmental parameters at
different spatial scales likely reflects differences in their un-derlying variability at these scales. For example, the MRMmodeldid exceptionally well in explaining variation in Nitrosomadalescommunity similarity at the regional scale (R2 = 0.61) (Table 1).Notably, this spatial scale captures a latitudinal gradient on theeast and west coasts of North America, which results in highvariability in water temperature. Previous studies in the field andlaboratory support the idea that AOB composition is particularlysensitive to temperature (e.g., refs. 25 and 26). Within marshes,
Fig. 1. The 13 marshes sampled (see Table S1 for details). Marshes com-pared with one another within regions are circled. (Inset) The arrangementof sampling points within marshes. Six points were sampled along a 100-mtransect, and a seventh point was sampled "1 km away. Two marshes in theNortheast United States (outlined stars) were sampled more intensively,along four 100-m transects in a grid pattern.
Fig. 2. Distance-decay curves for the Nitrosomadales communities. Thedashed, blue line denotes the least-squares linear regression across all spatialscales. The solid lines denote separate regressions within each of the threespatial scales: within marshes, regional (across marshes within regions circled inFig. 1), and continental (across regions). The slopes of all lines (except the solidlight blue line) are significantly less than zero. The slopes of the solid red linesare significantly different from the slope of the all scale (blue dashed) line.
Martiny et al. PNAS | May 10, 2011 | vol. 108 | no. 19 | 7851
ECOLO
GY
Drivers of bacterial !-diversity depend on spatial scaleJennifer B. H. Martinya,1, Jonathan A. Eisenb, Kevin Pennc, Steven D. Allisona,d, and M. Claire Horner-Devinee
aDepartment of Ecology and Evolutionary Biology, and dDepartment of Earth System Science, University of California, Irvine, CA 92697; bDepartment ofEvolution and Ecology, University of California Davis Genome Center, Davis, CA 95616; cCenter for Marine Biotechnology and Biomedicine, The ScrippsInstitution of Oceanography, University of California at San Diego, La Jolla, CA 92093; and eSchool of Aquatic and Fishery Sciences, University of Washington,Seattle, WA 98195
Edited by Edward F. DeLong, Massachusetts Institute of Technology, Cambridge, MA, and approved March 31, 2011 (received for review November 1, 2010)
The factors driving !-diversity (variation in community composi-tion) yield insights into the maintenance of biodiversity on theplanet. Here we tested whether the mechanisms that underliebacterial !-diversity vary over centimeters to continental spatialscales by comparing the composition of ammonia-oxidizing bacte-ria communities in salt marsh sediments. As observed in studiesof macroorganisms, the drivers of salt marsh bacterial !-diversitydepend on spatial scale. In contrast to macroorganism studies,however, we found no evidence of evolutionary diversificationof ammonia-oxidizing bacteria taxa at the continental scale, de-spite an overall relationship between geographic distance andcommunity similarity. Our data are consistent with the idea thatdispersal limitation at local scales can contribute to !-diversity,even though the 16S rRNA genes of the relatively common taxaare globally distributed. These results highlight the importanceof considering multiple spatial scales for understanding microbialbiogeography.
microbial composition | distance-decay | Nitrosomonadales | ecological drift
Biodiversity supports the ecosystem processes upon which so-ciety depends (1). Understanding the mechanisms that gen-
erate andmaintain biodiversity is thus key to predicting ecosystemresponses to future environmental changes. The decrease incommunity similarity with geographic distance is a universalbiogeographic pattern observed in communities from alldomains of life (as in refs. 2–4). Pinpointing the underlyingcauses of this “distance-decay” pattern continues to be an area ofintense research (5–9), as such studies of !-diversity (variation incommunity composition) yield insights into the maintenance ofbiodiversity. These studies are still relatively rare for micro-organisms, however, and thus our understanding of the mecha-nisms underlying microbial diversity—most of the tree of life—remains limited.!-Diversity, and therefore distance-decay patterns, could be
driven solely by differences in environmental conditions acrossspace, a hypothesis summed up by microbiologists as, “every-thing is everywhere—the environmental selects” (10). Under thismodel, a distance-decay curve is observed because environmen-tal variables tend to be spatially autocorrelated, and organismswith differing niche preferences are selected from the availablepool of taxa as the environment changes with distance.Dispersal limitation can also give rise to !-diversity, as it per-
mits historical contingencies to influence present-day biogeo-graphic patterns. For example, neutral niche models, in which anorganism’s abundance is not influenced by its environmentalpreferences, predict a distance-decay curve (8, 11). On relativelyshort time scales, stochastic births and deaths contribute toa heterogeneous distribution of taxa (ecological drift). On longertime scales, stochastic genetic processes allow for taxon di-versification across the landscape (evolutionary drift). If dispersalis limiting, then current environmental or biotic conditions willnot fully explain the distance-decay curve, and thus geographicdistance will be correlated with community similarity even aftercontrolling for other factors (2).For macroorganisms, the relative contribution of environ-
mental factors or dispersal limitation to !-diversity depends on
spatial scale (12). Fifty-years ago, Preston (13) noted that theturnover rate (rate of change) of bird species composition acrossspace within a continent is lower than that across continents. Heattributed the high turnover rate across continents to evolu-tionary diversification (i.e., speciation) between faunas as a resultof dispersal limitation and the lower turnover rates of bird spe-cies within continents as a result of environmental variation.Here we investigate whether the mechanisms underlying !-
diversity in bacteria also vary by spatial scale. We chose to focuson the ammonia-oxidizing bacteria (AOB), which along with theammonia-oxidizing archaea (14), perform the rate-limiting step ofnitrification and thus play a key role in nitrogen dynamics. Wecompared AOB community composition in 106 sediment samplesfrom 12 salt marshes on three continents. A partially nestedsampling design achieved a relatively balanced distribution ofpairwise distance classes over nine orders of magnitude, from3 cm to 12,500 km (Fig. 1 and Table S1). We limited our sam-pling to a monophyletic group of bacteria, the AOB within the!-Proteobacteria, and one habitat, salt marshes primarily domi-nated by cordgrass (Spartina spp.). This approach constrainedthe pool of total diversity (richness) and kept the environmentaland plant variation relatively constant, increasing our ability toidentify if dispersal limitation influences AOB composition.We then asked two questions: (i) Does bacterial !-diversity—
specifically, the slope of the distance-decay curve—vary overlocal (within marsh), regional (across marshes within a coast),and continental scales? (ii) Do the underlying factors (environ-mental variation or dispersal limitation) explaining this diversityvary by spatial scale? Because most bacteria are small, abundant,and hardy, we predicted that dispersal limitation would occurprimarily across continents, resulting in genetically divergentmicrobial “provinces” (15). At the same time, we predicted thatenvironmental factors would contribute equally to distance-decay at all scales, resulting in the steepest slope at the continentalscale as reported in plant and animal communities (12, 13, 16).
Results and DiscussionWe characterized AOB community composition by cloning andSanger sequencing of 16S rRNA gene regions targeted by twoprimer sets. Here we focus on the results from a subset of thosesequences from the order Nitrosomonadales, generated usingprimers specific for AOB within the !-Proteobacteria class (17).The second primer set (18) generated longer sequences from
Author contributions: J.B.H.M. and M.C.H.-D. designed research; J.B.H.M., J.A.E., K.P., andM.C.H.-D. performed research; J.B.H.M., S.D.A., and M.C.H.-D. analyzed data; and J.B.H.M.and M.C.H.-D. wrote the paper.
The authors declare no conflict of interest.
This article is a PNAS Direct Submission.
Freely available online through the PNAS open access option.
Data deposition: The sequences reported in this paper have been deposited in the Gen-Bank database (accession nos. HQ271472–HQ276885 and HQ276886–HQ283075).1To whom correspondence should be addressed. E-mail: [email protected].
This article contains supporting information online at www.pnas.org/lookup/suppl/doi:10.1073/pnas.1016308108/-/DCSupplemental.
7850–7854 | PNAS | May 10, 2011 | vol. 108 | no. 19 www.pnas.org/cgi/doi/10.1073/pnas.1016308108
Drivers of bacterial !-diversity depend on spatial scaleJennifer B. H. Martinya,1, Jonathan A. Eisenb, Kevin Pennc, Steven D. Allisona,d, and M. Claire Horner-Devinee
aDepartment of Ecology and Evolutionary Biology, and dDepartment of Earth System Science, University of California, Irvine, CA 92697; bDepartment ofEvolution and Ecology, University of California Davis Genome Center, Davis, CA 95616; cCenter for Marine Biotechnology and Biomedicine, The ScrippsInstitution of Oceanography, University of California at San Diego, La Jolla, CA 92093; and eSchool of Aquatic and Fishery Sciences, University of Washington,Seattle, WA 98195
Edited by Edward F. DeLong, Massachusetts Institute of Technology, Cambridge, MA, and approved March 31, 2011 (received for review November 1, 2010)
The factors driving !-diversity (variation in community composi-tion) yield insights into the maintenance of biodiversity on theplanet. Here we tested whether the mechanisms that underliebacterial !-diversity vary over centimeters to continental spatialscales by comparing the composition of ammonia-oxidizing bacte-ria communities in salt marsh sediments. As observed in studiesof macroorganisms, the drivers of salt marsh bacterial !-diversitydepend on spatial scale. In contrast to macroorganism studies,however, we found no evidence of evolutionary diversificationof ammonia-oxidizing bacteria taxa at the continental scale, de-spite an overall relationship between geographic distance andcommunity similarity. Our data are consistent with the idea thatdispersal limitation at local scales can contribute to !-diversity,even though the 16S rRNA genes of the relatively common taxaare globally distributed. These results highlight the importanceof considering multiple spatial scales for understanding microbialbiogeography.
microbial composition | distance-decay | Nitrosomonadales | ecological drift
Biodiversity supports the ecosystem processes upon which so-ciety depends (1). Understanding the mechanisms that gen-
erate andmaintain biodiversity is thus key to predicting ecosystemresponses to future environmental changes. The decrease incommunity similarity with geographic distance is a universalbiogeographic pattern observed in communities from alldomains of life (as in refs. 2–4). Pinpointing the underlyingcauses of this “distance-decay” pattern continues to be an area ofintense research (5–9), as such studies of !-diversity (variation incommunity composition) yield insights into the maintenance ofbiodiversity. These studies are still relatively rare for micro-organisms, however, and thus our understanding of the mecha-nisms underlying microbial diversity—most of the tree of life—remains limited.!-Diversity, and therefore distance-decay patterns, could be
driven solely by differences in environmental conditions acrossspace, a hypothesis summed up by microbiologists as, “every-thing is everywhere—the environmental selects” (10). Under thismodel, a distance-decay curve is observed because environmen-tal variables tend to be spatially autocorrelated, and organismswith differing niche preferences are selected from the availablepool of taxa as the environment changes with distance.Dispersal limitation can also give rise to !-diversity, as it per-
mits historical contingencies to influence present-day biogeo-graphic patterns. For example, neutral niche models, in which anorganism’s abundance is not influenced by its environmentalpreferences, predict a distance-decay curve (8, 11). On relativelyshort time scales, stochastic births and deaths contribute toa heterogeneous distribution of taxa (ecological drift). On longertime scales, stochastic genetic processes allow for taxon di-versification across the landscape (evolutionary drift). If dispersalis limiting, then current environmental or biotic conditions willnot fully explain the distance-decay curve, and thus geographicdistance will be correlated with community similarity even aftercontrolling for other factors (2).For macroorganisms, the relative contribution of environ-
mental factors or dispersal limitation to !-diversity depends on
spatial scale (12). Fifty-years ago, Preston (13) noted that theturnover rate (rate of change) of bird species composition acrossspace within a continent is lower than that across continents. Heattributed the high turnover rate across continents to evolu-tionary diversification (i.e., speciation) between faunas as a resultof dispersal limitation and the lower turnover rates of bird spe-cies within continents as a result of environmental variation.Here we investigate whether the mechanisms underlying !-
diversity in bacteria also vary by spatial scale. We chose to focuson the ammonia-oxidizing bacteria (AOB), which along with theammonia-oxidizing archaea (14), perform the rate-limiting step ofnitrification and thus play a key role in nitrogen dynamics. Wecompared AOB community composition in 106 sediment samplesfrom 12 salt marshes on three continents. A partially nestedsampling design achieved a relatively balanced distribution ofpairwise distance classes over nine orders of magnitude, from3 cm to 12,500 km (Fig. 1 and Table S1). We limited our sam-pling to a monophyletic group of bacteria, the AOB within the!-Proteobacteria, and one habitat, salt marshes primarily domi-nated by cordgrass (Spartina spp.). This approach constrainedthe pool of total diversity (richness) and kept the environmentaland plant variation relatively constant, increasing our ability toidentify if dispersal limitation influences AOB composition.We then asked two questions: (i) Does bacterial !-diversity—
specifically, the slope of the distance-decay curve—vary overlocal (within marsh), regional (across marshes within a coast),and continental scales? (ii) Do the underlying factors (environ-mental variation or dispersal limitation) explaining this diversityvary by spatial scale? Because most bacteria are small, abundant,and hardy, we predicted that dispersal limitation would occurprimarily across continents, resulting in genetically divergentmicrobial “provinces” (15). At the same time, we predicted thatenvironmental factors would contribute equally to distance-decay at all scales, resulting in the steepest slope at the continentalscale as reported in plant and animal communities (12, 13, 16).
Results and DiscussionWe characterized AOB community composition by cloning andSanger sequencing of 16S rRNA gene regions targeted by twoprimer sets. Here we focus on the results from a subset of thosesequences from the order Nitrosomonadales, generated usingprimers specific for AOB within the !-Proteobacteria class (17).The second primer set (18) generated longer sequences from
Author contributions: J.B.H.M. and M.C.H.-D. designed research; J.B.H.M., J.A.E., K.P., andM.C.H.-D. performed research; J.B.H.M., S.D.A., and M.C.H.-D. analyzed data; and J.B.H.M.and M.C.H.-D. wrote the paper.
The authors declare no conflict of interest.
This article is a PNAS Direct Submission.
Freely available online through the PNAS open access option.
Data deposition: The sequences reported in this paper have been deposited in the Gen-Bank database (accession nos. HQ271472–HQ276885 and HQ276886–HQ283075).1To whom correspondence should be addressed. E-mail: [email protected].
This article contains supporting information online at www.pnas.org/lookup/suppl/doi:10.1073/pnas.1016308108/-/DCSupplemental.
7850–7854 | PNAS | May 10, 2011 | vol. 108 | no. 19 www.pnas.org/cgi/doi/10.1073/pnas.1016308108
Our data are consistent with the idea that dispersal limitation at local scales can contribute to à-diversity, even though the 16S rRNA genes of the relatively common taxa are globally distributed.
Wednesday, October 23, 13
Drosophila microbiome
Both natural surveys and laboratory experiments indicate that host diet plays a major role in shaping the Drosophila bacterial microbiome.
Laboratory strains provide only a limited model of natural host–microbe interactions
Wednesday, October 23, 13
The Built Environment
ORIGINAL ARTICLE
Architectural design influences the diversity andstructure of the built environment microbiome
Steven W Kembel1, Evan Jones1, Jeff Kline1,2, Dale Northcutt1,2, Jason Stenson1,2,Ann M Womack1, Brendan JM Bohannan1, G Z Brown1,2 and Jessica L Green1,3
1Biology and the Built Environment Center, Institute of Ecology and Evolution, Department ofBiology, University of Oregon, Eugene, OR, USA; 2Energy Studies in Buildings Laboratory,Department of Architecture, University of Oregon, Eugene, OR, USA and 3Santa Fe Institute,Santa Fe, NM, USA
Buildings are complex ecosystems that house trillions of microorganisms interacting with eachother, with humans and with their environment. Understanding the ecological and evolutionaryprocesses that determine the diversity and composition of the built environment microbiome—thecommunity of microorganisms that live indoors—is important for understanding the relationshipbetween building design, biodiversity and human health. In this study, we used high-throughputsequencing of the bacterial 16S rRNA gene to quantify relationships between building attributes andairborne bacterial communities at a health-care facility. We quantified airborne bacterial communitystructure and environmental conditions in patient rooms exposed to mechanical or windowventilation and in outdoor air. The phylogenetic diversity of airborne bacterial communities waslower indoors than outdoors, and mechanically ventilated rooms contained less diverse microbialcommunities than did window-ventilated rooms. Bacterial communities in indoor environmentscontained many taxa that are absent or rare outdoors, including taxa closely related to potentialhuman pathogens. Building attributes, specifically the source of ventilation air, airflow rates, relativehumidity and temperature, were correlated with the diversity and composition of indoor bacterialcommunities. The relative abundance of bacteria closely related to human pathogens was higherindoors than outdoors, and higher in rooms with lower airflow rates and lower relative humidity.The observed relationship between building design and airborne bacterial diversity suggests thatwe can manage indoor environments, altering through building design and operation the communityof microbial species that potentially colonize the human microbiome during our time indoors.The ISME Journal advance online publication, 26 January 2012; doi:10.1038/ismej.2011.211Subject Category: microbial population and community ecologyKeywords: aeromicrobiology; bacteria; built environment microbiome; community ecology; dispersal;environmental filtering
Introduction
Humans spend up to 90% of their lives indoors(Klepeis et al., 2001). Consequently, the way wedesign and operate the indoor environment has aprofound impact on our health (Guenther andVittori, 2008). One step toward better understandingof how building design impacts human healthis to study buildings as ecosystems. Built envi-ronments are complex ecosystems that containnumerous organisms including trillions of micro-organisms (Rintala et al., 2008; Tringe et al., 2008;Amend et al., 2010). The collection of microbiallife that exists indoors—the built environment
microbiome—includes human pathogens and com-mensals interacting with each other and with theirenvironment (Eames et al., 2009). There have beenfew attempts to comprehensively survey the builtenvironment microbiome (Rintala et al., 2008;Tringe et al., 2008; Amend et al., 2010), with moststudies focused on measures of total bioaerosolconcentrations or the abundance of culturable orpathogenic strains (Berglund et al., 1992; Toivolaet al., 2002; Mentese et al., 2009), rather than a morecomprehensive measure of microbial diversity inindoor spaces. For this reason, the factors thatdetermine the diversity and composition of the builtenvironment microbiome are poorly understood.However, the situation is changing. The develop-ment of culture-independent, high-throughputmolecular sequencing approaches has transformedthe study of microbial diversity in a variety ofenvironments, as demonstrated by the recent explo-sion of research on the microbial ecology of aquaticand terrestrial ecosystems (Nemergut et al., 2011)
Received 23 October 2011; revised 13 December 2011; accepted13 December 2011
Correspondence: SW Kembel, Biology and the Built EnvironmentCenter, Institute of Ecology and Evolution, Department of Biology,University of Oregon, Eugene, OR 97405, USA.E-mail: [email protected]
The ISME Journal (2012), 1–11& 2012 International Society for Microbial Ecology All rights reserved 1751-7362/12
www.nature.com/ismej
Microbial Biogeography of Public Restroom SurfacesGilberto E. Flores1, Scott T. Bates1, Dan Knights2, Christian L. Lauber1, Jesse Stombaugh3, Rob Knight3,4,
Noah Fierer1,5*
1 Cooperative Institute for Research in Environmental Science, University of Colorado, Boulder, Colorado, United States of America, 2 Department of Computer Science,
University of Colorado, Boulder, Colorado, United States of America, 3 Department of Chemistry and Biochemistry, University of Colorado, Boulder, Colorado, United
States of America, 4 Howard Hughes Medical Institute, University of Colorado, Boulder, Colorado, United States of America, 5 Department of Ecology and Evolutionary
Biology, University of Colorado, Boulder, Colorado, United States of America
Abstract
We spend the majority of our lives indoors where we are constantly exposed to bacteria residing on surfaces. However, thediversity of these surface-associated communities is largely unknown. We explored the biogeographical patterns exhibitedby bacteria across ten surfaces within each of twelve public restrooms. Using high-throughput barcoded pyrosequencing ofthe 16 S rRNA gene, we identified 19 bacterial phyla across all surfaces. Most sequences belonged to four phyla:Actinobacteria, Bacteriodetes, Firmicutes and Proteobacteria. The communities clustered into three general categories: thosefound on surfaces associated with toilets, those on the restroom floor, and those found on surfaces routinely touched withhands. On toilet surfaces, gut-associated taxa were more prevalent, suggesting fecal contamination of these surfaces. Floorsurfaces were the most diverse of all communities and contained several taxa commonly found in soils. Skin-associatedbacteria, especially the Propionibacteriaceae, dominated surfaces routinely touched with our hands. Certain taxa were morecommon in female than in male restrooms as vagina-associated Lactobacillaceae were widely distributed in femalerestrooms, likely from urine contamination. Use of the SourceTracker algorithm confirmed many of our taxonomicobservations as human skin was the primary source of bacteria on restroom surfaces. Overall, these results demonstrate thatrestroom surfaces host relatively diverse microbial communities dominated by human-associated bacteria with clearlinkages between communities on or in different body sites and those communities found on restroom surfaces. Moregenerally, this work is relevant to the public health field as we show that human-associated microbes are commonly foundon restroom surfaces suggesting that bacterial pathogens could readily be transmitted between individuals by the touchingof surfaces. Furthermore, we demonstrate that we can use high-throughput analyses of bacterial communities to determinesources of bacteria on indoor surfaces, an approach which could be used to track pathogen transmission and test theefficacy of hygiene practices.
Citation: Flores GE, Bates ST, Knights D, Lauber CL, Stombaugh J, et al. (2011) Microbial Biogeography of Public Restroom Surfaces. PLoS ONE 6(11): e28132.doi:10.1371/journal.pone.0028132
Editor: Mark R. Liles, Auburn University, United States of America
Received September 12, 2011; Accepted November 1, 2011; Published November 23, 2011
Copyright: ! 2011 Flores et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permitsunrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Funding: This work was supported with funding from the Alfred P. Sloan Foundation and their Indoor Environment program, and in part by the NationalInstitutes of Health and the Howard Hughes Medical Institute. The funders had no role in study design, data collection and analysis, decision to publish, orpreparation of the manuscript.
Competing Interests: The authors have declared that no competing interests exist.
* E-mail: [email protected]
Introduction
More than ever, individuals across the globe spend a largeportion of their lives indoors, yet relatively little is known about themicrobial diversity of indoor environments. Of the studies thathave examined microorganisms associated with indoor environ-ments, most have relied upon cultivation-based techniques todetect organisms residing on a variety of household surfaces [1–5].Not surprisingly, these studies have identified surfaces in kitchensand restrooms as being hot spots of bacterial contamination.Because several pathogenic bacteria are known to survive onsurfaces for extended periods of time [6–8], these studies are ofobvious importance in preventing the spread of human disease.However, it is now widely recognized that the majority ofmicroorganisms cannot be readily cultivated [9] and thus, theoverall diversity of microorganisms associated with indoorenvironments remains largely unknown. Recent use of cultiva-tion-independent techniques based on cloning and sequencing ofthe 16 S rRNA gene have helped to better describe these
communities and revealed a greater diversity of bacteria onindoor surfaces than captured using cultivation-based techniques[10–13]. Most of the organisms identified in these studies arerelated to human commensals suggesting that the organisms arenot actively growing on the surfaces but rather were depositeddirectly (i.e. touching) or indirectly (e.g. shedding of skin cells) byhumans. Despite these efforts, we still have an incompleteunderstanding of bacterial communities associated with indoorenvironments because limitations of traditional 16 S rRNA genecloning and sequencing techniques have made replicate samplingand in-depth characterizations of the communities prohibitive.With the advent of high-throughput sequencing techniques, wecan now investigate indoor microbial communities at anunprecedented depth and begin to understand the relationshipbetween humans, microbes and the built environment.
In order to begin to comprehensively describe the microbialdiversity of indoor environments, we characterized the bacterialcommunities found on ten surfaces in twelve public restrooms(six male and six female) in Colorado, USA using barcoded
PLoS ONE | www.plosone.org 1 November 2011 | Volume 6 | Issue 11 | e28132
the stall in), they were likely dispersed manually after women usedthe toilet. Coupling these observations with those of thedistribution of gut-associated bacteria indicate that routine use oftoilets results in the dispersal of urine- and fecal-associated bacteriathroughout the restroom. While these results are not unexpected,they do highlight the importance of hand-hygiene when usingpublic restrooms since these surfaces could also be potentialvehicles for the transmission of human pathogens. Unfortunately,previous studies have documented that college students (who arelikely the most frequent users of the studied restrooms) are notalways the most diligent of hand-washers [42,43].
Results of SourceTracker analysis support the taxonomicpatterns highlighted above, indicating that human skin was theprimary source of bacteria on all public restroom surfacesexamined, while the human gut was an important source on oraround the toilet, and urine was an important source in women’srestrooms (Figure 4, Table S4). Contrary to expectations (seeabove), soil was not identified by the SourceTracker algorithm asbeing a major source of bacteria on any of the surfaces, includingfloors (Figure 4). Although the floor samples contained family-leveltaxa that are common in soil, the SourceTracker algorithmprobably underestimates the relative importance of sources, like
Figure 3. Cartoon illustrations of the relative abundance of discriminating taxa on public restroom surfaces. Light blue indicates lowabundance while dark blue indicates high abundance of taxa. (A) Although skin-associated taxa (Propionibacteriaceae, Corynebacteriaceae,Staphylococcaceae and Streptococcaceae) were abundant on all surfaces, they were relatively more abundant on surfaces routinely touched withhands. (B) Gut-associated taxa (Clostridiales, Clostridiales group XI, Ruminococcaceae, Lachnospiraceae, Prevotellaceae and Bacteroidaceae) were mostabundant on toilet surfaces. (C) Although soil-associated taxa (Rhodobacteraceae, Rhizobiales, Microbacteriaceae and Nocardioidaceae) were in lowabundance on all restroom surfaces, they were relatively more abundant on the floor of the restrooms we surveyed. Figure not drawn to scale.doi:10.1371/journal.pone.0028132.g003
Figure 4. Results of SourceTracker analysis showing the average contributions of different sources to the surface-associatedbacterial communities in twelve public restrooms. The ‘‘unknown’’ source is not shown but would bring the total of each sample up to 100%.doi:10.1371/journal.pone.0028132.g004
Bacteria of Public Restrooms
PLoS ONE | www.plosone.org 5 November 2011 | Volume 6 | Issue 11 | e28132
high diversity of floor communities is likely due to the frequency ofcontact with the bottom of shoes, which would track in a diversityof microorganisms from a variety of sources including soil, which isknown to be a highly-diverse microbial habitat [27,39]. Indeed,bacteria commonly associated with soil (e.g. Rhodobacteraceae,Rhizobiales, Microbacteriaceae and Nocardioidaceae) were, on average,more abundant on floor surfaces (Figure 3C, Table S2).Interestingly, some of the toilet flush handles harbored bacterialcommunities similar to those found on the floor (Figure 2,Figure 3C), suggesting that some users of these toilets may operatethe handle with a foot (a practice well known to germaphobes andthose who have had the misfortune of using restrooms that are lessthan sanitary).
While the overall community level comparisons between thecommunities found on the surfaces in male and female restroomswere not statistically significant (Table S3), there were gender-
related differences in the relative abundances of specific taxa onsome surfaces (Figure 1B, Table S2). Most notably, Lactobacillaceaewere clearly more abundant on certain surfaces within femalerestrooms than male restrooms (Figure 1B). Some species of thisfamily are the most common, and often most abundant, bacteriafound in the vagina of healthy reproductive age women [40,41]and are relatively less abundant in male urine [28,29]. Ouranalysis of female urine samples collected as part of a previousstudy [26] (Figure 1A), found that Lactobacillaceae were dominant inurine, therefore implying that surfaces in the restrooms whereLactobacillaceae were observed were contaminated with urine. Otherstudies have demonstrated a similar phenomenon, with vagina-associated bacteria having also been observed in airplanerestrooms [11] and a child day care facility [10]. As we foundthat Lactobacillaceae were most abundant on toilet surfaces andthose touched by hands after using the toilet (with the exception of
Figure 2. Relationship between bacterial communities associated with ten public restroom surfaces. Communities were clustered usingPCoA of the unweighted UniFrac distance matrix. Each point represents a single sample. Note that the floor (triangles) and toilet (asterisks) surfacesform clusters distinct from surfaces touched with hands.doi:10.1371/journal.pone.0028132.g002
Table 1. Results of pairwise comparisons for unweighted UniFrac distances of bacterial communities associated with varioussurfaces of public restrooms on the University of Colorado campus using the ANOSIM test in Primer v6.
Door in Door out Stall in Stall outFaucethandle
Soapdispenser
Toilet flushhandle Toilet seat Toilet floor
Door in
Door out 20.139
Stall in 0.149 20.053
Stall out 20.074 20.083 20.037
Faucet handle 20.062 20.011 20.092 20.040
Soap dispenser 20.020 0.014 20.060 20.001 0.070
Toilet flush handle 0.376* 0.405* 0.221 0.350* 0.172* 0.470*
Toilet seat 0.742* 0.672* 0.457* 0.586* 0.401* 0.653* 0.187*
Toilet floor 0.995* 0.988* 0.993* 0.961* 0.758* 0.998* 0.577* 0.950*
Sink floor 1.000* 0.995* 1.000* 0.974* 0.770* 1.000* 0.655* 0.982* 20.033
The R-statistic is shown for each comparison with asterisks denoting comparisons that were statistically significant at P#0.01.doi:10.1371/journal.pone.0028132.t001
Bacteria of Public Restrooms
PLoS ONE | www.plosone.org 4 November 2011 | Volume 6 | Issue 11 | e28132
10 FEBRUARY 2012 VOL 335 SCIENCE www.sciencemag.org 650
NEWSFOCUS
CR
ED
ITS
(T
OP
TO
BO
TT
OM
): (P
HO
TO
) C
OU
RT
ES
Y G
ILB
ER
TO
FLO
RE
S; (C
HA
RT
) G
. E
. F
LO
RE
S E
T A
L.,
PLO
S O
NE
6, 1
1 (2
01
1);
PH
OT
O B
Y S
ISIR
A G
OR
TH
ALA
In just that short time, the microbes had begun to take on a “signature” of outside air (more types from plants and soil), and 2 hours after the windows were shut again, the proportion of microbes from the human body increased back to pre-vious levels.
The s tudy, which appeared online 26 Janu-ary in The ISME Journal, found that mechanically ventilated rooms had lower microbial diversity than ones with open win-dows. The availability of fresh air translated into lower proportions of microbes associ-ated with the human body, and consequently, fewer potential pathogens. Although this result suggests that having natural airfl ow may be healthier, Green says answering that question requires clinical data; she’s hoping to convince a hospital to participate in a study to see if the incidence of hospital-acquired infections is associated with a room’s micro-bial community.
For his part, Peccia, who is also a Sloan grantee, is merging microbiology and the
physics of aerosols to look more closely at how the movement of air affects microbes. Peccia says his group is building on work by air-quality engineers and scientists, but “we want to add biology to the equation.”
Bacteria in air behave like other particles; their size dictates how they disperse or settle. Humans in a room not only shed microbes from their skin and mouths, but they also drum up microbial material from the fl oor as
they move around. But to quantify those con-tributions, Peccia’s team has had to develop new methods to collect airborne bacteria and extract their DNA, as the microbes are much less abundant in air than on surfaces.
In one recent study, they used air fi lters to sample airborne particles and microbes in a classroom during 4 days during which students were present and 4 days during which the room was vacant. They measured the abundance and type of fungal and bac-terial genomes present and estimated the microbes’ concentrations in the entire room. By accounting for bacteria entering and leav-
ing the room through ventilation, they calculated that people shed or resuspended about 35 million bacterial cells per person per hour. That number is much higher than the several-hundred-thousand maximum previously estimated to be present in indoor air, Peccia reported last fall at the American Association for Aerosol Research Conference in Orlando, Florida.
His group’s data also suggest that rooms have “memories” of past human inhabitants. By kick-ing into the air settled microbes from the fl oor, occupants expose themselves not just to the microbes of a person coughing next to them, but also possibly to those from a person who coughed in the room a few hours or even days ago.
Peccia hopes to come up with ways to describe the distribution of bacteria indoors that can be used in conjunction with exist-ing knowledge about particulate matter and chemicals in designing healthier buildings. “My hope is that we can bring this enough to the forefront that people who do aerosol sci-ence will fi nd it as important to know biology as to know physics and chemistry,” he says.
Still, even though he’s a willing partici-
pant in indoor microbial ecology research, Peccia thinks that the field has yet to gel. And the Sloan Foundation’s Olsiewski shares some of his con-cern. “Everybody’s gen-erating vast amounts of
data,” she says, but looking across data sets can be diffi cult because groups choose dif-ferent analytical tools. With Sloan support, though, a data archive and integrated analyt-ical tools are in the works.
To foster collaborations between micro-biologists, architects, and building scientists, the foundation also sponsored a symposium on the microbiome of the built environment at the 2011 Indoor Air conference in Austin, Texas, and launched a Web site, MicroBE.net, that’s a clearinghouse of information on the fi eld. Although Olsiewski won’t say how long the foundation will fund its indoor microbial ecology program, she says Sloan is committed to supporting all of the current projects for the next few years. The program’s ultimate goal, she says, is to create a new fi eld of scientifi c inquiry that eventually will be funded by tradi-tional government funding agencies focused on basic biology and environmental policy.
Matthew Kane, a microbial ecologist and program director at the U.S. National Sci-ence Foundation (NSF), says that although there was interest in these questions prior to the Sloan program, the Sloan Foundation has taken a directed approach to funding the research, and “I have no doubt that their investment is going to reap great returns.” So far, though, NSF has funded only one study on indoor microbes: a study of Pseudomonas bacteria in human households.
As studies like Green’s building ecology analysis progress, they should shed light on how indoor environments differ from those traditionally studied by microbial ecologists. “It’s important to have a quantitative under-standing of how building design impacts microbial communities indoors, and how these communities impact human health,” Green says. But it remains to be seen whether we’ll someday design and maintain our build-ings with microbes in mind.
–COURTNEY HUMPHRIES
Courtney Humphries is a freelance writer in Boston and author of Superdove.
100
80
60
40
20
0
Ave
rag
e c
on
trib
uti
on
(%
)
Door in
Door out
Stall i
n
Stall o
ut
Faucet h
andles
Soap disp
enser
Toile
t seat
Toile
t flu
sh h
andle
Toile
t flo
or
Sink f
loor
SOURCES
Soil
Water
Mouth
Urine
Gut
Skin
Outside infl uence. Students prepare to sample air outside a class-room in China as part of an indoor ecology study.
Bathroom biogeography. By swabbing different surfaces in public restrooms, researchers determined that microbes vary in where they come from depend-ing on the surface (chart).
Published by AAAS
on
Febr
uary
9, 2
012
ww
w.s
cien
cem
ag.o
rgD
ownl
oade
d fro
m
Wednesday, October 23, 13
Citizen Science - Project MERCCURI
Wednesday, October 23, 13
Phone Microbiome
Georgia Barguil
Jack Gilbert
Wednesday, October 23, 13
Era III: Genomics
Wednesday, October 23, 13
1st Genome Sequence
Fleischmann et al. 1995
Wednesday, October 23, 13
My Study Organisms
Tree from Woese. 1987. Microbiological Reviews 51:221
Wednesday, October 23, 13
TIGR Genome Projects
Tree from Woese. 1987. Microbiological Reviews 51:221
Wednesday, October 23, 13
TIGR Genome Projects
Tree from Woese. 1987. Microbiological Reviews 51:221
Wednesday, October 23, 13
If you can’t beat them, critique them ...
Fleischmann et al. 1995
Wednesday, October 23, 13
Helicobacter pylori genome 1997
Wednesday, October 23, 13
PHYLOGENENETIC PREDICTION OF GENE FUNCTION
IDENTIFY HOMOLOGS
OVERLAY KNOWNFUNCTIONS ONTO TREE
INFER LIKELY FUNCTIONOF GENE(S) OF INTEREST
1 2 3 4 5 6
3 5
3
1A 2A 3A 1B 2B 3B
2A 1B
1A
3A
1B2B
3B
ALIGN SEQUENCES
CALCULATE GENE TREE
12
4
6
CHOOSE GENE(S) OF INTEREST
2A
2A
5
3
Species 3Species 1 Species 2
1
1 2
2
2 31
1A 3A
1A 2A 3A
1A 2A 3A
4 6
4 5 6
4 5 6
2B 3B
1B 2B 3B
1B 2B 3B
ACTUAL EVOLUTION(ASSUMED TO BE UNKNOWN)
Duplication?
EXAMPLE A EXAMPLE B
Duplication?
Duplication?
Duplication
5
METHOD
Ambiguous
Based on Eisen, 1998 Genome Res 8: 163-167.
Phylogenomics
Wednesday, October 23, 13
Phylogenetic Prediction of Function
• Many powerful and automated similarity based methods for assigning genes to protein families• COGs• PFAM HMM searches
• Some limitations of similarity based methods can be overcome by phylogenetic approaches
• Automated methods now available• Sean Eddy• Steven Brenner• Kimmen Sjölander
Wednesday, October 23, 13
Phylogenetic Prediction of Function
• Many powerful and automated similarity based methods for assigning genes to protein families• COGs• PFAM HMM searches
• Some limitations of similarity based methods can be overcome by phylogenetic approaches
• Automated methods now available• Sean Eddy• Steven Brenner• Kimmen Sjölander
• But …
Wednesday, October 23, 13
Carboxydothermus hydrogenoformans
• Isolated from a Russian hotspring• Thermophile (grows at 80°C)• Anaerobic• Grows very efficiently on CO (Carbon
Monoxide)• Produces hydrogen gas• Low GC Gram positive (Firmicute)• Genome Determined (Wu et al. 2005
PLoS Genetics 1: e65. )
Wednesday, October 23, 13
Homologs of Sporulation Genes
Wu et al. 2005 PLoS Genetics 1: e65.
Wednesday, October 23, 13
Carboxydothermus sporulates
Wu et al. 2005 PLoS Genetics 1: e65.
Wednesday, October 23, 13
Non-Homology Predictions: Phylogenetic Profiling
• Step 1: Search all genes in organisms of interest against all other genomes
• Ask: Yes or No, is each gene found in each other species
• Cluster genes by distribution patterns (profiles)
Wednesday, October 23, 13
Sporulation Gene Profile
Wu et al. 2005 PLoS Genetics 1: e65. Wednesday, October 23, 13
B. subtilis new sporulation genes
Wednesday, October 23, 13
From http://genomesonline.orgWednesday, October 23, 13
PG Profiling Independent Contrasts
Wednesday, October 23, 13
Whole Genome Trees
AMPHORA
Wednesday, October 23, 13
Era IV: Genomes in the Environment
Wednesday, October 23, 13
DNA extraction
PCRSequence
rRNA genes
Sequence alignment = Data matrixPhylogenetic tree
PCR
rRNA1
rRNA2
Makes lots of copies of the rRNA genes in sample
rRNA1 5’...ACACACATAGGTGGAGCTA
GCGATCGATCGA... 3’
E. coli
Humans
A
T
T
A
G
A
A
C
A
T
C
A
C
A
A
C
A
G
G
A
G
T
T
CrRNA1
E. coli Humans
rRNA2rRNA2
5’..TACAGTATAGGTGGAGCTAGCGACGATCGA... 3’
PCR and phylogenetic analysis of rRNA genes
rRNA3 5’...ACGGCAAAATAGGTGGATT
CTAGCGATATAGA... 3’
rRNA4 5’...ACGGCCCGATAGGTGGATT
CTAGCGCCATAGA... 3’
rRNA3 C A C T G T
rRNA4 C A C A G T
Yeast T A C A G T
Yeast
rRNA3 rRNA4
Phylotyping
Wednesday, October 23, 13
DNA extraction
PCRSequenceall genes
Shotgun
Shotgun metagenomics
Wednesday, October 23, 13
DNA extraction
PCRSequenceall genes
Shotgun
Shotgun metagenomics
Wednesday, October 23, 13
DNA extraction
PCRSequenceall genes
Phylogenetic tree
Shotgun
rRNA1
E. coli Humans
rRNA2
Yeast
rRNA3 rRNA4
Phylotyping
Phylogeny has many uses in shotgun metagenomics
Wednesday, October 23, 13
Uses of Phylogeny in Metagenomics
• Taxonomic assessment• Phylogenetic OTUs• Phylogenetic taxonomy assignment• Phylogenetic binning
• Sample comparisons and hypothesis testing• Alpha diversity (i.e., PD)• Beta diversity• Trait evolution• Dispersal• Functional predictions• Rates of evolution• Convergence
Wednesday, October 23, 13
Venter et al., Science 304: 66. 2004
rRNA Phylotyping - Sargasso Metagenome
Wednesday, October 23, 13
Venter et al., Science 304: 66. 2004
RecA Phylotyping - Sargasso Metagenome
Wednesday, October 23, 13
0
0.125
0.250
0.375
0.500
Alphapro
teobacteria
Betap
roteobacteria
Gamm
aproteobacteria
Epsilo
nproteobacteria
Deltapro
teobacteria
Cyanobacteria
Firmicutes
Actinobacteria
Chlorobi
CFB
Chloroflexi
Spirochaetes
Fusobacteria
Deinococcus-Th
ermus
Euryarchaeota
Crenarchaeota
Sargasso Phylotypes
Wei
ghte
d %
of C
lone
s
Major Phylogenetic Group
EFG EFTu HSP70 RecA RpoB rRNA
Phylotyping - Sargasso Metagenome
Venter et al., Science 304: 66. 2004
Wednesday, October 23, 13
AMPHORA Phylotyping
AMPHORA
http://genomebiology.com/2008/9/10/R151 Genome Biology 2008, Volume 9, Issue 10, Article R151 Wu and Eisen R151.7
Genome Biology 2008, 9:R151
sequences are not conserved at the nucleotide level [29]. As a
result, the nr database does not actually contain many more
protein marker sequences that can be used as references than
those available from complete genome sequences.
Comparison of phylogeny-based and similarity-based phylotypingAlthough our phylogeny-based phylotyping is fully auto-
mated, it still requires many more steps than, and is slower
than, similarity based phylotyping methods such as a
MEGAN [30]. Is it worth the trouble? Similarity based phylo-
typing works by searching a query sequence against a refer-
ence database such as NCBI nr and deriving taxonomic
information from the best matches or 'hits'. When species
that are closely related to the query sequence exist in the ref-
erence database, similarity-based phylotyping can work well.
However, if the reference database is a biased sample or if it
contains no closely related species to the query, then the top
hits returned could be misleading [31]. Furthermore, similar-
ity-based methods require an arbitrary similarity cut-off
value to define the top hits. Because individual bacterial
genomes and proteins can evolve at very different rates, a uni-
versal cut-off that works under all conditions does not exist.
As a result, the final results can be very subjective.
In contrast, our tree-based bracketing algorithm places the
query sequence within the context of a phylogenetic tree and
only assigns it to a taxonomic level if that level has adequate
sampling (see Materials and methods [below] for details of
the algorithm). With the well sampled species Prochlorococ-
cus marinus, for example, our method can distinguish closely
related organisms and make taxonomic identifications at the
species level. Our reanalysis of the Sargasso Sea data placed
672 sequences (3.6% of the total) within a P. marinus clade.
On the other hand, for sparsely sampled clades such as
Aquifex, assignments will be made only at the phylum level.
Thus, our phylogeny-based analysis is less susceptible to data
sampling bias than a similarity based approach, and it makes
Major phylotypes identified in Sargasso Sea metagenomic dataFigure 3Major phylotypes identified in Sargasso Sea metagenomic data. The metagenomic data previously obtained from the Sargasso Sea was reanalyzed using AMPHORA and the 31 protein phylogenetic markers. The microbial diversity profiles obtained from individual markers are remarkably consistent. The breakdown of the phylotyping assignments by markers and major taxonomic groups is listed in Additional data file 5.
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
Alphap
roteo
bacte
ria
Betapr
oteob
acter
ia
Gammap
roteo
bacte
ria
Deltap
roteo
bacte
ria
Epsilo
npro
teoba
cteria
Unclas
sified
prote
obac
teria
Bacter
oidete
s
Chlamyd
iae
Cyano
bacte
ria
Acidob
acter
ia
Therm
otoga
e
Fusob
acter
ia
Actino
bacte
ria
Aquific
ae
Plancto
mycete
s
Spiroc
haete
s
Firmicu
tes
Chloro
flexi
Chloro
bi
Unclas
sified
bacte
ria
dnaGfrrinfCnusApgkpyrGrplArplBrplCrplDrplErplFrplKrplLrplMrplNrplPrplSrplTrpmArpoBrpsBrpsCrpsErpsIrpsJrpsKrpsMrpsSsmpBtsf
Rel
ativ
e ab
unda
nce
Wednesday, October 23, 13
GOS 1
GOS 2
GOS 3
GOS 4
GOS 5
Phylogenetic ID of Novel Lineages
Wu et al PLoS One 2011
Wednesday, October 23, 13
Phylogenetic Functional Prediction
Venter et al., Science 304: 66. 2004
Wednesday, October 23, 13
Wu et al. 2006 PLoS Biology 4: e188.
Baumannia makes vitamins and cofactors
Sulcia makes amino acids
Phylogenetic Binning
Wednesday, October 23, 13
Improving Phylogenomics I
Wednesday, October 23, 13
Updated Tree of Life
Figure from Barton, Eisen et al. “Evolution”, CSHL Press based on Baldauf et al Tree
Wednesday, October 23, 13
Genomes Poorly Sampled
Figure from Barton, Eisen et al. “Evolution”, CSHL Press based on Baldauf et al Tree
Wednesday, October 23, 13
TIGR Tree of Life Project
Figure from Barton, Eisen et al. “Evolution”, CSHL Press based on Baldauf et al Tree
Wednesday, October 23, 13
Genomic Encyclopedia of Bacteria & Archaea
Wu et al. 2009 Nature 462, 1056-1060
Figure from Barton, Eisen et al. “Evolution”, CSHL Press based on Baldauf et al Tree
Wednesday, October 23, 13
Genomic Encyclopedia of Bacteria & Archaea
Wu et al. 2009 Nature 462, 1056-1060
Figure from Barton, Eisen et al. “Evolution”, CSHL Press based on Baldauf et al Tree
Wednesday, October 23, 13
Family Diversity vs. PD
Wu et al. 2009 Nature 462, 1056-1060
Wednesday, October 23, 13
The Dark Matter of Biology
From Wu et al. 2009 Nature 462, 1056-1060Wednesday, October 23, 13
83
Number of SAGs from Candidate Phyla
OD
1
OP
11
OP
3
SA
R4
06
Site A: Hydrothermal vent 4 1 - -Site B: Gold Mine 6 13 2 -Site C: Tropical gyres (Mesopelagic) - - - 2Site D: Tropical gyres (Photic zone) 1 - - -
Sample collections at 4 additional sites are underway.
Phil Hugenholtz
GEBA Uncultured
Wednesday, October 23, 13
JGI Dark Matter Project
environmental samples (n=9)
isolation of singlecells (n=9,600)
whole genomeamplification (n=3,300)
SSU rRNA gene based identification
(n=2,000)
genome sequencing, assembly and QC (n=201)
draft genomes(n=201)
SAK
HSM ETLTG
HOT
GOM
GBS
EPR
TAETL T
PR
EBS
AK E
SM G TATTG
OM
OT
seawater brackish/freshwater hydrothermal sediment bioreactor
GN04WS3 (Latescibacteria)GN01
!"#$%&'$LD1
WS1PoribacteriaBRC1
LentisphaeraeVerrucomicrobia
OP3 (Omnitrophica)ChlamydiaePlanctomycetes
NKB19 (Hydrogenedentes)WYOArmatimonadetesWS4
ActinobacteriaGemmatimonadetesNC10SC4WS2
Cyanobacteria()*&2
Deltaproteobacteria
EM19 (Calescamantes)+,-*./'&'012345678#89/,-568/:
GAL35Aquificae
EM3Thermotogae
Dictyoglomi
SPAMGAL15
CD12 (Aerophobetes)OP8 (Aminicenantes)AC1SBR1093
ThermodesulfobacteriaDeferribacteres
Synergistetes
OP9 (Atribacteria)()*&2
CaldisericaAD3
Chloroflexi
AcidobacteriaElusimicrobiaNitrospirae49S1 2B
CaldithrixGOUTA4
*;<%0123=/68>8?8,6@98/:Chlorobi
486?8,A-5BTenericutes4AB@9/,-568/Chrysiogenetes
Proteobacteria
4896@9/,-565BTG3SpirochaetesWWE1 (Cloacamonetes)
C=1ZB3
=D)&'EF58>@,@,,AB&CG56?ABOP1 (Acetothermia)Bacteriodetes
TM7GN02 (Gracilibacteria)
SR1BH1
OD1 (Parcubacteria)
(*1OP11 (Microgenomates)
Euryarchaeota
Micrarchaea
DSEG (Aenigmarchaea)Nanohaloarchaea
Nanoarchaea
Cren MCGThaumarchaeota
Cren C2Aigarchaeota
Cren pISA7
Cren ThermoproteiKorarchaeota
pMC2A384 (Diapherotrites)
BACTERIA ARCHAEA
archaeal toxins (Nanoarchaea)
lytic murein transglycosylase
stringent response (Diapherotrites, Nanoarchaea)
ppGpp
limitingamino acids
SpotT RelA
(GTP or GDP)+ PPi
GTP or GDP+ATP
limitingphosphate,fatty acids,carbon, iron
DksA
Expression of components for stress response
sigma factor (Diapherotrites, Nanoarchaea)
!4
"#$#"%
!2!3 !1
-35 -10
&'()
&*()
+',#-./0123452
oxidoretucase
+ +e- donor e- acceptor
H
'Ribo
ADP
+
'62
O
Reduction
OxidationH
'Ribo
ADP
'6
O
2H
',)##$#6##$#72#####################',)6+ + -
HGT from Eukaryotes (Nanoarchaea)
Eukaryota
O68*62
OH
'6
*8*63
OO
68*62
'6
*8*63
O
tetra-peptide
O68*62
OH
'6
*8*63
OO
68*62
'6
*8*63
O
tetra-peptide
murein (peptido-glycan)
archaeal type purine synthesis (Microgenomates)
PurFPurD9:3'PurL/QPurMPurKPurE9:3*PurB
PurP
?
Archaea
adenine guanine
O
6##'2
+'
'62
'
'
H
H
'
'
'
H
HH' '
H
PRPP ;,<*,+
IMP
,<*,+
A*
GUA *G U
GU
A
*
GU
A UA * U
A * U
Growing AA chain
=+',>?/0@#recognizes
UGA1+',
UGA recoded for Gly (Gracilibacteria)
ribosome
Woyke et al. Nature 2013.
Wednesday, October 23, 13
A Genomic Encyclopedia of Microbes (GEM)
Figure from Barton, Eisen et al. “Evolution”, CSHL Press based on Baldauf et al Tree
Wednesday, October 23, 13
Improving Phylogenomics II
• Better Methods
Wednesday, October 23, 13
iSEEM
Wednesday, October 23, 13
Zorro - Automated Masking
ce to
Tru
e Tr
ee
0.0
1.0
2.0
3.0
4.0
5.0
6.0
7.0
8.0
9.0
200 400 800 1600 3200
Dist
ance
to T
rue
Tree
Sequence Length
200
no maskingzorrogblocks
Wu M, Chatterji S, Eisen JA (2012) Accounting For Alignment Uncertainty in Phylogenomics. PLoS ONE 7(1): e30288. doi:10.1371/journal.pone.0030288
Wednesday, October 23, 13
Kembel Combiner
cally defined by a sequence similarity threshold) in the sampleas equally related. Newer ! diversity measures that incorporatephylogenetic information are more powerful because they ac-count for the degree of divergence between sequences (13, 18,29, 30). Phylogenetic ! diversity measures can also be eitherquantitative or qualitative depending on whether abundance istaken into account. The original, unweighted UniFrac measure(13) is a qualitative measure. Unweighted UniFrac measuresthe distance between two communities by calculating the frac-tion of the branch length in a phylogenetic tree that leads todescendants in either, but not both, of the two communities(Fig. 1A). The fixation index (FST), which measures thedistance between two communities by comparing the geneticdiversity within each community to the total genetic diversity ofthe communities combined (18), is a quantitative measure thataccounts for different levels of divergence between sequences.The phylogenetic test (P test), which measures the significanceof the association between environment and phylogeny (18), istypically used as a qualitative measure because duplicate se-quences are usually removed from the tree. However, the Ptest may be used in a semiquantitative manner if all clones,even those with identical or near-identical sequences, are in-cluded in the tree (13).
Here we describe a quantitative version of UniFrac that wecall “weighted UniFrac.” We show that weighted UniFrac be-haves similarly to the FST test in situations where both are
applicable. However, weighted UniFrac has a major advantageover FST because it can be used to combine data in whichdifferent parts of the 16S rRNA were sequenced (e.g., whennonoverlapping sequences can be combined into a single treeusing full-length sequences as guides). We use two differentdata sets to illustrate how analyses with quantitative and qual-itative ! diversity measures can lead to dramatically differentconclusions about the main factors that structure microbialdiversity. Specifically, qualitative measures that disregard rel-ative abundance can better detect effects of different foundingpopulations, such as the source of bacteria that first colonizethe gut of newborn mice and the effects of factors that arerestrictive for microbial growth such as temperature. In con-trast, quantitative measures that account for the relative abun-dance of microbial lineages can reveal the effects of moretransient factors such as nutrient availability.
MATERIALS AND METHODS
Weighted UniFrac. Weighted UniFrac is a new variant of the original un-weighted UniFrac measure that weights the branches of a phylogenetic treebased on the abundance of information (Fig. 1B). Weighted UniFrac is thus aquantitative measure of ! diversity that can detect changes in how many se-quences from each lineage are present, as well as detect changes in which taxaare present. This ability is important because the relative abundance of differentkinds of bacteria can be critical for describing community changes. In contrast,the original, unweighted UniFrac (Fig. 1A) is a qualitative ! diversity measurebecause duplicate sequences contribute no additional branch length to the tree(by definition, the branch length that separates a pair of duplicate sequences iszero, because no substitutions separate them).
The first step in applying weighted UniFrac is to calculate the raw weightedUniFrac value (u), according to the first equation:
u ! !i
n
bi " "Ai
AT#
Bi
BT"
Here, n is the total number of branches in the tree, bi is the length of branch i,Ai and Bi are the numbers of sequences that descend from branch i in commu-nities A and B, respectively, and AT and BT are the total numbers of sequencesin communities A and B, respectively. In order to control for unequal samplingeffort, Ai and Bi are divided by AT and BT.
If the phylogenetic tree is not ultrametric (i.e., if different sequences in thesample have evolved at different rates), clustering with weighted UniFrac willplace more emphasis on communities that contain quickly evolving taxa. Sincethese taxa are assigned more branch length, a comparison of the communitiesthat contain them will tend to produce higher values of u. In some situations, itmay be desirable to normalize u so that it has a value of 0 for identical commu-nities and 1 for nonoverlapping communities. This is accomplished by dividing uby a scaling factor (D), which is the average distance of each sequence from theroot, as shown in the equation as follows:
D ! !j
n
dj " #Aj
AT$
Bj
BT$
Here, dj is the distance of sequence j from the root, Aj and Bj are the numbersof times the sequences were observed in communities A and B, respectively, andAT and BT are the total numbers of sequences from communities A and B,respectively.
Clustering with normalized u values treats each sample equally instead of
TABLE 1. Measurements of diversity
Measure Measurement of " diversity Measurement of ! diversity
Only presence/absence of taxa considered Qualitative (species richness) QualitativeAdditionally accounts for the no. of times that
each taxon was observedQuantitative (species richness and evenness) Quantitative
FIG. 1. Calculation of the unweighted and the weighted UniFracmeasures. Squares and circles represent sequences from two differentenvironments. (a) In unweighted UniFrac, the distance between thecircle and square communities is calculated as the fraction of thebranch length that has descendants from either the square or the circleenvironment (black) but not both (gray). (b) In weighted UniFrac,branch lengths are weighted by the relative abundance of sequences inthe square and circle communities; square sequences are weightedtwice as much as circle sequences because there are twice as many totalcircle sequences in the data set. The width of branches is proportionalto the degree to which each branch is weighted in the calculations, andgray branches have no weight. Branches 1 and 2 have heavy weightssince the descendants are biased toward the square and circles, respec-tively. Branch 3 contributes no value since it has an equal contributionfrom circle and square sequences after normalization.
VOL. 73, 2007 PHYLOGENETICALLY COMPARING MICROBIAL COMMUNITIES 1577
Kembel SW, Eisen JA, Pollard KS, Green JL (2011) The Phylogenetic Diversity of Metagenomes. PLoS ONE 6(8): e23214. doi:10.1371/journal.pone.0023214
Wednesday, October 23, 13
Kembel Copy # Correction
Kembel SW, Wu M, Eisen JA, Green JL (2012) Incorporating 16S Gene Copy Number Information Improves Estimates of Microbial Diversity and Abundance. PLoS Comput Biol 8(10): e1002743. doi:10.1371/journal.pcbi.1002743
Wednesday, October 23, 13
alignment used to build the profile, resulting in a multiplesequence alignment of full-length reference sequences andmetagenomic reads. The final step of the alignment process is aquality control filter that 1) ensures that only homologous SSU-rRNA sequences from the appropriate phylogenetic domain areincluded in the final alignment, and 2) masks highly gappedalignment columns (see Text S1).We use this high quality alignment of metagenomic reads and
references sequences to construct a fully-resolved, phylogenetictree and hence determine the evolutionary relationships betweenthe reads. Reference sequences are included in this stage of theanalysis to guide the phylogenetic assignment of the relativelyshort metagenomic reads. While the software can be easilyextended to incorporate a number of different phylogenetic toolscapable of analyzing metagenomic data (e.g., RAxML [27],pplacer [28], etc.), PhylOTU currently employs FastTree as adefault method due to its relatively high speed-to-performanceratio and its ability to construct accurate trees in the presence ofhighly-gapped data [29]. After construction of the phylogeny,lineages representing reference sequences are pruned from thetree. The resulting phylogeny of metagenomic reads is then used tocompute a PD distance matrix in which the distance between apair of reads is defined as the total tree path distance (i.e., branchlength) separating the two reads [30]. This tree-based distancematrix is subsequently used to hierarchically cluster metagenomicreads via MOTHUR into OTUs in a fashion similar to traditionalPID-based analysis [31]. As with PID clustering, the hierarchicalalgorithm can be tuned to produce finer or courser clusters,corresponding to different taxonomic levels, by adjusting theclustering threshold and linkage method.To evaluate the performance of PhylOTU, we employed
statistical comparisons of distance matrices and clustering resultsfor a variety of data sets. These investigations aimed 1) to compare
PD versus PID clustering, 2) to explore overlap between PhylOTUclusters and recognized taxonomic designations, and 3) to quantifythe accuracy of PhylOTU clusters from shotgun reads relative tothose obtained from full-length sequences.
PhylOTU Clusters Recapitulate PID ClustersWe sought to identify how PD-based clustering compares to
commonly employed PID-based clustering methods by applyingthe two methods to the same set of sequences. Both PID-basedclustering and PhylOTU may be used to identify OTUs fromoverlapping sequences. Therefore we applied both methods to adataset of 508 full-length bacterial SSU-rRNA sequences (refer-ence sequences; see above) obtained from the Ribosomal DatabaseProject (RDP) [25]. Recent work has demonstrated that PID ismore accurately calculated from pairwise alignments than multiplesequence alignments [32–33], so we used ESPRIT, whichimplements pairwise alignments, to obtain a PID distance matrixfor the reference sequences [32]. We used PhylOTU to compute aPD distance matrix for the same data. Then, we used MOTHUR tohierarchically cluster sequences into OTUs based on both PIDand PD. For each of the two distance matrices, we employed arange of clustering thresholds and three different definitions oflinkage in the hierarchical clustering algorithm: nearest-neighbor,average, and furthest-neighbor.To statistically evaluate the similarity of cluster composition
between of each pair of clustering results, we used two summarystatistics that together capture the frequency with which sequencesare co-clustered in both analyses: true conjunction rate (i.e., theproportion of pairs of sequences derived from the same cluster inthe first analysis that also are clustered together in the secondanalysis) and true disjunction rate (i.e., the proportion of pairs ofsequences derived from different clusters in the first analysis thatalso are not clustered together in the second analysis) (see Methods
Figure 1. PhylOTU Workflow. Computational processes are represented as squares and databases are represented as cylinders in this generalizeworkflow of PhylOTU. See Results section for details.doi:10.1371/journal.pcbi.1001061.g001
Finding Metagenomic OTUs
PLoS Computational Biology | www.ploscompbiol.org 3 January 2011 | Volume 7 | Issue 1 | e1001061
Sharpton TJ, Riesenfeld SJ, Kembel SW, Ladau J, O'Dwyer JP, Green JL, Eisen JA, Pollard KS. (2011) PhylOTU: A High-Throughput Procedure Quantifies Microbial Community Diversity and Resolves Novel Taxa from Metagenomic Data. PLoS Comput Biol 7(1): e1001061. doi:10.1371/journal.pcbi.1001061
Sharpton PhylOTU
Wednesday, October 23, 13
NMF in MetagenomesCharacterizing the niche-space distributions of componentsS
ite
s
N orth American E ast C oast_G S 005_E mbayment
N orth American E ast C oast_G S 002_C oasta l
N orth American E ast C oast_G S 003_C oasta l
N orth American E ast C oast_G S 007_C oasta l
N orth American E ast C oast_G S 004_C oasta l
N orth American E ast C oast_G S 013_C oasta l
N orth American E ast C oast_G S 008_C oasta l
N orth American E ast C oast_G S 011_E stuary
N orth American E ast C oast_G S 009_C oasta l
E astern Tropica l Pacific_G S 021_C oasta l
N orth American E ast C oast_G S 006_E stuary
N orth American E ast C oast_G S 014_C oasta l
Polynesia Archipelagos_G S 051_C ora l R eef Atoll
G alapagos Islands_G S 036_C oasta l
G alapagos Islands_G S 028_C oasta l
Indian O cean_G S 117a_C oasta l sample
G alapagos Islands_G S 031_C oasta l upwelling
G alapagos Islands_G S 029_C oasta l
G alapagos Islands_G S 030_W arm S eep
G alapagos Islands_G S 035_C oasta l
S argasso S ea_G S 001c_O pen O cean
E astern Tropica l Pacific_G S 022_O pen O cean
G alapagos Islands_G S 027_C oasta l
Indian O cean_G S 149_H arbor
Indian O cean_G S 123_O pen O cean
C aribbean S ea_G S 016_C oasta l S ea
Indian O cean_G S 148_Fringing R eef
Indian O cean_G S 113_O pen O cean
Indian O cean_G S 112a_O pen O cean
C aribbean S ea_G S 017_O pen O cean
Indian O cean_G S 121_O pen O cean
Indian O cean_G S 122a_O pen O cean
G alapagos Islands_G S 034_C oasta l
C aribbean S ea_G S 018_O pen O cean
Indian O cean_G S 108a_Lagoon R eef
Indian O cean_G S 110a_O pen O cean
E astern Tropica l Pacific_G S 023_O pen O cean
Indian O cean_G S 114_O pen O cean
C aribbean S ea_G S 019_C oasta l
C aribbean S ea_G S 015_C oasta l
Indian O cean_G S 119_O pen O cean
G alapagos Islands_G S 026_O pen O cean
Polynesia Archipelagos_G S 049_C oasta l
Indian O cean_G S 120_O pen O cean
Polynesia Archipelagos_G S 048a_C ora l R eef
Component 1
Component 2
Component 3
Component 4
Component 5
0 .1 0 .2 0 .3 0 .4 0 .5 0 .6
0 .2 0 .4 0 .6 0 .8 1 .0
Salin
ity
Sam
ple
Dep
th
Ch
loro
ph
yll
Tem
pera
ture
Inso
lati
on
Wate
r D
ep
th
G enera l
H ighM ediumLowN A
H ighM ediumLowN A
W ater depth
>4000m2000!4000m900!2000m100!200m20!100m0!20m
>4000m2000!4000m900!2000m100!200m20!100m0!20m
(a) (b) (c)
Figure 3: a) Niche-space distributions for our five components (HT ); b) the site-similarity matrix (HT H); c) environmental variables for the sites. The matrices arealigned so that the same row corresponds to the same site in each matrix. Sites areordered by applying spectral reordering to the similarity matrix (see Materials andMethods). Rows are aligned across the three matrices.
Figure 3a shows the estimated niche-space distribution for each of the five com-ponents. Components 2 (Photosystem) and 4 (Unidentified) are broadly distributed;Components 1 (Signalling) and 5 (Unidentified) are largely restricted to a handful ofsites; and component 3 shows an intermediate pattern. There is a great deal of overlapbetween niche-space distributions for di�erent components.
Figure 3b shows the pattern of filtered similarity between sites. We see clear pat-terns of grouping, that do not emerge when we calculate functional distances withoutfiltering, or using PCA rather than NMF filtering (Figure 3 in Text S1). As withthe Pfams, we see clusters roughly associated with our components, but there is moreoverlapping than with the Pfam clusters (Figure 2b).
Figure 3c shows the distribution of environmental variables measured at each site.Inspection of Figure 3 reveals qualitative correspondence between environmental factorsand clusters of similar sites in the similarity matrix. For example, the “North AmericanEast Coast” samples are divided into two groups, one in the top left and the other in thebottom right of the similarity matrix. Inspection of the environmental features suggeststhat the split in these samples could be mostly due to the di�erences in insolation andwater depth.
We can also examine patterns of similarity between the components themselves,using niche-site distributions or functional profiles (see Figure 5 in Text S1). All 5
8
Functional biogeography of ocean microbes revealed through non-negative matrixfactorization Jiang et al. In press PLoS One. Comes out 9/18.
w/ Weitz, Dushoff, Langille, Neches, Levin, etc
Wednesday, October 23, 13
Phylosift - Mining the Global Metagenome
Jonathan Eisen
Students and other staff: - Eric Lowe, John Zhang, David Coil
Open source community: - BLAST, LAST, HMMER, Infernal, pplacer, Krona, metAMOS, Bioperl, Bio::Phylo, JSON, etc. etc.
PhyloSift is open source software:-http://phylosift.wordpress.org-http://github.com/gjospin/phylosift
Erick MatsenFHCRC
Todd TreangenBNBI, NBACC
Holly Bik
TiffanieNelson
MarkBrown
Aaron Darling
Guillaume Jospin
Supported by DHS GrantWednesday, October 23, 13
Phylosift/ pplacer Workflow
Aaron Darling, Guillaume Jospin, Holly Bik, Erik Matsen, Eric Lowe, and others
Input Sequences rRNA workflow
protein workflow
profile HMMs used to align candidates to reference alignment
Taxonomic Summaries
parallel option
hmmalign multiple alignment
LAST fast candidate search
pplacer phylogenetic placement
LAST fast candidate search
LAST fast candidate search
search input against references
hmmalign multiple alignment
hmmalign multiple alignment
Infernal multiple alignment
LAST fast candidate search
<600 bp
>600 bp
Sample Analysis & Comparison
Krona plots, Number of reads placed
for each marker gene
Edge PCA, Tree visualization, Bayes factor tests
each
inpu
t seq
uenc
e sc
anne
d ag
ains
t bot
h w
orkf
low
s
Wednesday, October 23, 13
Markers
• PMPROK – Dongying Wu’s Bac/Arch markers
• Eukaryotic Orthologs – Parfrey 2011 paper• 16S/18S rRNA • Mitochondria - protein-coding genes• Viral Markers – Markov clustering on
genomes• Codon Subtrees – finer scale taxonomy• Extended Markers – plastids, gene families
Wednesday, October 23, 13
Output 1: Taxonomy
Taxonomic summary plots in Krona (Ondov et al 2011)
Wednesday, October 23, 13
Output 2: Phylogenetic Tree of ReadsPlacement tree from 2 week old infant gut data
Wednesday, October 23, 13
QIIME and Edge PCA on 110 fecal metagenomes from
Yatsunenko et al 2012 Nature.
Sequenced with 454, to about 150Mbp/metagenome
Darling et al Submitted.
Edge PCA vs. UNIFRAC PCA
Edge PCA: Matsen and Evans 2013
Wednesday, October 23, 13
Improving Phylogenomics III
• Better Data Sets
Wednesday, October 23, 13
More Markers
Phylogenetic group Genome Number
Gene Number
Maker Candidates
Archaea 62 145415 106Actinobacteria 63 267783 136Alphaproteobacteria 94 347287 121Betaproteobacteria 56 266362 311Gammaproteobacteria 126 483632 118Deltaproteobacteria 25 102115 206Epislonproteobacteria 18 33416 455Bacteriodes 25 71531 286Chlamydae 13 13823 560Chloroflexi 10 33577 323Cyanobacteria 36 124080 590Firmicutes 106 312309 87Spirochaetes 18 38832 176Thermi 5 14160 974Thermotogae 9 17037 684
Wu D, Jospin G, Eisen JA (2013) Systematic Identification of Gene Families for Use as “Markers” for Phylogenetic and Phylogeny-Driven Ecological Studies of Bacteria and Archaea and Their Major Subgroups. PLoS ONE 8(10): e77033. doi:10.1371/journal.pone.0077033
Wednesday, October 23, 13
Sifting FamiliesRepresentative
Genomes
ExtractProtein
Annotation
All v. AllBLAST
HomologyClustering
(MCL)
SFams
Align & Build
HMMs
HMMs
Screen forHomologs
NewGenomes
ExtractProtein
Annotation
Figure 1
Sharpton et al. 2012.BMC bioinformatics, 13(1), 264.
AB
C
��
�
�
�
�
�� �
�
�
�
�
�
��
��
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
�
�
��
�
�
�
��
��
�
�
��
�
�
� ��
�
�
��
��
�
��
�
�
�
�
�
�
�
�
�
�
�
�
��
��
�
�
�
�
�
� �
�
�
��
�
�
� �
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
� �
��
�
�
�
�
�
�
�
��
�
� �
�
�
�
�
�
�
�
�
�
� �
�
�
�
�
�
�
�
�
� �
�
��
�
�
��
�
�
� ��
�
��
�
��
�
�
��
�
��
�
��
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
��
��
�
�
� �
�
�
�
��
�
�
�
��
�
�
�
�
�
�
� �
�
�
��
�
�
�
��
�
�
�
�
�
�
�
�
�
�
� �
�
�
�
�
��
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
��
�
�
��
��
�
�
��
�
�
� �
�
�
�
�
�
��
�
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
�
���
�
�
�
�
�
�
�
�
�
��
�
�
�
��
� �
�
�
��
�
�
��
�
�
�
�
�
�
�
�
�
��
�
� ��
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
� �
�
�
�
�
�
��
�
�
�
�
�
�
��
�
�
�
� �
�
�
� �� �
�
�
�
�
� �
�
��
�
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
��
���
�
�
�
�
�
�
� �
�
�
��
� �
�
�
�
�
�
�
�
�
�
�
�
�
�
��
�
�
��
�
�
��
�
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
���
�
�
��
�
�
��
��
�
�
�
�
��
�
�
�
�
�
��
�
� �
�
�
��
�
��
�
��
�
��
�
��
��
�
�
�
�
�
�
�
���
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
��
�
�
�
�
�
�
�
��
�
�
��
�
�
�
�
�
��
� �
��
� �
�
�
�
�
�
�
��
�
�� �
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
��
� �
�
�
�
�
�
�
�
��
�
�
�
�
�
�
��
�
�
�
�
�
�
��
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
�
��
��
�
��
�
�
�
�
�
�
�
�
�� �
�
�
�
�
�
�
�
�
��
��
�
�
��
�
�
���
�
�
�
�
�
�
�
��
�
�
�
�
�
��
�
�
�
�
�
�
�
�
�
�
�
��
��
�
��
�
�
�
�
�
�
�
�
�
�
�
�� �
�
�
�
�
�
�
�
�
�
�
�
�
�
�� �
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
�
��
��
�
�
�
�
�
�
�
�
�
�
��
��
�
�
�
�
�
�
�
�
�
�� �
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
� ��
�
�
�
�
�
�
�
�
� �
��
�
�
�
�
�
�
��
�
�
��
�
�
�
�
�
�
� �
�
��
�
�
�
�
� �
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
�
�
� �
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
��
�
�
�
�
�
�
��
�
��
�
�
�
� �
�
�
��
�
�
�
��
��
� �
�
�
�
�
��
�
�
�
�
�
�
�
�
��
��
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
��
�
�
�
�
�
�
�
�
�
�
��
�
�
��
�
�
�
��
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
�
� �
��
�
�
�
�
��
�
��
��
��
�
�
�
�
�
�
� �
��
�
�
�
�
Wednesday, October 23, 13
Better Reference Tree
Lang JM, Darling AE, Eisen JA (2013) Phylogeny of Bacterial and Archaeal Genomes Using Conserved Genes: Supertrees and Supermatrices. PLoS ONE 8(4): e62510. doi:10.1371/journal.pone.0062510
Wednesday, October 23, 13
Acknowledgements• GEBA:
• $$: DOE-JGI, DSMZ• Eddy Rubin, Phil Hugenholtz, Hans-Peter Klenk, Nikos Kyrpides, Tanya Woyke, Dongying Wu, Aaron Darling,
Jenna Lang• GEBA Cyanobacteria
• $$: DOE-JGI• Cheryl Kerfeld, Dongying Wu, Patrick Shih
• Haloarchaea• $$$ NSF• Marc Facciotti, Aaron Darling, Erin Lynch,
• Phylosift• $$$ DHS• Aaron Darling, Erik Matsen, Holly Bik, Guillaume Jospin
• iSEEM:• $$: GBMF• Katie Pollard, Jessica Green, Martin Wu, Steven Kembel, Tom Sharpton, Morgan Langille, Guillaume Jospin,
Dongying Wu, • aTOL
• $$: NSF• Naomi Ward, Jonathan Badger, Frank Robb, Martin Wu, Dongying Wu
• Others (not mentioned in detail)• $$: NSF, NIH, DOE, GBMF, DARPA, Sloan• Frank Robb, Craig Venter, Doug Rusch, Shibu Yooseph, Nancy Moran, Colleen Cavanaugh, Josh Weitz• EisenLab: Srijak Bhatnagar, Russell Neches, Lizzy Wilbanks, Holly Bik
Wednesday, October 23, 13