CS 5263 Bioinformatics Lecture 22 Introduction to Microarray.
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Transcript of CS 5263 Bioinformatics Lecture 22 Introduction to Microarray.
CS 5263 Bioinformatics
Lecture 22
Introduction to Microarray
Outline
• What is microarray• Basic categories of microarray• How can microarray be used• Computational and statistical methods involved
in microarray– Probe design– Image processing– Pre-processing– Differentially expressed gene identification– Clustering / classification– Network / pathway modeling
Gene expression
• Genes have different activities at different time / location
• DNA Microarrays– Measure gene transcription (amount of mRNA) in
a high-throughput fashion– A surrogate of gene activity
Reverse transcription (in lab)Product is called cDNA
http://www.escience.ws/b572/L13/north.html
Northern Blot (an old technique for measuring mRNA expression)
1. mRNA extracted and purified.
2. mRNA loaded for electrophoresis.
Lane 1: size standards.Lane 2: RNA to be tested.
3. The gel is charged and RNA “swim” through gel according to weight.
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4. mRNA are transferred from the gel to a membrane.
5. A labeled probe specific for the RNA fragment is incubated with the blot. So the RNA of interest can be detected.
+
Hybridization
Need relatively large amount of mRNA
See animation of RT-PCR:http://www.bio.davidson.edu/courses/Immunology/Flash/RT_PCR.html
RT-PCR (reverse transcription-polymerase chain reaction)
http://www.ambion.com/techlib/basics/rtpcr/
real-time RT-PCR
1. RNA is reverse transcribed to DNA.2. PCR procedures can be used amplify DNA at exponential
rate.3. Gel quantification for the amplified product.
---- an semi-quantitative method. Smaller amount of sample needed.
1. The PCR amplification can be monitored by fluorescence in “real time”.
2. The fluorescence values recorded in each cycle represent the amount of amplified product.
---- a quantitative method. The current most advanced and accurate analysis for mRNA abundance. Usually used to validate microarray result.
Often used to validate microarray
Limitation of the old techniques
1. Labor intensive
2. Can only detect up to dozens of genes. (gene-by-gene analysis)
What is a Microarray
Conceptually similar to (reverse) Northern blot
(Many) probes, rather than mRNAs, are fixed on some surface, in an ordered way
Gene 102
Gene 305
What is a microarray (2)
• A 2D array of DNA sequences from thousands of genes
• Each spot has many copies of same gene (probe)
• Allow mRNAs from a sample to hybridize
• Measure number of hybridizations per spot
Goals of a Microarray Experiment
1. Find the genes that change expression between experimental and control samples
2. Classify samples based on a gene expression profile
3. Find patterns: Groups of biologically related genes that change expression together across samples/treatments
Microarray categories
• cDNAs microarray– Each probe is the cDNA of a gene (hundreds to
thousands bp)– Stanford, Brown Lab
• Oligonucleotide microarray– Each probe is a synthesized short DNA (uniquely
corresponding to a substring of a gene)– Affymetrix: ~ 25mers– Aglient: ~ 60 mers
• Others
Spotted cDNA microarray
Array Manufacturing
Each tube contains cDNAs corresponding to a unique gene. Pre-amplified, and spotted onto a glass slide
Experiment
cy3
cy5
Data acquisition
Computer programs are used to process the image into digital signals.
• Segmentation: determine the boundary between signal and background
• Results: gene expression ratios between two samples
cDNA Microarray Methodology Animation
Affymetrix GeneChip®
25-mer unique oligo
mismatch in the middle nuclieotide
multiple probes (11~16) for each gene
from Affymetrix Inc.
Array Design
from Affymetrix Inc.
Technology adapted from semiconductor industry.(photolithography and combinatorial chemistry)
Array Manufacturing
In situ synthesis of oligonucletides
GeneChip® Probe Arrays
24µm
Millions of copies of a specificoligonucleotide probe
Image of Hybridized Probe Array
>200,000 differentcomplementary probes
Single stranded, labeled RNA target
Oligonucleotide probe
* **
**
1.28cm
GeneChip Probe ArrayHybridized Probe Cell
*
from Affymetrix Inc.
Overview of the Affymetrix GeneChip technology
Each probe set combines to give an absolute expression level.Image segmentation is relatively easy. But how to use MM signal is debatable
cDNA GeneChip
Probe preparation
Probes are cDNA fragments, usually amplified by PCR and spotted by robot.
Probes are short oligos synthesized using a photolithographic approach.
colors Two-color
(measures relative intensity)
One-color
(measures absolute intensity)
Gene representation
One probe per gene 11-16 probe pairs per gene
Probe length Long, varying lengths
(hundreds to 1K bp)
25-mers
Density Maximum of ~15000 probes. 38500 genes * 11 probes = 423500 probes
Comparison of cDNA array and GeneChip
Affymetrix GeneChipOne color design
cDNA microarrayTwo color design
Why the difference?
Affymetrix GeneChipPhotolithography
(The amount of oligos on a probe is well controlled)
cDNA microarrayRobotic spotting
(The amount of cDNA spotted on a probe may vary greatly)
Advantage and disadvantage of cDNA array and GeneChip
cDNA microarray Affymetrix GeneChip
The data can be noisy and with variable quality
Specific and sensitive. Result very reproducible.
Cross(non-specific) hybridization can often happen.
Hybridization more specific.
May need a RNA amplification procedure.
Can use small amount of RNA.
More difficulty in image analysis. Image analysis and intensity extraction is easier.
Need to search the database for gene annotation.
More widely used. Better quality of gene annotation.
Cheap. (both initial cost and per slide cost)
Expensive (~$400 per array+labeling and hybridization)
Can be custom made for special species.
Only several popular species are available
Do not need to know the exact DNA sequence.
Need the DNA sequence for probe selection.
Computational aspects
• Probe design
• Image processing
• Pre-processing
• Differentially expressed gene identification
• Clustering / classification
• Network / pathway modeling
First step: pre-processing
• Transformation– Transforms intensities or ratios to a different scale– Why?
• For convenience• Convert data into a certain distribution (e.g. normal) assumed
by many other statistical procedures
• Normalization– Correct for systematic errors– Make data from different samples comparable
Garbage in => Garbage out
Where errors could come from?
• Random errors– Repeat the same experiment twice, get diff results– Using multiple replicates reduces the problem
• Systematic errors– Arrays manufactured at different time– On the same array, probes printed with different
printer tips may have different biases– Dye effect: difference between Cy5 and Cy3 labeling– Experimental factors
• Array A being applied more mRNAs than array B• Sample preparation procedure• Experiments carried out at different time, by different users,
etc.
cDNA microarray data preprocessing
Typical experiments• Wide-type cells vs mutated cells• Diseased cells with normal cells• Cells under normal growth condition vs cells treated with chemicals• Typically repeated for several times
Pro
bes
(g
enes
)
Ratios
Transforming cDNA microarray data• Data: Cy5/Cy3 ratios as well as raw intensities• Most common is log2 transformation
• 2 fold increase => log2(2) = 1
• 2 fold decrease => log2(1/2) = -1
0 2 4 6 8 10 12 140
500
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2500
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3500
Cy5/Cy3 ratio
Fre
qu
en
cy
-4 -3 -2 -1 0 1 2 3 40
200
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log2(Cy5/Cy3)
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en
cy
Dye effect
cDNA microarray experiments using two identical samples.Cy5 consistently lower than Cy3. Solution: dye swapping.
Dye swapping
• Chip 1: label test by cy5 and control by cy3• Chip 2: label test by cy3 and control by cy5• Ideally cy5/cy3 = cy3/cy5• Not so due to dye effect• Compute average ratio:
½ log2 (cy5/cy3 on chip 1)
+ ½ log2 (cy3/cy5 on chip 2)
Total intensity normalization
• Even after dye-swapping, may still see systematic biases
• Assume the total amount of mRNAs should not change between two samples– Not necessarily true
– Rescale so that the two colors have same total intensity
– Rescale according to a subset of genes
• House-keeping genes• Middle 90% (for example) of genes• Spike-in genes
-4 -3 -2 -1 0 1 2 3 40
500
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log2(Cy5/Cy3)
Fre
qu
en
cy-4 -3 -2 -1 0 1 2 3 4
0
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log2(Cy5/Cy3)
Fre
qu
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cy
M-A plot• Also know as ratio-intensity plot
• M: log2(cy5 / cy3) = log2(cy5) – log2(cy3)
• A: ½ log2(cy5 * cy3) = (log2(cy5) + log2(cy3)) / 2
A
M
Ideal:
• M centered at zero
• variance does not depend on A.
However:
• Systematic dependence between M and A
• High variance of M for smaller A
Lowess normalization
• Lowess: Locally Weighted Regression
• Fit local polynomial functions
• M adjusted according to fitted line
A
M
A
M’
Replicate filtering
• Experiments repeated• Genes with very high
variability is questionable
Log2(ratio1)
Log 2
(rat
io2)
Ratio 1 Ratio 2
oligo microarray data preprocessing
(Affymetrix chip)
Typical experiments
• Multiple microarrays– n samples (from different time, location, condition,
treatment, etc.)– k replicates for each samples
• For example– Samples collected from 100 healthy people and 100
cancer patients– Cells treated with some drugs, take samples every 10
minutes• Repeat on 3 – 5 microarrays for each sample
– Improve reliability of the results– Often averaged after some preprocessing
Main characteristics
• For each gene, there are multiple PM and MM probes (11-16 pairs)– how to obtain overall intensities from these
probe-level intensities?
• Array outputs are absolute values rather than ratios– Cross-array normalization is important for
them to be comparable
How to use MM information?
• Earlier approach: – First remove outliner probes– Actual intensity = Ipm – Imm
– IPM = IMM + Ispecific ?• Recent trend
– Tend to ignore Imm or use in a different way
• Various software packages– MAS5 (by affymetrix)– dChIP– RMA– GCRMA
0 500 1000 15000
100
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PM
MM
Normalization
• Similar to cDNA microarrays• Total intensity normalization
– Each array has the same mean intensity– Can be based on all genes or a selected subset of
genes• House-keeping genes• Middle 90% (for example) of genes• Spike-in genes
• Lowess with a common reference• Many useful tools implemented in Bioconductor
Conclusions• Microarray provides a way to measure thousands
of genes simultaneously and make the global monitoring of cellular activities possible.
• The method produces noisy data and normalization is crucial.
• Real Time RT-PCR for validation of small number of genes.
Limitation
• Measures mRNA instead of proteins. Actual protein abundance and post-translation modification can not be detected.
• Suitable for global monitoring and should be used to generate further hypothesis or should combine with other carefully designed experiments.
Microarray preproc questions• What kind of array it is?
– Two-color?– One-color?– Oligo array?– cDNA array?
• How is the experiment designed?– Time series?– Test vs control?
• What kind of preprocessing has been done?– What value: raw intensity value or ratios?– Transformation? Log scale? Linear scale? – Normalization: within-array? Cross-array?
• What are the next steps you want to proceed?– Identifying differentially expressed genes?– Clustering?
Some real data
• Joseph L. DeRisi, Vishwanath R. Iyer, Patrick O. Brown, “Exploring the Metabolic and Genetic Control of Gene Expression on a Genomic Scale”, Science, 278: 680 – 686, 1997