Genome Rearrangement SORTING BY REVERSALS Ankur Jain Hoda Mokhtar CS290I – SPRING 2003.
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Transcript of Genome Rearrangement SORTING BY REVERSALS Ankur Jain Hoda Mokhtar CS290I – SPRING 2003.
Genome RearrangementGenome RearrangementSORTING BY REVERSALSSORTING BY REVERSALS
Ankur JainAnkur Jain
Hoda MokhtarHoda Mokhtar
CS290I – SPRING 2003CS290I – SPRING 2003
Comparative GenomicsComparative GenomicsThe practice of analyzing and comparing the genetic material of different species for the purpose of studying evolution, the function of genes and inherited diseases.
Chromosome breakage and mistakes in repair, along with a number of other processes, give rise to changes in gene order.
These have important consequences for the evolution of species.
Problem DefinitionProblem Definition
During biological evolution, inter- and intra-chromosomal exchanges of chromosomal fragments disrupt the order of genes on a chromosome.
The genome rearrangements approach, is the use of combinatorial optimization techniques, to infer a sequence of rearrangement events to account for the differences among the genomes.
OutlineOutline• Problem definition
• Genome Comparison
• Possible chromosomal changes• Sorting by reversals : - Previous work
- Definitions
- Duality Theorem
• Our technique : - Bit Vector Method
- Experimental results : - Synthetic datasets
- Real datasets
- Breakpoints Technique
• Conclusions and Future work
Genome ComparisonGenome Comparison• In the late 1980 was discovered remarkable and novel
pattern of evolutionary change in plant organelles.
• Jeffrey Palmer and his collegues compared the mitochondrial genomes of cabbage and turnip, which are very closely related. Molecules which are almost identical in gene sequences, differ dramatically in gene order. {Sridhar, Pevzner 1995}
• This discovery and many other studies proved that genome rearrangements represent a common mode of molecular evolution.
Cabbage and TurnipCabbage and Turnip
Gene orientation
Single Chromosome OperationsSingle Chromosome Operations• Reversal: A section of a chromosome is excised, reversed in
orientation, and re-inserted.
(abc1c2c3c4de -> ab-c4-c3-c2-c1de)
• Transposition: A section of a chromosome is excised and inserted at new position in the chromosome, without changing orientation. (abcd -> cdab)
• Inverted transposition: Exactly like transposition, except that the transposed segment changes orientation. (abcd -> -c-dab)
• Gene duplication: A section of a chromosome is duplicated, so that multiple copies exist of every gene in that section.
(abc -> abcb, abc -> abbc)
• Gene loss: A section of a chromosome is excised and lost.
(abc->ac )
Operations on 2 Chromosomes Operations on 2 Chromosomes
• Translocation: The end of one chromosome is broken and attached to the end of another chromosome.
• Fusion: two chromosomes merge.
• Fission: one chromosome splits up into two chromosomes.
Genomic Sorting ProblemGenomic Sorting Problem
• Given genomes the genomic sorting problem is to find a series of reversals where and t is minimal.
• We call t the genomic distance between
and
t1
and
t ,...,1
Sorting by ReversalsSorting by Reversals
• Genome rearrangements can be modelled by a combinatorical problem of sorting by reversals.
Break and Invert
A T G C C T G T A C T A
A T G A T G T C C C T A
Reversal
Sorting by Reversals (Cont.)Sorting by Reversals (Cont.)
Minimum Sorting by Reversals: Given a permutation , what
is the shortest sequence (12….t ) of reversals that sorts ?
Complexity remains open. (NP-Hard) {Caprara ‘97}
Minimum Signed Sorting by Reversals: Given a signed
permutation , what is the shortest sequence (12….t ) of reversals that sorts ?
Solvable in polynomial time.
Sorting of Signed PermutationsSorting of Signed Permutations• Transforming cabbage into turnip. {Hannenhalli, S., and Pevzner, P. ‘95} - Polynomial algorithm for sorting signed permutations by reversals•A Very Elementray Presentation of the Hannenhalli-Pevzner Theory, {A. Bergeron’95} – Polynomial algorithm for sorting signed permutations, efficiently implemented using bit vectors.
• Experiments in Computing Sequences of Reversals, {A. Bergeron and F. Strasbourg’95} – Polynomial algorithm for sorting signed permutations.• Fast Sorting by Reversal, {Berman, P., Hannenhalli, S. ‘96. }- exploit a few combinatorial properties of the cycle graph of a permutation and provided a polynomial algorithm.
•A Faster and Simpler Algorithm for Sorting Signed Permutations by Reversals, {Kaplan, H., Shamir, R., and Tarjan, R. ‘99.} – O(n2) using hurdles, cycles and fortress.
•A Linear-Time Algorithm for Computing Inversion Distance between Signed Permutations with an Experimental Study, {Moret, and Yan’ 00} - Computes reversal distance (without actually sorting) in O(n) time. Computes the connected components using stack rather than Union-Find. {Hannenhalli-Pevzner ’96} (GRAPPA program)
•A Very Elementray Presentation of the Hannenhalli-Pevzner Theory, {A. Bergeron’95} – Polynomial algorithm for sorting signed permutations, efficiently implemented using bit vectors.
OutlineOutline• Problem definition• Genome Comparison• Possible chromosomal changes• Sorting by reversals : - Previous work
- Definitions
• Our technique : - Bit Vector Method
Experimental results : - Synthetic datasets
- Real datasets
- Breakpoints Technique
• Conclusions and Future work
What is a Permutation?What is a Permutation?Permutation () : an ordered arrangement of the set { 1,2,…,n}
Signed Permutation (): a permutation where the elements are oriented a reversal switches element orientation{+3 -4 +7 -6 +1 -5 +2 } (7,-5) = {+3 -4 +5 -1 +6 -7 +2}
),...,1
,,...,1
,,1
,...,1
(),(njijji
ji
Let i ~ j if | i – j | = 1. Extend permutation by adding = 0 and = n + 1.
We call pair of elements , 0 ≤ i ≤ n,
of an adjacency if ~
and a breakpoint if is not ( ~ )
0 1n
1, ii i 1i
1ii
BreakPointBreakPoint
~
=0 =n+1
~
G
110 ,...,, nn
1i 1,,...,1,0 nn
i
ij~
The breakpoint graph of a permutation is a
edge-colored graph with 2n+2 vertices
We join vertices and by a black edge
We join vertices ijand by a gray edge if
What is breakpoint graph?What is breakpoint graph?
Breakpoint graph – signed caseBreakpoint graph – signed case
Straight edges – every other pair of consecutive elements
Curved edges - every other pair of consecutive integers
Every connected component of the graph is a cycle
Correlation between the Correlation between the breakpoints and reversal distancebreakpoints and reversal distance
• Correlations exists between the reversal distance and the number of breakpoints
• Sorting by reversals corresponds to eliminating breakpoints
• Every resersal can eliminate at most 2 breakpoints
)(d 2/b {Shamir, 95}
OutlineOutline• Problem definition• Genome Comparison• Possible chromosomal changes• Sorting by reversals : - Previous work
- Definitions
- Duality Theorem (Hurdles !!)
• Our technique : - Vector-Method
Experimental results : - Synthetic
datasets
- Real datasets
-Breakpoints Technique
• Conclusions and Future work
HurdleHurdle
Hurdle - an unoriented component whose elements are consecutive
Simple hurdle - a hurdle whose deletion decreases the number of hurdles
Super hurdles - hurdles that are not simple
Duality Theorem for Sorting Duality Theorem for Sorting Signed PermutationsSigned Permutations
d 11 hcn
hcn 1
Hannenhalli and Pevzner, 1995.
For every signed permutation
=if is a fortress
otherwise
Safe reversalSafe reversal
1 hc
1 hc
For an arbitary reversal
Reversal is safe if
C=3, h=1
C = 5, h= 2
OutlineOutline• Problem definition• Genome Comparison• Possible chromosomal changes• Sorting by reversals : - Previous work
- Definitions
- Duality Theorem (Hurdles !!)
• Our technique : - Bit Vector Method
Experimental results : - Synthetic datasets
- Real datasets
- Breakpoints Technique
• Conclusions and Future work
Our ApproachOur Approach
• Finding hurdles and fortresses in a graph are difficult and expensive {Kaplan, H., Shamir, R., and Tarjan, R. ‘99.}
• Use oriented sort to remove the oriented components in a graph and then apply the breakpoint approach to perform the remaining reversals
• We used the bit-vector approach to perform the oriented sort
Oriented Sort Oriented Sort
Choose among the several candidates, asafe reversal, that is a reversal that decreases the reversal distance.
Theorem : The reversal that maximizes the number of oriented vertices is safe {A. Bergeron’95}
Basic Sorting – oriented pairBasic Sorting – oriented pair
• An oriented pair is a pair of consecutive integers, that is
with opposite signs
Example:
(0 3 1 6 5 -2 -4 7)
Oriented pairs are: (1,-2) , (3, -4)
i j1
i j
ReversalReversal score score
The number of oriented pairs in the resulting permutation as a result of a reversal
Example: ( 0 3 1 6 5 -2 4 7 )
(3, -2) (1, -2)
( 0 -5 -6 -1 -3 -2 4 7 ) ( 0 3 1 2 -5 -6 4 7 )Score 4 Score 2
( 0 3 1 6 5 -2 4 7 )( 0 3 1 6 5 -2 4 7 )
AlgorithmAlgorithm
• As long as has an oriented pair choose the oriented reversal that has maximal score
(0 3 1 6 5 –2 4 7)
( 0 -5 -6 -1 -3 -2 4 7 ) (-3, 4)
( 0 -5 -6 -1 2 3 4 7 ) (-1,2)
( 0 -5 -6 1 2 3 4 7 ) (-6,7)
( 0 -5 -4 -3 -2 -1 6 7 ) (-5,6)
( 0 1 2 3 4 5 6 7 )
OrientedOriented edgeedge
ji ,
lj , ik ,
Let be a gray edge incident to black edges
and Then ji ,
is oriented if and only if i – k = j - lEdge 20-21 is oriented (contains 3 [odd] number of vertices).I= 20, j=21, k=22, l=23I-k = -2 = j-l = -2
Bergeron
Pevzner
.
Oriented reversalsOriented reversals
)1,( ji , if 1i j , and
1i j ),1( ji , if
Reversals that create consecutive integers are always induced by oriented pairs. Such reversals are called oriented reversal.
•Reversals induces by an oriented pair will be:
Example: The pair (1, -2) induces the reversal:(0 3 1 6 5 –2 4 7)
(0 3 1 2 –5 –6 4 7)
Interleaving GraphInterleaving Graph
Every 2 components are adjacent if there
is an overlap between them but neither of
them contains the other.
C
Constructing the Bit MatrixConstructing the Bit MatrixConsider the sequence P = 3 1 6 5 –2 4 7Consider the sequence P = 3 1 6 5 –2 4 7Represent PRepresent Pi i by by
2i-1, 2i if P2i-1, 2i if Pii is +ve and is +ve and
2i, 2i-1 otherwise P2i, 2i-1 otherwise Pii is -ve is -ve
3 1 6 5 -2 4 7 3 1 6 5 -2 4 7 0 5 6 1 2 11 12 9 10 4 3 7 8 13 14 150 5 6 1 2 11 12 9 10 4 3 7 8 13 14 15
Bit Matrix
Parity Scores
The AlgorithmThe Algorithm
Step 1. Select the vertex vi with the maximum score and perform the these operations until we reach a situation when parity of all the vertices is zero
Step 2. If the sequence is not sorted completely apply the breakpoint technique to complete the sorting
OutlineOutline• Problem definition• Genome Comparison• Possible chromosomal changes• Sorting by reversals : - Previous work
- Definitions
- Duality Theorem (Hurdles !!)
• Our technique : - Bit Vector Method
Experimental results : - Synthetic datasets
- Real datasets
- Breakpoints Technique
• Conclusions and Future work
Experimental SettingsExperimental Settings
1- Synthetic Datasets:
generated random signed permutation of different lengths and evolution rate using GRIMM permutation generation module
2- Real Datasets: Used GRAPPA test sets for different species of
“Campanulaceae” (flower plant)
MGR (multiple genome rearrangement) human-mouse gene order data
Genome.org Herpes Virus that affects human
Experiment 1 - SyntheticExperiment 1 - Synthetic
Performance
0
10
20
30
40
50
Sequence Length
No.
Sor
ted k=20
k=30
k=40
k=20 39 36 37 32 32 28
k=30 42 37 40 31 32 30
k=40 42 33 37 38 34 34
50 100 200 400 800 1600
1- Generated files of random permutations of different lengths (50, 100, 200, 400, 800, 1600) each file with 50 permutations.2- We computed the number of correctly sorted permutations.3- Evolution rate varies : 20,30,40
Experiment 2 - SyntheticExperiment 2 - Synthetic
1- Generated files of random permutations of different lengths (50, 100, 200, 400, 800, 1600) each file with 50 permutations.2- We computed the time needed to obtain the correctly sorted permutations.3- Evolution rate varies : 20,30,40
Time
0
50
100
150
200
250
300
50 100 200 400 800 1600
Sequence LengthTi
me
(sec
) k=20
k=30
k=40
Experiment 3 - SyntheticExperiment 3 - Synthetic
1- Generated files of random permutations of length 1000
2- We computed the time needed to obtain the correctly sorted permutations.
3- Evolution rate varies in increments of 100.
Observation:Saturation state is reached as evolution rate approaches 1000
Evolution Rate vs Time
0
0.5
1
1.52
2.5
3
3.5
4
k
time
(sec
)
Length=1000
Experiment 1 - RealExperiment 1 - RealConsidered Herpes simplex virus (HSV), Epstein-Barr virus (EBV), and Cytomegalovirus (CMV) gene orders (Hannenhalli et al. 1995) as well as the identity gene order (A)
Observations:Our reversal results matched those obtained in optimal evolutionary scenario recovered by MGR-MEDIAN.
Experiment 2 - RealExperiment 2 - Real
1- Considered Campanulaceae species
2- Obtained reversals for Cyanathus (11 reversals), Triodanus (13 reversals), and Symphanra (12 reversals) versus Tobacco but failed to sort Platyncodon, Legousia and Codonopsis
Observation:The ones we sorted were sorted with same number of reversals as GRIMM
Experiment 3 - RealExperiment 3 - Real1- Considered Human-Mouse gene order from MGR
12 13 14 15 -9 -8 -7 -6 47 48 -46 -45 -44 -11 -10 -58 -57 -56 92 93 -95 -94 -21 -20 -5 -4 -3 -2 -1 34 35 41 42 43 36 37 38 -64 -63 61 62 65 66 67 68 90 91 -55 -54 51 52 53 39 40 -60 -59 -77 -76 -19 -18 16 17 -97 -96 -75 -74 -73 24 25 78 79 -83 -82 -81 -80 84 85 86 87 -28 -27 -26 22 23 98 99 69 70 -72 -71 -33 -32 -31 -30 -29 88 89 -50 -49 -105 -104 106 107 108 114 115 -117 -116 -103 -102 109 110 111 112 113 -101 -100 118 119 120 121 122 123 (mouse genome and human is identity)
40 reversals
0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 6768 69 70 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124
3 reversalsIdentity
GRIMM sorts the permutation in 41 reversals
0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 6768 69 70 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124
0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 6768 69 70 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124
ConclusionsConclusions We implemented a technique that integrates the bit-matrix oriented sorting technique together with the greedy breakpoint reversal technique.
The technique proposed was tested on both real and synthetic data and was able to sort signed permutations in a fair number of the test data
We think that such integration can yield good results beside being a simple and relatively fast technique
However, the oriented sort algorithm fails to sort permutations that have hurdles, in those cases we have to apply the breakpoint approach
Future WorkFuture Work We really think that the technique we implemented can provide good results, we think that further experiments can strengthen our claim
We started implementing the algorithm proposed in Kaplan, H., Shamir, R., and Tarjan R. ’99} but didn’t succeed to complete the implementation. We think that having this technique implemented under that same conditions as ours can provide a good source of comparative results, and can give a better confidence about what we propose.
Applying the technique in different datasets including exon order rather than gene order
Considering different species and trying to compute reversal distance and use it to confirm phylogenetic trees
Oriented PairsOriented Pairs
• An oriented pair ( , ) is a pair of An oriented pair ( , ) is a pair of consecutive integers, that is consecutive integers, that is
with opposite signswith opposite signs
Example:Example:
(0 3 1 6 5 –2 4 7)(0 3 1 6 5 –2 4 7)
Oriented pairs areOriented pairs are
1 ni j
1i j
= (0 … ) 2
(1,-2) (3, 2)
Reversal Distance EstimationReversal Distance Estimation
This reversal distance is very in-accurate.
Bafna and Pevzner, 1996 showed that another hidden parameter ”hurdles” estimated reversal distance with much greater accuracy.
)(d 2/b
hcbd
Proper reversalProper reversal
cccc
1, cc
c
1 ccFor every permutation and reversal
Given an arbitary reversal denote
(increase in the size of cycle decomposition)Then for every permutation and reversal
We call reversal proper if = 1
OrientedOriented pairspairs
• Oriented pairs are useful because they indicate reversals that create consecutive elements of the permutation.
Example:
The pair (1, -2) induces the reversal:
(0 3 1 6 5 –2 4 7)
(0 3 1 2 –5 –6 4 7)