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Multiple Sequence Alignment
Urmila Kulkarni-Kale Bioinformatics Centre University of Pune October 2k5
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Approaches: MSA Dynamic programming Progressive alignment: ClustalW
Genetic algorithms: SAGA October 2k5
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Progressive alignment approach
Align most related sequences Add on less related sequences to initial alignment Perform pairwise alignments of all sequences Use alignment scores to produce phylogenetic tree Align sequences sequentially, guided by the tree Gaps are added to an existing profile in progressive methods October 2k5
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No of pairwise alignments: N*(N-1)/2
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Steps in ClustalW Algorithm
Pairwise alignment: Calculate the distance matrix Unrooted Neighbor-joining tree Rooted NJ tree Sequence weights Progressive alignment using Guide tree Steps in ClustalW Algorithm October 2k5
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ClustalW: weight groups of related sequences receive lower weight
highly divergent sequences without any close relatives receive high weights October 2k5
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ClustalW: affine Gap penalty
GOP: Gap Opening Penalty GEP: Gap Extension Penalty Heuristics in calculating gap penalty Position specific penalty gap at position? yes lower GOP and GEP no, but gap within 8 residues increase GOP stretch of hydrophilic residues? yes lower GOP no use residue-specific gap propensities Once a gap, always a gap October 2k5
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Variation in local GOP Lowest GOP in Hydrophilic regions
Highest GOP in ‘Gapped regions’ Initial GOP October 2k5
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MSA: help detect Similarity
Hemoglobin: Human, chimpanzee, Goat, pig, horse & mouse October 2k5
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Sample MSA October 2k5
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Applications of MSA Detecting diagnostic patterns
Phylogenetic analysis Primer design Prediction of protein secondary structure Finding novel relationships between genes Similar genes conserved across organisms Same or similar function Simultaneous alignment of similar genes yields: regions subject to mutation regions of conservation mutations or rearrangements causing change in conformation or function October 2k5
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Limitations of Progressive alignment approach
Greedy nature Any errors in the initial alignment are carried through More efficient for closely related sequences than for divergent sequences October 2k5
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