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Published byNaomi Merritt Modified over 9 years ago
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Blast 2.0 Details The Filter Option: –process of hiding regions of (nucleic acid or amino acid) sequence having characteristics that frequently lead to spurious high scores –typically involves the removal of repeated or low complexity regions –The SEG program is used to mask or filter LCRs in amino acid queries. –The DUST program is used to mask or filter LCRs in nucleic acid queries –More than half of the proteins in the database contain at least one low complexity region
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SEG Filter Example Default filtering option in BLAST 2.0 automatically converts low complexity sequences into X's which can be seen in the query line of the alignments
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PSI-Blast Position Specific Iterated BLAST an automated, easy-to-use version of a "profile" search, – a sensitive way to look for sequence homologues Intuition: substitution matrices should be specific to a particular site. Penalize alanine glycine more in a helix
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PSI-Blast: Outline Algorithm: –First perform a gapped BLAST database search –PSI-BLAST uses information from significant alignments to construct a position-specific score matrix (PSSM), –PSSM replaces the query sequence for the next round of database searching. –PSI-BLAST is iterated until no new significant alignments are found. Details: –Set initial thresholds high. Inspect each iteration's result for suspicious sequences. –Do several iterations (~5), or until no new sequences are found –Even if only looking for a small set of sequences, make the initial search very broad First, use NR with up to 5 iterations to set PSSM Then use that PSSM to search in restricted domain
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PSI-Blast: Details To calculate profile for position 108: only shaded regions are used To calculate profile at position i, pseudo-counts are used
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PSI-BLAST Caveats Good: –Increased ability to find distant homologues –If the sequences used to construct PSSMs are all homologous, the sensitivity at a given specificity improves significantly. Bad: –If non-homologous sequences are included in the PSSMs, they are “corrupted.” Then they pull in more non-homologous sequences, and become worse than generic Advice: –Special care to prevent non-homologous sequences from being included in the PSSM calculation. When in doubt, leave it out! Examine sequences with moderate similarity carefully. –Be particularly cautious about matches to sequences with highly biased amino acid content
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Database Homology Search Homology search –For genes/RNAs which do not encode proteins relatively inefficient at identifying highly diverged sequences –For genes which encode proteins protein-protein searches are significantly better –(two mRNA sequences might only be ~40% identical at the nucleotide level, but could be 70% similar in the proteins they encode) Rules of thumb: –80% similarity implies same structure and function –highly diverged homologs could have down to 25% similarity –the "twilight zone" in the range of 20%: judgement about significant similarity is quite difficult –distantly related homologs may lack significant similarity
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Database Homology Search E-values: –expected number of sequences in the database which would achieve a given score –are more useful than the raw or bit scores or percentage identity –Score of 0.001 is a standard threshold (unless sequence is biased – e.g. low complexity) –Scores below 10 -50 are highly significant. Caveats with low E-values: –while the evolutionary relationship is highly likely, it does not necessarily imply identical function (multi-domain proteins) –if the score is extremely low AND the alignment covers the length of both sequences, then they would share related function
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Profiles Rather than identifying only the “consensus” (i.e. most common) amino acid at a particular location, we can assign a probability to each amino acid in each position of the domain. Like a PSSM, but just for the domain. 1 2 3 A.1.5.25 C.3.1.25 D.2.2.25 E.4.2.25
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Applying a Profile Calculate score (probability of match) for a profile at each position in a sequence by multiplying individual probabilities. Use “Sliding window”: Can transform probability to significance given random distribution assumption 1 2 3 A.1.5.25 C.3.1.25 D.2.2.25 E.4.2.25 For sequence EACDC: EAC =.4 *.5 *.25 =.05 ACD =.1 *.1 *.25 =.0025 CDC =.3 *.2 *.25 =.015
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Sequence Logos
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