Presentation is loading. Please wait.

Presentation is loading. Please wait.

Local alignment and BLAST

Similar presentations


Presentation on theme: "Local alignment and BLAST"— Presentation transcript:

1 Local alignment and BLAST
Usman Roshan BNFO 601

2 Local alignment Global alignment may not find local similarities
Modification of Needleman-Wunsch yields the Smith-Watermn algorithm for local alignment Useful in motif detection, database search, short read mapping

3 Local alignment Global alignment initialization:
Local alignment recurrence

4 Local alignment Global alignment recurrence:
Local alignment recurrence

5 Local alignment traceback
Let T(i,j) be the traceback matrices and m and n be length of input sequences. Global alignment traceback: Begin from T(m,n) and stop at T(0,0). Local alignment traceback: Find i*,j* such that T(i*,j*) is the maximum over all T(i,j). Begin traceback from T(i*,j*) and stop when T(i,j) <= 0.

6 BLAST Local pairwise alignment heuristic
Faster than standard pairwise alignment programs such as SSEARCH, but less sensitive. Online server:

7 BLAST Given a query q and a target sequence, find substrings of length k (k-mers) of score at least t --- also called hits. k is normally 3 to 5 for amino acids and 12 for nucleotides. Extend each hit to a locally maximal segment. Terminate the extension when the reduction in score exceeds a pre-defined threshold Report maximal segments above score S.

8 Finding k-mers quickly
Preprocess the database of sequences: For each sequence in the database store all k-mers in hash-table. This takes linear time Query sequence: For each k-mer in the query sequence look up the hash table of the target to see if it exists Also takes linear time


Download ppt "Local alignment and BLAST"

Similar presentations


Ads by Google