TY - JOUR A1 - She, Rong A1 - Chu, Jeffrey S.-C. A1 - Wang, Ke A1 - Pei, Jian A1 - Chen, Nansheng T1 - genBlastA: Enabling BLAST to identify homologous gene sequences Y1 - 2009/01/01 JF - Genome Research JO - Genome Research SP - 143 EP - 149 DO - 10.1101/gr.082081.108 VL - 19 IS - 1 UR - http://genome.cshlp.org/content/19/1/143.abstract N2 - BLAST is an extensively used local similarity search tool for identifying homologous sequences. When a gene sequence (either protein sequence or nucleotide sequence) is used as a query to search for homologous sequences in a genome, the search results, represented as a list of high-scoring pairs (HSPs), are fragments of candidate genes rather than full-length candidate genes. Relevant HSPs (“signals”), which represent candidate genes in the target genome sequences, are buried within a report that contains also hundreds to thousands of random HSPs (“noises”). Consequently, BLAST results are often overwhelming and confusing even to experienced users. For effective use of BLAST, a program is needed for extracting relevant HSPs that represent candidate homologous genes from the entire HSP report. To achieve this goal, we have designed a graph-based algorithm, genBlastA, which automatically filters HSPs into well-defined groups, each representing a candidate gene in the target genome. The novelty of genBlastA is an edge length metric that reflects a set of biologically motivated requirements so that each shortest path corresponds to an HSP group representing a homologous gene. We have demonstrated that this novel algorithm is both efficient and accurate for identifying homologous sequences, and that it outperforms existing approaches with similar functionalities. ER -