Title of article :
A discriminative method for remote homology detection based on n-peptide compositions with reduced amino acid alphabets
Author/Authors :
Hasan O?ul، نويسنده , , Erkan U. Mumcuo?lu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
In this study, n-peptide compositions are utilized for protein vectorization over a discriminative remote homology detection framework based on support vector machines (SVMs). The size of amino acid alphabet is gradually reduced for increasing values of n to make the method to conform with the memory resources in conventional workstations. A hash structure is implemented for accelerated search of n-peptides. The method is tested to see its ability to classify proteins into families on a subset of SCOP family database and compared against many of the existing homology detection methods including the most popular generative methods; SAM-98 and PSI-BLAST and the recent SVM methods; SVM-Fisher, SVM-BLAST and SVM-Pairwise. The results have demonstrated that the new method significantly outperforms SVM-Fisher, SVM-BLAST, SAM-98 and PSI-BLAST, while achieving a comparable accuracy with SVM-Pairwise. In terms of efficiency, it performs much better than SVM-Pairwise. It is shown that the information of n-peptide compositions with reduced amino acid alphabets provides an accurate and efficient means of protein vectorization for SVM-based sequence classification.
Keywords :
Protein vectorization , COMPOSITION , Reduced alphabet , Support vector machine , Remote homology
Journal title :
BioSystems
Journal title :
BioSystems