| Literature DB >> 19642275 |
Pavel Kuksa1, Pai-Hsi Huang, Vladimir Pavlovic.
Abstract
Establishing structural or functional relationship between sequences, for instance to infer the structural class of an unannotated protein, is a key task in biological sequence analysis. Recent computational methods such as profile and neighborhood mismatch kernels have shown very promising results for protein sequence classification, at the cost of high computational complexity. In this study we address the multi-class sequence classification problems using a class of string-based kernels, the sparse spatial sample kernels (SSSK), that are both biologically motivated and efficient to compute. The proposed methods can work with very large databases of protein sequences and show substantial improvements in computing time over the existing methods. Application of the SSSK to the multi-class protein prediction problems (fold recognition and remote homology detection) yields significantly better performance than existing state-of-the-art algorithms.Mesh:
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Year: 2008 PMID: 19642275
Source DB: PubMed Journal: Comput Syst Bioinformatics Conf ISSN: 1752-7791