Combining Pairwise Sequence Similarity and Support Vector Machines for Remote Protein Homology Detection (2002)
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| Venue: | J. Comput. Biol |
| Citations: | 116 - 12 self |
BibTeX
@INPROCEEDINGS{Liao02combiningpairwise,
author = {Li Liao and William Stafford Noble},
title = {Combining Pairwise Sequence Similarity and Support Vector Machines for Remote Protein Homology Detection},
booktitle = {J. Comput. Biol},
year = {2002},
pages = {225--232}
}
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Abstract
One key element in understanding the molecular machinery of the cell is to understand the meaning, or function, of each protein encoded in the genome. A very successful means of inferring the function of a previously unannotated protein is via sequence similarity with one or more proteins whose functions are already known. Currently, one of the most powerful such homology detection methods is the SVM-Fisher method of Jaakkola, Diekhans and Haussler (ISMB 2000). This method combines a generative, profile hidden Markov model (HMM) with a discriminative classification algorithm known as a support vector machine (SVM). The current work presents an alternative method for SVMbased protein classification. The method, SVM-pairwise, uses a pairwise sequence similarity algorithm such as SmithWaterman in place of the HMM in the SVM-Fisher method. The resulting algorithm, when tested on its ability to recognize previously unseen families from the SCOP database, yields significantly better remote protein homology detection than SVM-Fisher, profile HMMs and PSI-BLAST.







