| Literature DB >> 15759638 |
Duncan Brown1, Nandini Krishnamurthy, Joseph M Dale, Wayne Christopher, Kimmen Sjölander.
Abstract
The limitations of homology-based methods for prediction of protein molecular function are well known; differences in domain structure, gene duplication events and errors in existing database annotations complicate this process. In this paper we present a method to detect and model protein subfamilies, which can be used in high-throughput, genome-scale phylogenomic inference of protein function. We demonstrate the method on a set of nine PFAM families, and show that subfamily HMMs provide greater separation of homologs and non-homologs than is possible with a single HMM for each family. We also show that subfamily HMMs can be used for functional classification with a very low expected error rate. The BETE method for identifying functional subfamilies is illustrated on a set of serotonin receptors.Entities:
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Year: 2005 PMID: 15759638
Source DB: PubMed Journal: Pac Symp Biocomput ISSN: 2335-6928