Word correlation matrices for protein sequence analysis and remote homology detection

2008 | journal article. A publication with affiliation to the University of Göttingen.

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​Word correlation matrices for protein sequence analysis and remote homology detection​
Lingner, T. & Meinicke, P. ​ (2008) 
BMC Bioinformatics9 art. 259​.​ DOI: https://doi.org/10.1186/1471-2105-9-259 

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Original Title
8428
Authors
Lingner, Thomas; Meinicke, Peter 
Abstract
Background: Classification of protein sequences is a central problem in computational biology. Currently, among computational methods discriminative kernel-based approaches provide the most accurate results. However, kernel-based methods often lack an interpretable model for analysis of discriminative sequence features, and predictions on new sequences usually are computationally expensive. Results: In this work we present a novel kernel for protein sequences based on average word similarity between two sequences. We show that this kernel gives rise to a feature space that allows analysis of discriminative features and fast classification of new sequences. We demonstrate the performance of our approach on a widely-used benchmark setup for protein remote homology detection. Conclusion: Our word correlation approach provides highly competitive performance as compared with state-of-the-art methods for protein remote homology detection. The learned model is interpretable in terms of biologically meaningful features. In particular, analysis of discriminative words allows the identification of characteristic regions in biological sequences. Because of its high computational efficiency, our method can be applied to ranking of potential homologs in large databases.
Issue Date
2008
Status
published
Publisher
Biomed Central Ltd
Journal
BMC Bioinformatics 
ISSN
1471-2105

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