A Bayesian Approach to Protein Inference Problem in Shotgun Proteomics.

RECOMB'08: Proceedings of the 12th annual international conference on Research in computational molecular biology(2008)

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摘要
The protein inference problem represents a major challenge in shotgun proteomics. In this article, we describe a novel Bayesian approach to address this challenge by incorporating the predicted peptide detectabilities as the prior probabilities of peptide identification. We propose a rigorious probabilistic model for protein inference and provide practical algoritmic solutions to this problem. We used a complex synthetic protein mixture to test our method and obtained promising results.
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关键词
Bayesian Model, Protein Inference, Tandem Mass Spectrum, Proteomics Experiment, Shotgun Proteomics
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