Title of article
NovoHMM: A Hidden Markov Model for de Novo Peptide Sequencing
Author/Authors
Buhmann، Joachim M. نويسنده , , Fischer، Bernd نويسنده , , Roth، Volker نويسنده , , Roos، Franz نويسنده , , Grossmann، Jonas نويسنده , , Baginsky، Sacha نويسنده , , Widmayer، Peter نويسنده , , Gruissem، Wilhelm نويسنده ,
Issue Information
دوهفته نامه با شماره پیاپی سال 2005
Pages
-7264
From page
7265
To page
0
Abstract
De novo sequencing of peptides poses one of the most challenging tasks in data analysis for proteome research. In this paper, a generative hidden Markov model (HMM) of mass spectra for de novo peptide sequencing which constitutes a novel view on how to solve this problem in a Bayesian framework is proposed. Further extensions of the model structure to a graphical model and a factorial HMM to substantially improve the peptide identification results are demonstrated. Inference with the graphical model for de novo peptide sequencing estimates posterior probabilities for amino acids rather than scores for single symbols in the sequence. Our model outperforms stateof-the-art methods for de novo peptide sequencing on a large test set of spectra.
Journal title
Analytical Chemistry
Serial Year
2005
Journal title
Analytical Chemistry
Record number
50648
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