Ms-bid
Daehee Hwang,Ning Zhang,Hookeun Lee,Eugene C. Yi,Hui Zhang,Inyoul Lee,Leroy Hood,Ruedi Aebersold +7 more
TL;DR: The MS-BID platform consists of several computational tools for detecting peptides in the collected patterns, matching detected peptides across a number of LC-MS datasets and selecting discriminatory peptides between classes of samples.
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Abstract: Summary: MS-BID (MS Biomarker Discovery Platform) is an integrative computational pipeline for biomarker discovery using LC-MS-based comparative proteomic analysis. This platform consists of several computational tools for: (i) detecting peptides in the collected patterns; (ii) matching detected peptides across a number of LC-MS datasets and (iii) selecting discriminatory peptides between classes of samples.
Availability: MS-BID source codes, binaries and documentations are freely available under LGPL from http://tools.proteomecenter.org/msBID.php.
Contact: dhhwang@postech.ac.kr
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