Published in

Elsevier, Journal of Proteomics, (108), p. 269-283

DOI: 10.1016/j.jprot.2014.05.011

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Improved prediction of peptide detectability for targeted proteomics using a rank-based algorithm and organism-specific data

This paper is available in a repository.
This paper is available in a repository.

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Abstract

The in silico prediction of the best-observable “proteotypic” peptides in mass spectrometry-based workflows is a challenging problem. Being able to accurately predict such peptides would enable the informed selection of proteotypic peptides for targeted quantification of previously observed and non-observed proteins for any organism, with a significant impact for clinical proteomics and systems biology studies. Current prediction algorithms rely on physicochemical parameters in combination with positive and negative training sets to identify those peptide properties that most profoundly affect their general detectability.