抄録
Retention times in HPLC yield valuable information for the identification of various analytes and the prediction of peptide retention is useful for the identification of peptides/proteins in LC-MS-based proteomics. Informatics methods such as artificial neural networks and support vector machines capable of solving nonlinear problems made possible the accurate modeling of quantitative structure-retention relationships of peptides (including large polymers) up to 5 kDa to which classical linear models cannot be applied, as well as the proteome-wide prediction of peptide retention. Proteome-wide retention prediction and accurate mass-information facilitate the identification of peptides in complex proteomic samples. In this review, we address recent developments in solid informatics methods and their application to peptide-retention properties in 'bottom-up' shotgun proteomics. We also describe future prospects for the standardization and application of retention times.
本文言語 | English |
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ページ(範囲) | 787-798 |
ページ数 | 12 |
ジャーナル | Proteomics |
巻 | 8 |
号 | 4 |
DOI | |
出版ステータス | Published - 2008 2月 |
ASJC Scopus subject areas
- 生化学
- 分子生物学