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An Adaptive Pipeline To Maximize Isobaric Tagging Data in Large-Scale MS-Based Proteomics.
Corthésy, John; Theofilatos, Konstantinos; Mavroudi, Seferina; Macron, Charlotte; Cominetti, Ornella; Remlawi, Mona; Ferraro, Francesco; Núñez Galindo, Antonio; Kussmann, Martin; Likothanassis, Spiridon; Dayon, Loïc.
Afiliação
  • Corthésy J; Nestlé Institute of Health Sciences , Lausanne 1015 , Switzerland.
  • Theofilatos K; InSybio, Ltd. , Innovations House, 19 Staple Gardens , Winchester SO238SR , United Kingdom.
  • Mavroudi S; InSybio, Ltd. , Innovations House, 19 Staple Gardens , Winchester SO238SR , United Kingdom.
  • Macron C; Department of Social Work, School of Sciences of Health and Care , Technological Educational Institute of Western Greece , Patras 26334 , Greece.
  • Cominetti O; Nestlé Institute of Health Sciences , Lausanne 1015 , Switzerland.
  • Remlawi M; Nestlé Institute of Health Sciences , Lausanne 1015 , Switzerland.
  • Ferraro F; Nestlé Institute of Health Sciences , Lausanne 1015 , Switzerland.
  • Núñez Galindo A; Nestlé Institute of Health Sciences , Lausanne 1015 , Switzerland.
  • Kussmann M; Nestlé Institute of Health Sciences , Lausanne 1015 , Switzerland.
  • Likothanassis S; Nestlé Institute of Health Sciences , Lausanne 1015 , Switzerland.
  • Dayon L; InSybio, Ltd. , Innovations House, 19 Staple Gardens , Winchester SO238SR , United Kingdom.
J Proteome Res ; 17(6): 2165-2173, 2018 06 01.
Article em En | MEDLINE | ID: mdl-29695160
Isobaric tagging is the method of choice in mass-spectrometry-based proteomics for comparing several conditions at a time. Despite its multiplexing capabilities, some drawbacks appear when multiple experiments are merged for comparison in large sample-size studies due to the presence of missing values, which result from the stochastic nature of the data-dependent acquisition mode. Another indirect cause of data incompleteness might derive from the proteomic-typical data-processing workflow that first identifies proteins in individual experiments and then only quantifies those identified proteins, leaving a large number of unmatched spectra with quantitative information unexploited. Inspired by untargeted metabolomic and label-free proteomic workflows, we developed a quantification-driven bioinformatic pipeline (Quantify then Identify (QtI)) that optimizes the processing of isobaric tandem mass tag (TMT) data from large-scale studies. This pipeline includes innovative features, such as peak filtering with a self-adaptive preprocessing pipeline optimization method, Peptide Match Rescue, and Optimized Post-Translational Modification. QtI outperforms a classical benchmark workflow in terms of quantification and identification rates, significantly reducing missing data while preserving unmatched features for quantitative comparison. The number of unexploited tandem mass spectra was reduced by 77 and 62% for two human cerebrospinal fluid and plasma data sets, respectively.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Coloração e Rotulagem / Proteômica / Espectrometria de Massas em Tandem / Fluxo de Trabalho Idioma: En Ano de publicação: 2018 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Coloração e Rotulagem / Proteômica / Espectrometria de Massas em Tandem / Fluxo de Trabalho Idioma: En Ano de publicação: 2018 Tipo de documento: Article