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In vitro and in silico processes to identify differentially expressed proteins
Authors:Allet Nadia  Barrillat Nicolas  Baussant Thierry  Boiteau Celia  Botti Paolo  Bougueleret Lydie  Budin Nicolas  Canet Denis  Carraud Stéphanie  Chiappe Diego  Christmann Nicolas  Colinge Jacques  Cusin Isabelle  Dafflon Nicolas  Depresle Benoît  Fasso Irène  Frauchiger Pascal  Gaertner Hubert  Gleizes Anne  Gonzalez-Couto Eduardo  Jeandenans Catherine  Karmime Abderrahim  Kowall Thomas  Lagache Sophie  Mahé Eve  Masselot Alexandre  Mattou Hassan  Moniatte Marc  Niknejad Anne  Paolini Marianne  Perret Frédéric  Pinaud Nicolas  Ranno Frédéric  Raimondi Sylvain  Reffas Samia  Regamey Pierre-Olivier  Rey Pierre-Antoine
Institution:GeneProt Inc., Meyrin, Switzerland.
Abstract:We present an integrated proteomics platform designed for performing differential analyses. Since reproducible results are essential for comparative studies, we explain how we improved reproducibility at every step of our laboratory processes, e.g. by taking advantage of the powerful laboratory information management system we developed. The differential capacity of our platform is validated by detecting known markers in a real sample and by a spiking experiment. We introduce an innovative two-dimensional (2-D) plot for displaying identification results combined with chromatographic data. This 2-D plot is very convenient for detecting differential proteins. We also adapt standard multivariate statistical techniques to show that peptide identification scores can be used for reliable and sensitive differential studies. The interest of the protein separation approach we generally apply is justified by numerous statistics, complemented by a comparison with a simple shotgun analysis performed on a small volume sample. By introducing an automatic integration step after mass spectrometry data identification, we are able to search numerous databases systematically, including the human genome and expressed sequence tags. Finally, we explain how rigorous data processing can be combined with the work of human experts to set high quality standards, and hence obtain reliable (false positive < 0.35%) and nonredundant protein identifications.
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