Peak intensity prediction in MALDI-TOF mass spectrometry: A machine learning study to support quantitative proteomics |
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Authors: | Wiebke Timm Alexandra Scherbart Sebastian Böcker Oliver Kohlbacher Tim W Nattkemper |
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Affiliation: | 1.Applied Neuroinformatics Group,Bielefeld University,Germany;2.Friedrich-Schiller-University,Jena,Germany;3.Simulation of biological systems, Center for Bioinformatics Tübingen,Eberhard Karls University,Tübingen,Germany;4.Intl. NRW Graduate School for Bioinformatics and Genome Research,Bielefeld University,Germany |
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Abstract: | Background Mass spectrometry is a key technique in proteomics and can be used to analyze complex samples quickly. One key problem with the mass spectrometric analysis of peptides and proteins, however, is the fact that absolute quantification is severely hampered by the unclear relationship between the observed peak intensity and the peptide concentration in the sample. While there are numerous approaches to circumvent this problem experimentally (e.g. labeling techniques), reliable prediction of the peak intensities from peptide sequences could provide a peptide-specific correction factor. Thus, it would be a valuable tool towards label-free absolute quantification. |
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