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MOTIVATION: Quantitative mass spectrometry-based proteomics requires protein-level estimates and associated confidence measures. Challenges include the presence of low quality or incorrectly identified peptides and informative missingness. Furthermore, models are required for rolling peptide-level information up to the protein level. RESULTS: We present a statistical model that carefully accounts for informative missingness in peak intensities and allows unbiased, model-based, protein-level estimation and inference. The model is applicable to both label-based and label-free quantitation experiments. We also provide automated, model-based, algorithms for filtering of proteins and peptides as well as imputation of missing values. Two LC/MS datasets are used to illustrate the methods. In simulation studies, our methods are shown to achieve substantially more discoveries than standard alternatives. AVAILABILITY: The software has been made available in the open-source proteomics platform DAnTE (http://omics.pnl.gov/software/).
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Yuliya V. Karpievitch
Jeffrey A. Stanley
Thomas Taverner
Bioinformatics
Texas A&M University
Oregon Health & Science University
Pacific Northwest National Laboratory
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Karpievitch et al. (Wed,) studied this question.
www.synapsesocial.com/papers/6a0b28f89b4eb2f7ce2e557e — DOI: https://doi.org/10.1093/bioinformatics/btp362