PBLMM: Peptide-based linear mixed models for differential expression analysis of shotgun proteomics data

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Abstract

Here, we present a peptide-based linear mixed models tool—PBLMM, a standalone desktop application for differential expression analysis of proteomics data. We also provide a Python package that allows streamlined data analysis workflows implementing the PBLMM algorithm. PBLMM is easy to use without scripting experience and calculates differential expression by peptide-based linear mixed regression models. We show that peptide-based models outperform classical methods of statistical inference of differentially expressed proteins. In addition, PBLMM exhibits superior statistical power in situations of low effect size and/or low sample size. Taken together our tool provides an easy-to-use, high-statistical-power method to infer differentially expressed proteins from proteomics data.

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Klann, K., & Münch, C. (2022). PBLMM: Peptide-based linear mixed models for differential expression analysis of shotgun proteomics data. Journal of Cellular Biochemistry, 123(3), 691–696. https://doi.org/10.1002/jcb.30225

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