4.5 Article

KinasePA: Phosphoproteomics data annotation using hypothesis driven kinase perturbation analysis

Journal

PROTEOMICS
Volume 16, Issue 13, Pages 1868-1871

Publisher

WILEY
DOI: 10.1002/pmic.201600068

Keywords

Bioinformatics; Hypothesis testing; Kinase; Perturbation; Phosphoproteomics; Signalling

Funding

  1. Intramural NIH HHS [ZIA ES102625-07] Funding Source: Medline

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Mass spectrometry (MS)-based quantitative phosphoproteomics has become a key approach for proteome-wide profiling of phosphorylation in tissues and cells. Traditional experimental design often compares a single treatment with a control, whereas increasingly more experiments are designed to compare multiple treatments with respect to a control. To this end, the development of bioinformatic tools that can integrate multiple treatments and visualise kinases and substrates under combinatorial perturbations is vital for dissecting concordant and/or independent effects of each treatment. Here, we propose a hypothesis driven kinase perturbation analysis (KinasePA) to annotate and visualise kinases and their substrates that are perturbed by various combinatorial effects of treatments in phosphoproteomics experiments. We demonstrate the utility of KinasePA through its application to two large-scale phosphoproteomics datasets and show its effectiveness in dissecting kinases and substrates within signalling pathways driven by unique combinations of cellular stimuli and inhibitors. We implemented and incorporated KinasePA as part of the directPA R package available from the comprehensive R archive network (CRAN). Furthermore, KinasePA also has an interactive web interface that can be readily applied to annotate user provided phosphoproteomics data (http://kinasepa.pengyiyang.org).

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