pmartR: Quality Control and Statistics for Mass Spectrometry-based Biological Data

2019 
Prior to statistical analysis of mass spectrometry (MS) data, quality control (QC) of the identified biomolecule peak intensities is imperative to remove outliers and random effects that arise from the mapping of raw mass spectra to identified biomolecules with observed values. Without this step, statistical results can be biased. Additionally, liquid-chromatography-MS proteomics data presents inherent challenges due to large amounts of missing data that require special consideration during statistical analysis. While a number of R packages exist to address these challenges individually, there is no single R package that addresses all of them. We present pmartR, an open-source R package, for QC (filtering, normalization, exploratory data analysis (EDA)), visualization, and statistical analysis robust to missing data. Example analysis using proteomics data from a virology study comparing infected and control samples demonstrates the core functionality of the package and highlights the capabilities for hand...
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