pmartR 2.0: A Quality Control, Visualization, and Statistics Pipeline for Multiple Omics Datatypes

DJ Degnan, KG Stratton, R Richardson… - Journal of Proteome …, 2023 - ACS Publications
DJ Degnan, KG Stratton, R Richardson, D Claborne, EA Martin, NA Johnson, D Leach
Journal of Proteome Research, 2023ACS Publications
The pmartR (https://github. com/pmartR/pmartR) package was designed for the quality
control (QC) and analysis of mass spectrometry data, tailored to specific characteristics of
proteomic (isobaric or labeled), metabolomic, and lipidomic data sets. Since its initial
release, the tool has been expanded to address the needs of its growing userbase and now
includes QC and statistics for nuclear magnetic resonance metabolomic data, and leverages
the DESeq2, edgeR, and limma-voom R packages for transcriptomic data analyses. These …
The pmartR (https://github.com/pmartR/pmartR) package was designed for the quality control (QC) and analysis of mass spectrometry data, tailored to specific characteristics of proteomic (isobaric or labeled), metabolomic, and lipidomic data sets. Since its initial release, the tool has been expanded to address the needs of its growing userbase and now includes QC and statistics for nuclear magnetic resonance metabolomic data, and leverages the DESeq2, edgeR, and limma-voom R packages for transcriptomic data analyses. These improvements have made progress toward a unified omics processing pipeline for ease of reporting and streamlined statistical purposes. The package’s statistics and visualization capabilities have also been expanded by adding support for paired data and by integrating pmartR with the trelliscopejs R package for the quick creation of trellis displays (https://github.com/hafen/trelliscopejs). Here, we present relevant examples of each of these enhancements to pmartR and highlight how each new feature benefits the omics community.
ACS Publications