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pmartR: Quality Control and Statistics for Mass Spectrometry-Based Biological Data
Author(s) -
Kelly G. Stratton,
BobbieJo WebbRobertson,
Lee Ann McCue,
Bryan Stanfill,
Daniel Claborne,
Iobani Godinez,
Thomas Johansen,
Allison Thompson,
Kristin Burnum-Johnson,
Katrina M. Waters,
Lisa Bramer
Publication year - 2019
Publication title -
journal of proteome research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.644
H-Index - 161
eISSN - 1535-3907
pISSN - 1535-3893
DOI - 10.1021/acs.jproteome.8b00760
Subject(s) - missing data , database normalization , normalization (sociology) , statistical process control , computer science , exploratory data analysis , data quality , data mining , visualization , statistical hypothesis testing , r package , false discovery rate , outlier , statistics , process (computing) , pattern recognition (psychology) , chemistry , artificial intelligence , mathematics , engineering , machine learning , metric (unit) , biochemistry , operations management , computational science , sociology , anthropology , gene , operating system
Prior to statistical analysis of mass spectrometry (MS) data, quality control (QC) of the identified biomolecule peak intensities is imperative for reducing process-based sources of variation and extreme biological outliers. Without this step, statistical results can be biased. Additionally, liquid chromatography-MS proteomics data present 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 and normalization), exploratory data analysis (EDA), visualization, and statistical analysis robust to missing data. Example analysis using proteomics data from a mouse study comparing smoke exposure to control demonstrates the core functionality of the package and highlights the capabilities for handling missing data. In particular, using a combined quantitative and qualitative statistical test, 19 proteins whose statistical significance would have been missed by a quantitative test alone were identified. The pmartR package provides a single software tool for QC, EDA, and statistical comparisons of MS data that is robust to missing data and includes numerous visualization capabilities.

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