TidyMass an object-oriented reproducible analysis framework for LC–MS data

Jul 28, 2022·
Xiaotao Shen
Xiaotao Shen
Hong Yan
Hong Yan
Chuchu Wang
Chuchu Wang
Peng Gao
Peng Gao
Caroline H. Johnson
Caroline H. Johnson
Michael P. Snyder
Michael P. Snyder
· 1 min read

Abstract

Reproducibility, traceability, and transparency have been long-standing issues for metabolomics data analysis. Multiple tools have been developed, but limitations still exist. Here, we present the tidyMass project (https://www.tidymass.org/), a comprehensive R-based computational framework that can achieve the traceable, shareable, and reproducible workflow needs of data processing and analysis for LC-MS-based untargeted metabolomics. TidyMass is an ecosystem of R packages that share an underlying design philosophy, grammar, and data structure, which provides a comprehensive, reproducible, and object-oriented computational framework. The modular architecture makes tidyMass a highly flexible and extensible tool, which other users can improve and integrate with other tools to customize their own pipeline.

Publication

Nature Communications

Type

Journal Articles

Xiaotao Shen
Authors
Xiaotao Shen
Nanyang Assistant Professor
Hong Yan
Authors
Research Assistant Professor
Chuchu Wang
Authors
Chuchu Wang
Postdoc
Stanford University
Peng Gao
Authors
Peng Gao
Assistant Professor
University of Pittsburgh
Caroline H. Johnson
Authors
Caroline H. Johnson
Associate Professor
Yale University
Michael P. Snyder
Authors
Michael P. Snyder
Professor
Stanford University