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

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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.

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Shen, X., Yan, H., Wang, C., Gao, P., Johnson, C. H., & Snyder, M. P. (2022). TidyMass an object-oriented reproducible analysis framework for LC–MS data. Nature Communications, 13(1). https://doi.org/10.1038/s41467-022-32155-w

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