MicrobiotaProcess
github.com/yulab-smu/microbiotaprocessMicrobiotaProcess is an R package for analysis, visualization and biomarker discovery of microbial datasets. It introduces MPSE class, this make it more interoperable with the existing computing ecosystem. Moreover, it introduces a tidy microbiome data structure paradigm and analysis grammar. It provides a wide variety of microbiome data analysis procedures under the unified and common framework (tidy-like framework).
Sourced from
- Bioconductor — MicrobiotaProcess
- GitHub — github.com/yulab-smu/microbiotaprocess
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