microbiomeDASim
github.com/williazo/microbiomedasimA toolkit for simulating differential microbiome data designed for longitudinal analyses. Several functional forms may be specified for the mean trend. Observations are drawn from a multivariate normal model. The objective of this package is to be able to simulate data in order to accurately compare different longitudinal methods for differential abundance.
Sourced from
- Bioconductor — microbiomeDASim
- GitHub — github.com/williazo/microbiomedasim
Related resources
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