- Presents a thorough overview of statistical methods in microbiome statistics of parametric and nonparametric correlation, association, interaction, and composition adopted from classical statistics and ecology and specifically designed for microbiome research.
- Performs step-by-step statistical analysis of correlation, association, interaction, and composition in microbiome data.
- Discusses the issues of statistical analysis of microbiome data: high dimensionality, compositionality, sparsity, overdispersion, zero-inflation, and heterogeneity.
- Investigates statistical methods on multiple comparisons and multiple hypothesis testing and applications to microbiome data.
- Introduces a series of exploratory tools to visualize composition and correlation of microbial taxa by barplot, heatmap, and correlation plot.
- Employs the Kruskal-Wallis rank-sum test to perform model selection for further multi-omics data integration.
- Offers R code and the datasets from the authors' real microbiome research and publicly available data for the analysis used.
- Remarks on the advantages and disadvantages of each of the methods used.
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