In the last decade, numerous statistical methods have been developed for analyzing microbiome data generated from high-throughput next-generation sequencing technology. Microbiome data are typically characterized by zero inflation, overdispersion, high dimensionality, and sample heterogeneity. Three popular areas of interest in microbiome research requiring statistical methods that can account for the characterizations of microbiome data include detecting differentially abundant taxa across phenotype groups, identifying associations between the microbiome and covariates, and constructing microbiome networks to characterize ecological associations of microbes. These three areas are referred to as differential abundance analysis, integrative analysis, and network analysis, respectively. In this review, we highlight available statistical methods for differential abundance analysis, integrative analysis, and network analysis that have greatly advanced microbiome research. In addition, we discuss each method's motivation, modeling framework, and application.
CITATION STYLE
Lutz, K. C., Jiang, S., Neugent, M. L., De Nisco, N. J., Zhan, X., & Li, Q. (2022, June 14). A Survey of Statistical Methods for Microbiome Data Analysis. Frontiers in Applied Mathematics and Statistics. Frontiers Media S.A. https://doi.org/10.3389/fams.2022.884810
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