Methodological Considerations in Longitudinal Analyses of Microbiome Data: A Comprehensive Review

Genes (Basel). 2023 Dec 28;15(1):51. doi: 10.3390/genes15010051.

Abstract

Biological processes underlying health and disease are inherently dynamic and are best understood when characterized in a time-informed manner. In this comprehensive review, we discuss challenges inherent in time-series microbiome data analyses and compare available approaches and methods to overcome them. Appropriate handling of longitudinal microbiome data can shed light on important roles, functions, patterns, and potential interactions between large numbers of microbial taxa or genes in the context of health, disease, or interventions. We present a comprehensive review and comparison of existing microbiome time-series analysis methods, for both preprocessing and downstream analyses, including differential analysis, clustering, network inference, and trait classification. We posit that the careful selection and appropriate utilization of computational tools for longitudinal microbiome analyses can help advance our understanding of the dynamic host-microbiome relationships that underlie health-maintaining homeostases, progressions to disease-promoting dysbioses, as well as phases of physiologic development like those encountered in childhood.

Keywords: deep learning; longitudinal analysis; microbiome data; review; statistical methods.

Publication types

  • Review

MeSH terms

  • Cluster Analysis
  • Disease Progression
  • Dysbiosis*
  • Homeostasis
  • Humans
  • Microbiota* / genetics