Joint Microbial and Metabolomic Network Estimation with the Censored Gaussian Graphical Model

Stat Biosci. 2021 Jul;13(2):351-372. doi: 10.1007/s12561-020-09294-z. Epub 2020 Sep 21.

Abstract

Joint analysis of microbiome and metabolomic data represents an imperative objective as the field moves beyond basic microbiome association studies and turns towards mechanistic and translational investigations. We present a censored Gaussian graphical model framework, where the metabolomic data are treated as continuous and the microbiome data as censored at zero, to identify direct interactions (defined as conditional dependence relationships) between microbial species and metabolites. Simulated examples show that our method metaMint performs favorably compared to the existing ones. metaMint also provides interpretable microbe-metabolite interactions when applied to a bacterial vaginosis data set. R implementation of metaMint is available on GitHub.

Keywords: Censored Gaussian graphical models; Conditional dependence; Data integration; Metabolomics; Microbiome.