Learning representations of microbe-metabolite interactions.
James T MortonAlexander A AksenovLouis Felix NothiasJames R FouldsRobert A QuinnMichelle H BadriTami L SwensonMarc W Van GoethemTrent R NorthenYoshiki Vazquez-BaezaMingxun WangNicholas A BokulichAaron WattersSe Jin SongRichard BonneauPieter C DorresteinRob KnightPublished in: Nature methods (2019)
Integrating multiomics datasets is critical for microbiome research; however, inferring interactions across omics datasets has multiple statistical challenges. We solve this problem by using neural networks (https://github.com/biocore/mmvec) to estimate the conditional probability that each molecule is present given the presence of a specific microorganism. We show with known environmental (desert soil biocrust wetting) and clinical (cystic fibrosis lung) examples, our ability to recover microbe-metabolite relationships, and demonstrate how the method can discover relationships between microbially produced metabolites and inflammatory bowel disease.