Learning beyond-pairwise interactions enables the bottom-up prediction of microbial community structure

Proc Natl Acad Sci U S A. 2024 Feb 13;121(7):e2312396121. doi: 10.1073/pnas.2312396121. Epub 2024 Feb 5.

Abstract

Understanding the assembly of multispecies microbial communities represents a significant challenge in ecology and has wide applications in agriculture, wastewater treatment, and human healthcare domains. Traditionally, studies on the microbial community assembly focused on analyzing pairwise relationships among species; however, neglecting higher-order interactions, i.e., the change of pairwise relationships in the community context, may lead to substantial deviation from reality. Herein, we have proposed a simple framework that incorporates higher-order interactions into a bottom-up prediction of the microbial community assembly and examined its accuracy using a seven-member synthetic bacterial community on a host plant, duckweed. Although the synthetic community exhibited emergent properties that cannot be predicted from pairwise coculturing results, our results demonstrated that incorporating information from three-member combinations allows the acceptable prediction of the community structure and actual interaction forces within it. This reflects that the occurrence of higher-order effects follows consistent patterns, which can be predicted even from trio combinations, the smallest unit of higher-order interactions. These results highlight the possibility of predicting, explaining, and understanding the microbial community structure from the bottom-up by learning interspecies interactions from simple beyond-pairwise combinations.

Keywords: duckweed; higher-order interactions; interspecies interactions; microbial community assembly; synthetic bacterial community.

MeSH terms

  • Bacteria
  • Ecology
  • Humans
  • Microbial Interactions*
  • Microbiota*