Litcius/Paper detail

Interactions between Culturable Bacteria Are Predicted by Individual Species’ Growth

Einat Nestor, Gal Toledano, Jonathan Friedman

2023mSystems27 citationsDOIOpen Access PDF

Abstract

In order to understand the function and structure of microbial communities, one must know all pairwise interactions that occur between the different species within the community, as these interactions shape the community's structure and functioning. However, measuring all pairwise interactions can be an extremely difficult task especially when dealing with big complex communities. Because of that, predicting interspecies interactions is a key challenge in microbial ecology. Here, we use machine learning models in order to accurately predict the type and strength of interactions. We trained our models on one of the largest available pairwise interactions data set, containing over 7,500 interactions between 20 different species that were cocultured in 40 different environments. Our results show that, in general, accurate predictions can be made, and that the ability of each species to grow on its own in the given environment contributes the most to predictions. Being able to predict microbial interactions would put us one step closer to predicting the functionality of microbial communities and to rationally microbiome engineering.

Topics & Concepts

BacteriaBiologyMicrobiologyEcologyZoologyEvolutionary biologyGeneticsMicrobial Metabolic Engineering and BioproductionGut microbiota and healthMicrobial Community Ecology and Physiology