Litcius/Paper detail

Improved maximum growth rate prediction from microbial genomes by integrating phylogenetic information

Liang Xu, Emily J. Zakem, JL Weissman

2025Nature Communications11 citationsDOIOpen Access PDF

Abstract

Microbial maximum growth rates vary widely across species and are key parameters for ecosystem modeling. Measuring these rates is challenging, but genomic features like codon usage statistics provide useful signals for predicting growth rates for as-yet uncultivated organisms. Here we present Phydon, a framework for genome-based maximum growth rate prediction that combines codon statistics and phylogenetic information to enhance the precision of maximum growth rate estimates, especially when a close relative with a known growth rate is available. We use Phydon to construct a large and taxonomically broad database of temperature-corrected growth rate estimates for 111,349 microbial species. The results reveal a bimodal distribution of maximum growth rates, resolving distinct groups of fast and slow growers. Our work provides insight into the predictive power of taxonomic information versus mechanistic, gene-based inference.

Topics & Concepts

Phylogenetic treeInferenceGenomeBiologyGrowth rateMaximum likelihoodStatisticsGeneComputer scienceGeneticsArtificial intelligenceMathematicsGeometryGenomics and Phylogenetic StudiesMicrobial Community Ecology and PhysiologyGut microbiota and health