A biochemically-interpretable machine learning classifier for microbial GWAS.

Journal: Nature communications
PMID:

Abstract

Current machine learning classifiers have successfully been applied to whole-genome sequencing data to identify genetic determinants of antimicrobial resistance (AMR), but they lack causal interpretation. Here we present a metabolic model-based machine learning classifier, named Metabolic Allele Classifier (MAC), that uses flux balance analysis to estimate the biochemical effects of alleles. We apply the MAC to a dataset of 1595 drug-tested Mycobacterium tuberculosis strains and show that MACs predict AMR phenotypes with accuracy on par with mechanism-agnostic machine learning models (isoniazid AUC = 0.93) while enabling a biochemical interpretation of the genotype-phenotype map. Interpretation of MACs for three antibiotics (pyrazinamide, para-aminosalicylic acid, and isoniazid) recapitulates known AMR mechanisms and suggest a biochemical basis for how the identified alleles cause AMR. Extending flux balance analysis to identify accurate sequence classifiers thus contributes mechanistic insights to GWAS, a field thus far dominated by mechanism-agnostic results.

Authors

  • Erol S Kavvas
    Department of Bioengineering, University of California, San Diego, La Jolla, CA, USA.
  • Laurence Yang
    Department of Bioengineering, University of California, San Diego, La Jolla, CA, USA.
  • Jonathan M Monk
    Department of Bioengineering, University of California, San Diego, La Jolla, California, USA.
  • David Heckmann
    Heinrich-Heine-Universität, Institute for Computer Science, 40225 Düsseldorf, Germany. Electronic address: david.heckmann@uni-duesseldorf.de.
  • Bernhard O Palsson
    Department of Bioengineering, University of California, San Diego, CA, USA.