Prediction of pyrazinamide resistance in Mycobacterium tuberculosis using structure-based machine-learning approaches

Author:

Carter Joshua J1,Walker Timothy M1,Walker A Sarah123,Whitfield Michael G4ORCID,Morlock Glenn P5,Lynch Charlotte I1,Adlard Dylan1,Peto Timothy E A12,Posey James E5,Crook Derrick W123,Fowler Philip W12ORCID

Affiliation:

1. Nuffield Department of Medicine, University of Oxford, John Radcliffe Hospital , Headley Way , Oxford OX3 9DU, UK

2. National Institute of Health Research Oxford Biomedical Research Centre, John Radcliffe Hospital , Headley Way , Oxford OX3 9DU, UK

3. NIHR Health Protection Research Unit in Healthcare Associated Infection and Antimicrobial Resistance, University of Oxford , Oxford , UK

4. Division of Molecular Biology and Human Genetics, Faculty of Medicine and Health Sciences, SAMRC Centre for Tuberculosis Research, DST/NRF Centre of Excellence for Biomedical Tuberculosis Research, Stellenbosch University , Tygerberg , South Africa

5. Division of Tuberculosis Elimination, National Center for HIV/AIDS, Viral Hepatitis, STD, and TB Prevention, Centers for Disease Control and Prevention , Atlanta, GA , USA

Abstract

Abstract Background Pyrazinamide is one of four first-line antibiotics used to treat tuberculosis; however, antibiotic susceptibility testing for pyrazinamide is challenging. Resistance to pyrazinamide is primarily driven by genetic variation in pncA, encoding an enzyme that converts pyrazinamide into its active form. Methods We curated a dataset of 664 non-redundant, missense amino acid mutations in PncA with associated high-confidence phenotypes from published studies and then trained three different machine-learning models to predict pyrazinamide resistance. All models had access to a range of protein structural-, chemical- and sequence-based features. Results The best model, a gradient-boosted decision tree, achieved a sensitivity of 80.2% and a specificity of 76.9% on the hold-out test dataset. The clinical performance of the models was then estimated by predicting the binary pyrazinamide resistance phenotype of 4027 samples harbouring 367 unique missense mutations in pncA derived from 24 231 clinical isolates. Conclusions This work demonstrates how machine learning can enhance the sensitivity/specificity of pyrazinamide resistance prediction in genetics-based clinical microbiology workflows, highlights novel mutations for future biochemical investigation, and is a proof of concept for using this approach in other drugs.

Funder

National Institute for Health Research Health Protection Research Unit

Public Health England

National Institute for Health Research

Oxford Biomedical Research Centre

Wellcome Trust

Newton Fund-MRC

Bill and Melinda Gates Foundation

European Commission

South African Medical Research Council

National Institutes of Health

Rhodes Trust

EPSRC

NIHR Senior Investigators

NIHR Academic Clinical Lecturer

TORCH

Flemish Fund for Scientific Research

Claude Leon Foundation

NHS

Department of Health

Centers for Disease Control and Prevention

US Department of Health and Human Services

Publisher

Oxford University Press (OUP)

Reference69 articles.

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2. Mechanisms of drug resistance in Mycobacterium tuberculosis: update 2015;Zhang;Int J Tuberc Lung Dis,2015

3. The curious characteristics of pyrazinamide: a review;Zhang;Int J Tuberc Lung Dis,2003

4. The action of antituberculosis drugs in short-course chemotherapy;Mitchison;Tubercle,1985

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