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Quantitative drug susceptibility testing for Mycobacterium tuberculosis using unassembled sequencing data and machine learning

  • The CRyPTIC Consortium
  • University of Oxford
  • Research Center Borstel - Leibniz Lung Center
  • IRCCS San Raffaele Scientific Institute
  • Instituto Oswaldo Cruz
  • Instituto Adolfo Lutz
  • Stanford University
  • Scottish Mycobacteria Reference Laboratory
  • Yale University
  • Universidad Peruana Cayetano Heredia
  • Wadsworth Center for Laboratories and Research
  • Chinese Center for Disease Control and Prevention
  • Bill and Melinda Gates Foundation
  • UK Health Security Agency
  • Vita-Salute San Raffaele University
  • University College London
  • The University of Sydney
  • Public Health Agency of Sweden
  • University of British Columbia
  • Public Health Ontario
  • SYNLAB Gauting
  • WHO-SRL
  • European Molecular Biology Laboratory
  • National Health Laboratory Services
  • Taiwan Centers for Disease Control
  • P.D. Hinduja National Hospital and Medical Research Centre
  • University of Cape Town
  • University of Surrey
  • Imperial College London
  • University of Montreal
  • Instituto Nacional de Salud, Lima
  • The Foundation for Medical Research India
  • Africa Health Research Institute
  • London School of Hygiene and Tropical Medicine
  • German Center for Infection Research (DZIF)
  • National University of Singapore
  • Institut Pasteur de Madagascar
  • FIND
  • University of California at San Diego
  • Center for Infection and Immunity of Lille (CIIL)
  • National TB Control Program
  • University of Antwerp
  • University of Edinburgh
  • Stellenbosch University
  • Wellcome Centre for Infectious Diseases Research in Africa
  • Francis Crick Institute
  • CAS - Institute of Microbiology
  • University of Belgrade
  • National Academy of Medical Sciences of Ukraine
  • Liverpool School of Tropical Medicine
  • Biomedicine Institute of Valencia IBV-CSIC
  • University Medical Hospital Schleswig-Holstein
  • University of Melbourne
  • Harvard Medical School
  • Irish Mycobacteria Reference Laboratory
  • Universidad de Valencia
  • Pham NgocThach Hospital
  • Monash University
  • Baker Heart and Diabetes Institute
  • National Institute of Diseases of the Chest and Hospital
  • Belgian Reference Laboratory for M. Tuberculosis
  • Trinity College Dublin
  • Azienda Ospedaliera Careggi
  • Republican Scientific and Practical Centre for Pulmonology and TB
  • National Institute of Public Health and the Environment
  • Leeds Teaching Hospitals NHS Trust
  • World Health Organization

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

There remains a clinical need for better approaches to rapid drug susceptibility testing in view of the increasing burden of multidrug resistant tuberculosis. Binary susceptibility phenotypes only capture changes in minimum inhibitory concentration when these cross the critical concentration, even though other changes may be clinically relevant. We developed a machine learning system to predict minimum inhibitory concentration from unassembled whole-genome sequencing data for 13 anti-tuberculosis drugs. We trained, validated and tested the system on 10,859 isolates from the CRyPTIC dataset. Essential agreement rates (predicted MIC within one doubling dilution of observed MIC) were above 92% for first-line drugs, 91% for fluoroquinolones and aminoglycosides, and 90% for new and repurposed drugs, albeit with a significant drop in performance for the very few phenotypically resistant isolates in the latter group. To further validate the model in the absence of external MIC datasets, we predicted MIC and converted values to binary for an external set of 15,239 isolates with binary phenotypes, and compare their performance against a previously validated mutation catalogue, the expected performance of existing molecular assays, and World Health Organization Target Product Profiles. The sensitivity of the model on the external dataset was greater than 90% for all drugs except ethionamide, clofazimine and linezolid. Specificity was greater than 95% for all drugs except ethambutol, ethionamide, bedaquiline, delamanid and clofazimine. The proposed system can provide quantitative susceptibility phenotyping to help guide antimicrobial therapy, although further data collection and validation are required before machine learning can be used clinically for all drugs.

Original languageEnglish
Article numbere1012260
JournalPLoS Computational Biology
Volume20
Issue number8 August
DOIs
StatePublished - Aug 2024
Externally publishedYes

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

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