A machine-learning based model for automated recommendation of individualized treatment of rifampicin-resistant tuberculosis

Author:

Verboven Lennert1,Callens Steven2,Black John3,Maartens Gary4,Dooley Kelly E.5,Potgieter Samantha6,Cartuyvels Ruben7,team SMARTT,Laukens Kris1,Warren Robin M.8,Rie Annelies Van1

Affiliation:

1. University of Antwerp

2. Ghent University Hospital

3. University of Cape Town and Livingstone Hospital

4. University of Cape Town

5. Vanderbilt University Medical Center

6. University of the Free State

7. KU Leuven

8. Stellenbosch University

Abstract

Abstract Background Rifampicin resistant tuberculosis remains a global health problem with almost half a million new cases annually. In high-income countries patients empirically start a standardized treatment regimen, followed by an individualized regimen guided by drug susceptibility test (DST) results. In most settings, DST information is not available or is limited to isoniazid and fluoroquinolones. Whole genome sequencing could more accurately guide individualized treatment as the full drug resistance profile is obtained with a single test. Whole genome sequencing has not reached its full potential for patient care, in part due to the complexity of translating a resistance profile into the most effective individualized regimen. Methods We developed a treatment recommender clinical decision support system (CDSS) and an accompanying web application for user-friendly recommendation of the optimal individualized treatment regimen to a clinician. Results Following expert stakeholder meetings and literature review, nine drug features and 14 treatment regimen features were identified and quantified. Using machine learning, a model was developed to predict the optimal treatment regimen based on a training set of 3895 treatment regimen-expert feedback pairs. The acceptability of the treatment recommender CDSS was assessed as part of a clinical trial and in a routine care setting. Within the clinical trial setting, all patients received the CDSS recommended treatment. In 8 of 20 cases, the initial recommendation was recomputed because of stock out, clinical contra-indication or toxicity. In routine care setting, physicians rejected the treatment recommendation in 7 out of 15 cases because it deviated from the national TB treatment guidelines. A survey indicated that the treatment recommender CDSS is easy to use and useful in clinical practice but requires digital infrastructure support and training. Conclusions Our findings suggest that global implementation of the novel treatment recommender CDSS holds the potential to improve treatment outcomes of rifampicin resistant tuberculosis.

Publisher

Research Square Platform LLC

Reference63 articles.

1. World Health Organization (WHO)., Global Tuberculosis Report 2022. 2022.

2. World Health Organization (WHO)., WHO consolidated guidelines on drug-resistant tuberculosis treatment. 2019.

3. World Health Organization (WHO)., Rapid communication: key changes to the treatment of drug-resistant tuberculosis. 2022.

4. Management of rifampicin-resistant TB: programme indicators and care cascade analysis in South Africa;Vos E;Int J Tuberc Lung Dis,2021

5. World Health Organization (WHO)., WHO consolidated guidelines on tuberculosis: module 3: diagnosis: rapid diagnostics for tuberculosis detection, 2021 update. 2021.

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