Literature DB >> 35398560

Machine learning to design antimicrobial combination therapies: Promises and pitfalls.

Jennifer M Cantrell1, Carolina H Chung1, Sriram Chandrasekaran2.   

Abstract

Combination therapies can overcome antimicrobial resistance (AMR) and repurpose existing drugs. However, the large combinatorial space to explore presents a daunting challenge. In response, machine learning (ML) algorithms are being applied to identify novel synergistic drug interactions from millions of potential combinations. Here, we compare ML-based approaches for combination therapy design based on the type of input information used, specifically: drug properties, microbial response and infection microenvironment. We also provide a compilation of publicly available drug interaction datasets relevant to AMR. Finally, we discuss limitations of current ML-based methods and propose new strategies for designing efficacious combination therapies. These include consideration of in vivo conditions, design of sequential combinations, enhancement of model interpretability and application of deep learning algorithms.
Copyright © 2022 Elsevier Ltd. All rights reserved.

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Keywords:  Antimicrobial resistance; Chemogenomics; Combination therapy; Drug discovery; Machine learning

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Year:  2022        PMID: 35398560     DOI: 10.1016/j.drudis.2022.04.006

Source DB:  PubMed          Journal:  Drug Discov Today        ISSN: 1359-6446            Impact factor:   7.851


  1 in total

1.  A flux-based machine learning model to simulate the impact of pathogen metabolic heterogeneity on drug interactions.

Authors:  Carolina H Chung; Sriram Chandrasekaran
Journal:  PNAS Nexus       Date:  2022-07-22
  1 in total

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