Artificial intelligence, machine learning and deep learning: Potential resources for the infection clinician
- PMID: 37468046
- DOI: 10.1016/j.jinf.2023.07.006
Artificial intelligence, machine learning and deep learning: Potential resources for the infection clinician
Abstract
Background: Artificial intelligence (AI), machine learning and deep learning (including generative AI) are increasingly being investigated in the context of research and management of human infection.
Objectives: We summarise recent and potential future applications of AI and its relevance to clinical infection practice.
Methods: 1617 PubMed results were screened, with priority given to clinical trials, systematic reviews and meta-analyses. This narrative review focusses on studies using prospectively collected real-world data with clinical validation, and on research with translational potential, such as novel drug discovery and microbiome-based interventions.
Results: There is some evidence of clinical utility of AI applied to laboratory diagnostics (e.g. digital culture plate reading, malaria diagnosis, antimicrobial resistance profiling), clinical imaging analysis (e.g. pulmonary tuberculosis diagnosis), clinical decision support tools (e.g. sepsis prediction, antimicrobial prescribing) and public health outbreak management (e.g. COVID-19). Most studies to date lack any real-world validation or clinical utility metrics. Significant heterogeneity in study design and reporting limits comparability. Many practical and ethical issues exist, including algorithm transparency and risk of bias.
Conclusions: Interest in and development of AI-based tools for infection research and management are undoubtedly gaining pace, although the real-world clinical utility to date appears much more modest.
Keywords: Artificial intelligence; Clinical decision support systems; Deep learning; Machine learning.
Copyright © 2023 The Author(s). Published by Elsevier Ltd.. All rights reserved.
Conflict of interest statement
Declaration of Competing Interest Both authors conceived of and planned this Editorial Commentary. AT screened the literature and prepared the first draft of the manuscript, both authors discussed and edited the manuscript. Artificial intelligence was not used in the preparation of this manuscript. The authors have no competing interests to declare.
Comment in
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Machine learning-based colistin resistance marker screening and phenotype prediction in Escherichia coli from whole genome sequencing data.J Infect. 2024 Feb;88(2):191-193. doi: 10.1016/j.jinf.2023.11.009. Epub 2023 Nov 20. J Infect. 2024. PMID: 37992876 No abstract available.
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