Machine learning for clinical decision support in infectious diseases: a narrative review of current applications
Université Paris Cité · Inserm · +6 more institutions
Abstract
Machine learning (ML) is a growing field in medicine. This narrative review describes the current body of literature on ML for clinical decision support in infectious diseases (ID).
We aim to inform clinicians about the use of ML for diagnosis, classification, outcome prediction and antimicrobial management in ID. SOURCES: References for this review were identified through searches of MEDLINE/PubMed, EMBASE, Google Scholar, biorXiv, ACM Digital Library, arXiV and IEEE Xplore Digital Library up to July 2019. CONTENT: We found 60 unique ML-clinical decision support systems (ML-CDSS) aiming to assist ID clinicians. Overall, 37 (62%) focused on bacterial infections, 10 (17%) on viral infections, nine (15%) on tuberculosis and four (7%) on any kind of infection. Among them, 20 (33%) addressed the diagnosis of infection, 18 (30%) the prediction, early detection or stratification of sepsis, 13 (22%) the prediction of treatment response, four (7%) the prediction of antibiotic resistance, three (5%) the choice of antibiotic regimen and two (3%) the choice of a combination antiretroviral therapy. The ML-CDSS were developed for intensive care units (n = 24, 40%), ID consultation (n = 15, 25%), medical or surgical wards (n = 13, 20%), emergency department (n = 4, 7%), primary care (n = 3, 5%) and antimicrobial stewardship (n = 1, 2%). Fifty-three ML-CDSS (88%) were developed using data from high-income countries and seven (12%) with data from low- and middle-income countries (LMIC). The evaluation of ML-CDSS was limited to measures of performance (e.g. sensitivity, specificity) for 57 ML-CDSS (95%) and included data in clinical practice for three (5%).
Citation impact
- FWCI
- 27.95
- Percentile
- 100%
- References
- 132
Authors
8- NPNathan Peiffer‐SmadjaCorresponding
Université Paris Cité, Inserm, National Institute for Health Research, Imperial College London
- TMTimothy M. Rawson
Imperial College London, National Institute for Health Research
- RARaheelah Ahmad
National Institute for Health Research, Imperial College London
- ABAlbert Buchard
Babylon Health
- PGPantelis Georgiou
Imperial College London
Topics & keywords
- Antimicrobial stewardship
- Clinical decision support system
- Medicine
- MEDLINE
- Sepsis
- Regimen
- Decision support system
- Narrative review
Funding
- NINational Institute for Health Research Health Protection Research Unit
- NINational Institute for Health and Care Research
- ICImperial College London
- PHPublic Health England
- CRConseil Régional, Île-de-France
- ARAgence Régionale de Santé Île-de-France
- GCGlobal Challenges Research Fund
- EAEconomic and Social Research CouncilAward: ES/P008313/1