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Machine Learning–Based Early Warning Systems for Clinical Deterioration: Systematic Scoping Review

BACKGROUND: Timely identification of patients at a high risk of clinical deterioration is key to prioritizing care, allocating resources effectively, and preventing adverse outcomes. Vital signs–based, aggregate-weighted early warning systems are commonly used to predict the risk of outcomes related...

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Autores principales: Muralitharan, Sankavi, Nelson, Walter, Di, Shuang, McGillion, Michael, Devereaux, PJ, Barr, Neil Grant, Petch, Jeremy
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7892287/
https://www.ncbi.nlm.nih.gov/pubmed/33538696
http://dx.doi.org/10.2196/25187
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author Muralitharan, Sankavi
Nelson, Walter
Di, Shuang
McGillion, Michael
Devereaux, PJ
Barr, Neil Grant
Petch, Jeremy
author_facet Muralitharan, Sankavi
Nelson, Walter
Di, Shuang
McGillion, Michael
Devereaux, PJ
Barr, Neil Grant
Petch, Jeremy
author_sort Muralitharan, Sankavi
collection PubMed
description BACKGROUND: Timely identification of patients at a high risk of clinical deterioration is key to prioritizing care, allocating resources effectively, and preventing adverse outcomes. Vital signs–based, aggregate-weighted early warning systems are commonly used to predict the risk of outcomes related to cardiorespiratory instability and sepsis, which are strong predictors of poor outcomes and mortality. Machine learning models, which can incorporate trends and capture relationships among parameters that aggregate-weighted models cannot, have recently been showing promising results. OBJECTIVE: This study aimed to identify, summarize, and evaluate the available research, current state of utility, and challenges with machine learning–based early warning systems using vital signs to predict the risk of physiological deterioration in acutely ill patients, across acute and ambulatory care settings. METHODS: PubMed, CINAHL, Cochrane Library, Web of Science, Embase, and Google Scholar were searched for peer-reviewed, original studies with keywords related to “vital signs,” “clinical deterioration,” and “machine learning.” Included studies used patient vital signs along with demographics and described a machine learning model for predicting an outcome in acute and ambulatory care settings. Data were extracted following PRISMA, TRIPOD, and Cochrane Collaboration guidelines. RESULTS: We identified 24 peer-reviewed studies from 417 articles for inclusion; 23 studies were retrospective, while 1 was prospective in nature. Care settings included general wards, intensive care units, emergency departments, step-down units, medical assessment units, postanesthetic wards, and home care. Machine learning models including logistic regression, tree-based methods, kernel-based methods, and neural networks were most commonly used to predict the risk of deterioration. The area under the curve for models ranged from 0.57 to 0.97. CONCLUSIONS: In studies that compared performance, reported results suggest that machine learning–based early warning systems can achieve greater accuracy than aggregate-weighted early warning systems but several areas for further research were identified. While these models have the potential to provide clinical decision support, there is a need for standardized outcome measures to allow for rigorous evaluation of performance across models. Further research needs to address the interpretability of model outputs by clinicians, clinical efficacy of these systems through prospective study design, and their potential impact in different clinical settings.
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spelling pubmed-78922872021-03-08 Machine Learning–Based Early Warning Systems for Clinical Deterioration: Systematic Scoping Review Muralitharan, Sankavi Nelson, Walter Di, Shuang McGillion, Michael Devereaux, PJ Barr, Neil Grant Petch, Jeremy J Med Internet Res Review BACKGROUND: Timely identification of patients at a high risk of clinical deterioration is key to prioritizing care, allocating resources effectively, and preventing adverse outcomes. Vital signs–based, aggregate-weighted early warning systems are commonly used to predict the risk of outcomes related to cardiorespiratory instability and sepsis, which are strong predictors of poor outcomes and mortality. Machine learning models, which can incorporate trends and capture relationships among parameters that aggregate-weighted models cannot, have recently been showing promising results. OBJECTIVE: This study aimed to identify, summarize, and evaluate the available research, current state of utility, and challenges with machine learning–based early warning systems using vital signs to predict the risk of physiological deterioration in acutely ill patients, across acute and ambulatory care settings. METHODS: PubMed, CINAHL, Cochrane Library, Web of Science, Embase, and Google Scholar were searched for peer-reviewed, original studies with keywords related to “vital signs,” “clinical deterioration,” and “machine learning.” Included studies used patient vital signs along with demographics and described a machine learning model for predicting an outcome in acute and ambulatory care settings. Data were extracted following PRISMA, TRIPOD, and Cochrane Collaboration guidelines. RESULTS: We identified 24 peer-reviewed studies from 417 articles for inclusion; 23 studies were retrospective, while 1 was prospective in nature. Care settings included general wards, intensive care units, emergency departments, step-down units, medical assessment units, postanesthetic wards, and home care. Machine learning models including logistic regression, tree-based methods, kernel-based methods, and neural networks were most commonly used to predict the risk of deterioration. The area under the curve for models ranged from 0.57 to 0.97. CONCLUSIONS: In studies that compared performance, reported results suggest that machine learning–based early warning systems can achieve greater accuracy than aggregate-weighted early warning systems but several areas for further research were identified. While these models have the potential to provide clinical decision support, there is a need for standardized outcome measures to allow for rigorous evaluation of performance across models. Further research needs to address the interpretability of model outputs by clinicians, clinical efficacy of these systems through prospective study design, and their potential impact in different clinical settings. JMIR Publications 2021-02-04 /pmc/articles/PMC7892287/ /pubmed/33538696 http://dx.doi.org/10.2196/25187 Text en ©Sankavi Muralitharan, Walter Nelson, Shuang Di, Michael McGillion, PJ Devereaux, Neil Grant Barr, Jeremy Petch. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 04.02.2021. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on http://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Review
Muralitharan, Sankavi
Nelson, Walter
Di, Shuang
McGillion, Michael
Devereaux, PJ
Barr, Neil Grant
Petch, Jeremy
Machine Learning–Based Early Warning Systems for Clinical Deterioration: Systematic Scoping Review
title Machine Learning–Based Early Warning Systems for Clinical Deterioration: Systematic Scoping Review
title_full Machine Learning–Based Early Warning Systems for Clinical Deterioration: Systematic Scoping Review
title_fullStr Machine Learning–Based Early Warning Systems for Clinical Deterioration: Systematic Scoping Review
title_full_unstemmed Machine Learning–Based Early Warning Systems for Clinical Deterioration: Systematic Scoping Review
title_short Machine Learning–Based Early Warning Systems for Clinical Deterioration: Systematic Scoping Review
title_sort machine learning–based early warning systems for clinical deterioration: systematic scoping review
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7892287/
https://www.ncbi.nlm.nih.gov/pubmed/33538696
http://dx.doi.org/10.2196/25187
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