Literature DB >> 33538696

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

Walter Nelson1, Shuang Di1,2, Sankavi Muralitharan1,3, Michael McGillion4,5, P J Devereaux5,6, Neil Grant Barr7, Jeremy Petch1,5,8,9.   

Abstract

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. ©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.

Entities:  

Keywords:  acute care; ambulatory care; cardiorespiratory instability; clinical deterioration; early warning systems; machine learning; remote patient monitoring; risk prediction; sepsis; vital signs

Year:  2021        PMID: 33538696      PMCID: PMC7892287          DOI: 10.2196/25187

Source DB:  PubMed          Journal:  J Med Internet Res        ISSN: 1438-8871            Impact factor:   5.428


  49 in total

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2.  Unintended Consequences of Machine Learning in Medicine.

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3.  The value of Modified Early Warning Score (MEWS) in surgical in-patients: a prospective observational study.

Authors:  J Gardner-Thorpe; N Love; J Wrightson; S Walsh; N Keeling
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Review 4.  Receiver-operating characteristic (ROC) plots: a fundamental evaluation tool in clinical medicine.

Authors:  M H Zweig; G Campbell
Journal:  Clin Chem       Date:  1993-04       Impact factor: 8.327

Review 5.  Statistical Modeling and Aggregate-Weighted Scoring Systems in Prediction of Mortality and ICU Transfer: A Systematic Review.

Authors:  Daniel T Linnen; Gabriel J Escobar; Xiao Hu; Elizabeth Scruth; Vincent Liu; Caroline Stephens
Journal:  J Hosp Med       Date:  2019-03       Impact factor: 2.960

6.  The ability of the National Early Warning Score (NEWS) to discriminate patients at risk of early cardiac arrest, unanticipated intensive care unit admission, and death.

Authors:  Gary B Smith; David R Prytherch; Paul Meredith; Paul E Schmidt; Peter I Featherstone
Journal:  Resuscitation       Date:  2013-01-04       Impact factor: 5.262

7.  The value of vital sign trends for detecting clinical deterioration on the wards.

Authors:  Matthew M Churpek; Richa Adhikari; Dana P Edelson
Journal:  Resuscitation       Date:  2016-02-16       Impact factor: 5.262

Review 8.  Predictive monitoring of mobile patients by combining clinical observations with data from wearable sensors.

Authors:  Lei Clifton; David A Clifton; Marco A F Pimentel; Peter J Watkinson; Lionel Tarassenko
Journal:  IEEE J Biomed Health Inform       Date:  2014-05       Impact factor: 5.772

9.  Big data in health care: using analytics to identify and manage high-risk and high-cost patients.

Authors:  David W Bates; Suchi Saria; Lucila Ohno-Machado; Anand Shah; Gabriel Escobar
Journal:  Health Aff (Millwood)       Date:  2014-07       Impact factor: 6.301

10.  Prediction of Sepsis in the Intensive Care Unit With Minimal Electronic Health Record Data: A Machine Learning Approach.

Authors:  Thomas Desautels; Jacob Calvert; Jana Hoffman; Melissa Jay; Yaniv Kerem; Lisa Shieh; David Shimabukuro; Uli Chettipally; Mitchell D Feldman; Chris Barton; David J Wales; Ritankar Das
Journal:  JMIR Med Inform       Date:  2016-09-30
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  9 in total

1.  Machine Learning in Medical Emergencies: a Systematic Review and Analysis.

Authors:  Inés Robles Mendo; Gonçalo Marques; Isabel de la Torre Díez; Miguel López-Coronado; Francisco Martín-Rodríguez
Journal:  J Med Syst       Date:  2021-08-18       Impact factor: 4.460

2.  User interface approaches implemented with automated patient deterioration surveillance tools: protocol for a scoping review.

Authors:  Yik-Ki Jacob Wan; Guilherme Del Fiol; Mary M McFarland; Melanie C Wright
Journal:  BMJ Open       Date:  2022-01-13       Impact factor: 2.692

3.  Factors Influencing Clinician Trust in Predictive Clinical Decision Support Systems for In-Hospital Deterioration: Qualitative Descriptive Study.

Authors:  Jessica M Schwartz; Maureen George; Sarah Collins Rossetti; Patricia C Dykes; Simon R Minshall; Eugene Lucas; Kenrick D Cato
Journal:  JMIR Hum Factors       Date:  2022-05-12

4.  Predicting Sepsis Mortality in a Population-Based National Database: Machine Learning Approach.

Authors:  James Yeongjun Park; Tzu-Chun Hsu; Jiun-Ruey Hu; Chun-Yuan Chen; Wan-Ting Hsu; Matthew Lee; Joshua Ho; Chien-Chang Lee
Journal:  J Med Internet Res       Date:  2022-04-13       Impact factor: 7.076

5.  Explainable machine learning for real-time deterioration alert prediction to guide pre-emptive treatment.

Authors:  Aida Brankovic; Hamed Hassanzadeh; Norm Good; Kay Mann; Sankalp Khanna; Ahmad Abdel-Hafez; David Cook
Journal:  Sci Rep       Date:  2022-07-11       Impact factor: 4.996

6.  Dynamic early warning scores for predicting clinical deterioration in patients with respiratory disease.

Authors:  Sherif Gonem; Adam Taylor; Grazziela Figueredo; Sarah Forster; Philip Quinlan; Jonathan M Garibaldi; Tricia M McKeever; Dominick Shaw
Journal:  Respir Res       Date:  2022-08-11

7.  Assessing the Usability of a Novel Wearable Remote Patient Monitoring Device for the Early Detection of In-Hospital Patient Deterioration: Observational Study.

Authors:  Edward Itelman; Gadi Shlomai; Avshalom Leibowitz; Shiri Weinstein; Maya Yakir; Idan Tamir; Michal Sagiv; Aia Muhsen; Maxim Perelman; Daniella Kant; Eyal Zilber; Gad Segal
Journal:  JMIR Form Res       Date:  2022-06-09

Review 8.  Artificial intelligence and its impact on the domains of universal health coverage, health emergencies and health promotion: An overview of systematic reviews.

Authors:  Antonio Martinez-Millana; Aida Saez-Saez; Roberto Tornero-Costa; Natasha Azzopardi-Muscat; Vicente Traver; David Novillo-Ortiz
Journal:  Int J Med Inform       Date:  2022-08-17       Impact factor: 4.730

9.  Machine Learning and Antibiotic Management.

Authors:  Riccardo Maviglia; Teresa Michi; Davide Passaro; Valeria Raggi; Maria Grazia Bocci; Edoardo Piervincenzi; Giovanna Mercurio; Monica Lucente; Rita Murri
Journal:  Antibiotics (Basel)       Date:  2022-02-24
  9 in total

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