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Development and Assessment of an Interpretable Machine Learning Triage Tool for Estimating Mortality After Emergency Admissions
IMPORTANCE: Triage in the emergency department (ED) is a complex clinical judgment based on the tacit understanding of the patient’s likelihood of survival, availability of medical resources, and local practices. Although a scoring tool could be valuable in risk stratification, currently available s...
Autores principales: | , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
American Medical Association
2021
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8397930/ https://www.ncbi.nlm.nih.gov/pubmed/34448870 http://dx.doi.org/10.1001/jamanetworkopen.2021.18467 |
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author | Xie, Feng Ong, Marcus Eng Hock Liew, Johannes Nathaniel Min Hui Tan, Kenneth Boon Kiat Ho, Andrew Fu Wah Nadarajan, Gayathri Devi Low, Lian Leng Kwan, Yu Heng Goldstein, Benjamin Alan Matchar, David Bruce Chakraborty, Bibhas Liu, Nan |
author_facet | Xie, Feng Ong, Marcus Eng Hock Liew, Johannes Nathaniel Min Hui Tan, Kenneth Boon Kiat Ho, Andrew Fu Wah Nadarajan, Gayathri Devi Low, Lian Leng Kwan, Yu Heng Goldstein, Benjamin Alan Matchar, David Bruce Chakraborty, Bibhas Liu, Nan |
author_sort | Xie, Feng |
collection | PubMed |
description | IMPORTANCE: Triage in the emergency department (ED) is a complex clinical judgment based on the tacit understanding of the patient’s likelihood of survival, availability of medical resources, and local practices. Although a scoring tool could be valuable in risk stratification, currently available scores have demonstrated limitations. OBJECTIVES: To develop an interpretable machine learning tool based on a parsimonious list of variables available at ED triage; provide a simple, early, and accurate estimate of patients’ risk of death; and evaluate the tool’s predictive accuracy compared with several established clinical scores. DESIGN, SETTING, AND PARTICIPANTS: This single-site, retrospective cohort study assessed all ED patients between January 1, 2009, and December 31, 2016, who were subsequently admitted to a tertiary hospital in Singapore. The Score for Emergency Risk Prediction (SERP) tool was derived using a machine learning framework. To estimate mortality outcomes after emergency admissions, SERP was compared with several triage systems, including Patient Acuity Category Scale, Modified Early Warning Score, National Early Warning Score, Cardiac Arrest Risk Triage, Rapid Acute Physiology Score, and Rapid Emergency Medicine Score. The initial analyses were completed in October 2020, and additional analyses were conducted in May 2021. MAIN OUTCOMES AND MEASURES: Three SERP scores, namely SERP-2d, SERP-7d, and SERP-30d, were developed using the primary outcomes of interest of 2-, 7-, and 30-day mortality, respectively. Secondary outcomes included 3-day mortality and inpatient mortality. The SERP’s predictive power was measured using the area under the curve in the receiver operating characteristic analysis. RESULTS: The study included 224 666 ED episodes in the model training cohort (mean [SD] patient age, 63.60 [16.90] years; 113 426 [50.5%] female), 56 167 episodes in the validation cohort (mean [SD] patient age, 63.58 [16.87] years; 28 427 [50.6%] female), and 42 676 episodes in the testing cohort (mean [SD] patient age, 64.85 [16.80] years; 21 556 [50.5%] female). The mortality rates in the training cohort were 0.8% at 2 days, 2.2% at 7 days, and 5.9% at 30 days. In the testing cohort, the areas under the curve of SERP-30d were 0.821 (95% CI, 0.796-0.847) for 2-day mortality, 0.826 (95% CI, 0.811-0.841) for 7-day mortality, and 0.823 (95% CI, 0.814-0.832) for 30-day mortality and outperformed several benchmark scores. CONCLUSIONS AND RELEVANCE: In this retrospective cohort study, SERP had better prediction performance than existing triage scores while maintaining easy implementation and ease of ascertainment in the ED. It has the potential to be widely applied and validated in different circumstances and health care settings. |
format | Online Article Text |
id | pubmed-8397930 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | American Medical Association |
record_format | MEDLINE/PubMed |
spelling | pubmed-83979302021-09-14 Development and Assessment of an Interpretable Machine Learning Triage Tool for Estimating Mortality After Emergency Admissions Xie, Feng Ong, Marcus Eng Hock Liew, Johannes Nathaniel Min Hui Tan, Kenneth Boon Kiat Ho, Andrew Fu Wah Nadarajan, Gayathri Devi Low, Lian Leng Kwan, Yu Heng Goldstein, Benjamin Alan Matchar, David Bruce Chakraborty, Bibhas Liu, Nan JAMA Netw Open Original Investigation IMPORTANCE: Triage in the emergency department (ED) is a complex clinical judgment based on the tacit understanding of the patient’s likelihood of survival, availability of medical resources, and local practices. Although a scoring tool could be valuable in risk stratification, currently available scores have demonstrated limitations. OBJECTIVES: To develop an interpretable machine learning tool based on a parsimonious list of variables available at ED triage; provide a simple, early, and accurate estimate of patients’ risk of death; and evaluate the tool’s predictive accuracy compared with several established clinical scores. DESIGN, SETTING, AND PARTICIPANTS: This single-site, retrospective cohort study assessed all ED patients between January 1, 2009, and December 31, 2016, who were subsequently admitted to a tertiary hospital in Singapore. The Score for Emergency Risk Prediction (SERP) tool was derived using a machine learning framework. To estimate mortality outcomes after emergency admissions, SERP was compared with several triage systems, including Patient Acuity Category Scale, Modified Early Warning Score, National Early Warning Score, Cardiac Arrest Risk Triage, Rapid Acute Physiology Score, and Rapid Emergency Medicine Score. The initial analyses were completed in October 2020, and additional analyses were conducted in May 2021. MAIN OUTCOMES AND MEASURES: Three SERP scores, namely SERP-2d, SERP-7d, and SERP-30d, were developed using the primary outcomes of interest of 2-, 7-, and 30-day mortality, respectively. Secondary outcomes included 3-day mortality and inpatient mortality. The SERP’s predictive power was measured using the area under the curve in the receiver operating characteristic analysis. RESULTS: The study included 224 666 ED episodes in the model training cohort (mean [SD] patient age, 63.60 [16.90] years; 113 426 [50.5%] female), 56 167 episodes in the validation cohort (mean [SD] patient age, 63.58 [16.87] years; 28 427 [50.6%] female), and 42 676 episodes in the testing cohort (mean [SD] patient age, 64.85 [16.80] years; 21 556 [50.5%] female). The mortality rates in the training cohort were 0.8% at 2 days, 2.2% at 7 days, and 5.9% at 30 days. In the testing cohort, the areas under the curve of SERP-30d were 0.821 (95% CI, 0.796-0.847) for 2-day mortality, 0.826 (95% CI, 0.811-0.841) for 7-day mortality, and 0.823 (95% CI, 0.814-0.832) for 30-day mortality and outperformed several benchmark scores. CONCLUSIONS AND RELEVANCE: In this retrospective cohort study, SERP had better prediction performance than existing triage scores while maintaining easy implementation and ease of ascertainment in the ED. It has the potential to be widely applied and validated in different circumstances and health care settings. American Medical Association 2021-08-27 /pmc/articles/PMC8397930/ /pubmed/34448870 http://dx.doi.org/10.1001/jamanetworkopen.2021.18467 Text en Copyright 2021 Xie F et al. JAMA Network Open. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the CC-BY License. |
spellingShingle | Original Investigation Xie, Feng Ong, Marcus Eng Hock Liew, Johannes Nathaniel Min Hui Tan, Kenneth Boon Kiat Ho, Andrew Fu Wah Nadarajan, Gayathri Devi Low, Lian Leng Kwan, Yu Heng Goldstein, Benjamin Alan Matchar, David Bruce Chakraborty, Bibhas Liu, Nan Development and Assessment of an Interpretable Machine Learning Triage Tool for Estimating Mortality After Emergency Admissions |
title | Development and Assessment of an Interpretable Machine Learning Triage Tool for Estimating Mortality After Emergency Admissions |
title_full | Development and Assessment of an Interpretable Machine Learning Triage Tool for Estimating Mortality After Emergency Admissions |
title_fullStr | Development and Assessment of an Interpretable Machine Learning Triage Tool for Estimating Mortality After Emergency Admissions |
title_full_unstemmed | Development and Assessment of an Interpretable Machine Learning Triage Tool for Estimating Mortality After Emergency Admissions |
title_short | Development and Assessment of an Interpretable Machine Learning Triage Tool for Estimating Mortality After Emergency Admissions |
title_sort | development and assessment of an interpretable machine learning triage tool for estimating mortality after emergency admissions |
topic | Original Investigation |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8397930/ https://www.ncbi.nlm.nih.gov/pubmed/34448870 http://dx.doi.org/10.1001/jamanetworkopen.2021.18467 |
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