A comparison of machine learning models versus clinical evaluation for mortality prediction in patients with sepsis.

<h4>Introduction</h4>Patients with sepsis who present to an emergency department (ED) have highly variable underlying disease severity, and can be categorized from low to high risk. Development of a risk stratification tool for these patients is important for appropriate triage and early...

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Main Authors: William P T M van Doorn, Patricia M Stassen, Hella F Borggreve, Maaike J Schalkwijk, Judith Stoffers, Otto Bekers, Steven J R Meex
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0245157
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spelling doaj-be7f5909acd44faab57b0a0f14f8d15d2021-05-13T04:30:17ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01161e024515710.1371/journal.pone.0245157A comparison of machine learning models versus clinical evaluation for mortality prediction in patients with sepsis.William P T M van DoornPatricia M StassenHella F BorggreveMaaike J SchalkwijkJudith StoffersOtto BekersSteven J R Meex<h4>Introduction</h4>Patients with sepsis who present to an emergency department (ED) have highly variable underlying disease severity, and can be categorized from low to high risk. Development of a risk stratification tool for these patients is important for appropriate triage and early treatment. The aim of this study was to develop machine learning models predicting 31-day mortality in patients presenting to the ED with sepsis and to compare these to internal medicine physicians and clinical risk scores.<h4>Methods</h4>A single-center, retrospective cohort study was conducted amongst 1,344 emergency department patients fulfilling sepsis criteria. Laboratory and clinical data that was available in the first two hours of presentation from these patients were randomly partitioned into a development (n = 1,244) and validation dataset (n = 100). Machine learning models were trained and evaluated on the development dataset and compared to internal medicine physicians and risk scores in the independent validation dataset. The primary outcome was 31-day mortality.<h4>Results</h4>A number of 1,344 patients were included of whom 174 (13.0%) died. Machine learning models trained with laboratory or a combination of laboratory + clinical data achieved an area-under-the ROC curve of 0.82 (95% CI: 0.80-0.84) and 0.84 (95% CI: 0.81-0.87) for predicting 31-day mortality, respectively. In the validation set, models outperformed internal medicine physicians and clinical risk scores in sensitivity (92% vs. 72% vs. 78%;p<0.001,all comparisons) while retaining comparable specificity (78% vs. 74% vs. 72%;p>0.02). The model had higher diagnostic accuracy with an area-under-the-ROC curve of 0.85 (95%CI: 0.78-0.92) compared to abbMEDS (0.63,0.54-0.73), mREMS (0.63,0.54-0.72) and internal medicine physicians (0.74,0.65-0.82).<h4>Conclusion</h4>Machine learning models outperformed internal medicine physicians and clinical risk scores in predicting 31-day mortality. These models are a promising tool to aid in risk stratification of patients presenting to the ED with sepsis.https://doi.org/10.1371/journal.pone.0245157
collection DOAJ
language English
format Article
sources DOAJ
author William P T M van Doorn
Patricia M Stassen
Hella F Borggreve
Maaike J Schalkwijk
Judith Stoffers
Otto Bekers
Steven J R Meex
spellingShingle William P T M van Doorn
Patricia M Stassen
Hella F Borggreve
Maaike J Schalkwijk
Judith Stoffers
Otto Bekers
Steven J R Meex
A comparison of machine learning models versus clinical evaluation for mortality prediction in patients with sepsis.
PLoS ONE
author_facet William P T M van Doorn
Patricia M Stassen
Hella F Borggreve
Maaike J Schalkwijk
Judith Stoffers
Otto Bekers
Steven J R Meex
author_sort William P T M van Doorn
title A comparison of machine learning models versus clinical evaluation for mortality prediction in patients with sepsis.
title_short A comparison of machine learning models versus clinical evaluation for mortality prediction in patients with sepsis.
title_full A comparison of machine learning models versus clinical evaluation for mortality prediction in patients with sepsis.
title_fullStr A comparison of machine learning models versus clinical evaluation for mortality prediction in patients with sepsis.
title_full_unstemmed A comparison of machine learning models versus clinical evaluation for mortality prediction in patients with sepsis.
title_sort comparison of machine learning models versus clinical evaluation for mortality prediction in patients with sepsis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description <h4>Introduction</h4>Patients with sepsis who present to an emergency department (ED) have highly variable underlying disease severity, and can be categorized from low to high risk. Development of a risk stratification tool for these patients is important for appropriate triage and early treatment. The aim of this study was to develop machine learning models predicting 31-day mortality in patients presenting to the ED with sepsis and to compare these to internal medicine physicians and clinical risk scores.<h4>Methods</h4>A single-center, retrospective cohort study was conducted amongst 1,344 emergency department patients fulfilling sepsis criteria. Laboratory and clinical data that was available in the first two hours of presentation from these patients were randomly partitioned into a development (n = 1,244) and validation dataset (n = 100). Machine learning models were trained and evaluated on the development dataset and compared to internal medicine physicians and risk scores in the independent validation dataset. The primary outcome was 31-day mortality.<h4>Results</h4>A number of 1,344 patients were included of whom 174 (13.0%) died. Machine learning models trained with laboratory or a combination of laboratory + clinical data achieved an area-under-the ROC curve of 0.82 (95% CI: 0.80-0.84) and 0.84 (95% CI: 0.81-0.87) for predicting 31-day mortality, respectively. In the validation set, models outperformed internal medicine physicians and clinical risk scores in sensitivity (92% vs. 72% vs. 78%;p<0.001,all comparisons) while retaining comparable specificity (78% vs. 74% vs. 72%;p>0.02). The model had higher diagnostic accuracy with an area-under-the-ROC curve of 0.85 (95%CI: 0.78-0.92) compared to abbMEDS (0.63,0.54-0.73), mREMS (0.63,0.54-0.72) and internal medicine physicians (0.74,0.65-0.82).<h4>Conclusion</h4>Machine learning models outperformed internal medicine physicians and clinical risk scores in predicting 31-day mortality. These models are a promising tool to aid in risk stratification of patients presenting to the ED with sepsis.
url https://doi.org/10.1371/journal.pone.0245157
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