Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data

Abstract Background Increased chloride in the context of intravenous fluid chloride load and serum chloride levels (hyperchloremia) have previously been associated with increased morbidity and mortality in select subpopulations of intensive care unit (ICU) patients (e.g patients with sepsis). Here,...

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Main Authors: Pete Yeh, Yiheng Pan, L. Nelson Sanchez-Pinto, Yuan Luo
Format: Article
Language:English
Published: BMC 2020-12-01
Series:BMC Medical Informatics and Decision Making
Subjects:
Online Access:https://doi.org/10.1186/s12911-020-01326-4
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spelling doaj-37cd966a22304d45a7f9447317be667a2020-12-20T12:35:34ZengBMCBMC Medical Informatics and Decision Making1472-69472020-12-0120S1411010.1186/s12911-020-01326-4Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record dataPete Yeh0Yiheng Pan1L. Nelson Sanchez-Pinto2Yuan Luo3Feinberg School of Medicine, Northwestern UniversityDepartment of Electrical Engineering and Computer Science, Northwestern UniversityDepartment of Pediatrics (Critical Care), Feinberg School of Medicine, Northwestern UniversityDepartment of Preventive Medicine (Health and Biomedical Informatics), Feinberg School of Medicine, Northwestern UniversityAbstract Background Increased chloride in the context of intravenous fluid chloride load and serum chloride levels (hyperchloremia) have previously been associated with increased morbidity and mortality in select subpopulations of intensive care unit (ICU) patients (e.g patients with sepsis). Here, we study the general ICU population of the Medical Information Mart for Intensive Care III (MIMIC-III) database to corroborate these associations, and propose a supervised learning model for the prediction of hyperchloremia in ICU patients. Methods We assessed hyperchloremia and chloride load and their associations with several outcomes (ICU mortality, new acute kidney injury [AKI] by day 7, and multiple organ dysfunction syndrome [MODS] on day 7) using regression analysis. Four predictive supervised learning classifiers were trained to predict hyperchloremia using features representative of clinical records from the first 24h of adult ICU stays. Results Hyperchloremia was shown to have an independent association with increased odds of ICU mortality, new AKI by day 7, and MODS on day 7. High chloride load was also associated with increased odds of ICU mortality. Our best performing supervised learning model predicted second-day hyperchloremia with an AUC of 0.76 and a number needed to alert (NNA) of 7—a clinically-actionable rate. Conclusions Our results support the use of predictive models to aid clinicians in monitoring for and preventing hyperchloremia in high-risk patients and offers an opportunity to improve patient outcomes.https://doi.org/10.1186/s12911-020-01326-4Biomedical informaticsDecision support systemsMachine learningPredictive models
collection DOAJ
language English
format Article
sources DOAJ
author Pete Yeh
Yiheng Pan
L. Nelson Sanchez-Pinto
Yuan Luo
spellingShingle Pete Yeh
Yiheng Pan
L. Nelson Sanchez-Pinto
Yuan Luo
Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data
BMC Medical Informatics and Decision Making
Biomedical informatics
Decision support systems
Machine learning
Predictive models
author_facet Pete Yeh
Yiheng Pan
L. Nelson Sanchez-Pinto
Yuan Luo
author_sort Pete Yeh
title Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data
title_short Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data
title_full Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data
title_fullStr Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data
title_full_unstemmed Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data
title_sort hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data
publisher BMC
series BMC Medical Informatics and Decision Making
issn 1472-6947
publishDate 2020-12-01
description Abstract Background Increased chloride in the context of intravenous fluid chloride load and serum chloride levels (hyperchloremia) have previously been associated with increased morbidity and mortality in select subpopulations of intensive care unit (ICU) patients (e.g patients with sepsis). Here, we study the general ICU population of the Medical Information Mart for Intensive Care III (MIMIC-III) database to corroborate these associations, and propose a supervised learning model for the prediction of hyperchloremia in ICU patients. Methods We assessed hyperchloremia and chloride load and their associations with several outcomes (ICU mortality, new acute kidney injury [AKI] by day 7, and multiple organ dysfunction syndrome [MODS] on day 7) using regression analysis. Four predictive supervised learning classifiers were trained to predict hyperchloremia using features representative of clinical records from the first 24h of adult ICU stays. Results Hyperchloremia was shown to have an independent association with increased odds of ICU mortality, new AKI by day 7, and MODS on day 7. High chloride load was also associated with increased odds of ICU mortality. Our best performing supervised learning model predicted second-day hyperchloremia with an AUC of 0.76 and a number needed to alert (NNA) of 7—a clinically-actionable rate. Conclusions Our results support the use of predictive models to aid clinicians in monitoring for and preventing hyperchloremia in high-risk patients and offers an opportunity to improve patient outcomes.
topic Biomedical informatics
Decision support systems
Machine learning
Predictive models
url https://doi.org/10.1186/s12911-020-01326-4
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