학술논문

Electronic health record machine learning model predicts trauma inpatient mortality in real time: A validation study
Document Type
article
Source
Journal of Trauma and Acute Care Surgery. 92(1)
Subject
Patient Safety
Physical Injury - Accidents and Adverse Effects
Clinical Research
Detection
screening and diagnosis
4.2 Evaluation of markers and technologies
4.1 Discovery and preclinical testing of markers and technologies
Good Health and Well Being
Critical Care
Electronic Health Records
Female
Hospital Mortality
Humans
Injury Severity Score
Machine Learning
Male
Middle Aged
Predictive Value of Tests
Prognosis
Registries
Risk Assessment
United States
Wounds and Injuries
Machine learning
electronic health record
trauma
mortality
unplanned ICU admission
Cardiorespiratory Medicine and Haematology
Clinical Sciences
Nursing
Emergency & Critical Care Medicine
Language
Abstract
IntroductionPatient outcome prediction models are underused in clinical practice because of lack of integration with real-time patient data. The electronic health record (EHR) has the ability to use machine learning (ML) to develop predictive models. While an EHR ML model has been developed to predict clinical deterioration, it has yet to be validated for use in trauma. We hypothesized that the Epic Deterioration Index (EDI) would predict mortality and unplanned intensive care unit (ICU) admission in trauma patients.MethodsA retrospective analysis of a trauma registry was used to identify patients admitted to a level 1 trauma center for >24 hours from October 2019 to July 2020. We evaluated the performance of the EDI, which is constructed from 125 objective patient measures within the EHR, in predicting mortality and unplanned ICU admissions. We performed a 5 to 1 match on age because it is a major component of EDI, then examined the area under the receiver operating characteristic curve (AUROC), and benchmarked it against Injury Severity Score (ISS) and new injury severity score (NISS).ResultsThe study cohort consisted of 1,325 patients admitted with a mean age of 52.5 years and 91% following blunt injury. The in-hospital mortality rate was 2%, and unplanned ICU admission rate was 2.6%. In predicting mortality, the maximum EDI within 24 hours of admission had an AUROC of 0.98 compared with 0.89 of ISS and 0.91 of NISS. For unplanned ICU admission, the EDI slope within 24 hours of ICU admission had a modest performance with an AUROC of 0.66.ConclusionEpic Deterioration Index appears to perform strongly in predicting in-patient mortality similarly to ISS and NISS. In addition, it can be used to predict unplanned ICU admissions. This study helps validate the use of this real-time EHR ML-based tool, suggesting that EDI should be incorporated into the daily care of trauma patients.Level of evidencePrognostic, level III.