Author:
Yu Jae Yong,Kim Doyeop,Yoon Sunyoung,Kim Taerim,Heo SeJin,Chang Hansol,Han Gab Soo,Jeong Kyung Won,Park Rae Woong,Gwon Jun Myung,Xie Feng,Ong Marcus Eng Hock,Ng Yih Yng,Joo Hyung Joon,Cha Won Chul
Abstract
AbstractEmergency departments (ED) are complex, triage is a main task in the ED to prioritize patient with limited medical resources who need them most. Machine learning (ML) based ED triage tool, Score for Emergency Risk Prediction (SERP), was previously developed using an interpretable ML framework with single center. We aimed to develop SERP with 3 Korean multicenter cohorts based on common data model (CDM) without data sharing and compare performance with inter-hospital validation design. This retrospective cohort study included all adult emergency visit patients of 3 hospitals in Korea from 2016 to 2017. We adopted CDM for the standardized multicenter research. The outcome of interest was 2-day mortality after the patients’ ED visit. We developed each hospital SERP using interpretable ML framework and validated inter-hospital wisely. We accessed the performance of each hospital’s score based on some metrics considering data imbalance strategy. The study population for each hospital included 87,670, 83,363 and 54,423 ED visits from 2016 to 2017. The 2-day mortality rate were 0.51%, 0.56% and 0.65%. Validation results showed accurate for inter hospital validation which has at least AUROC of 0.899 (0.858–0.940). We developed multicenter based Interpretable ML model using CDM for 2-day mortality prediction and executed Inter-hospital external validation which showed enough high accuracy.
Funder
Korea Health Technology R&D Project through the Korea Health Industry Development Institute
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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