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Machine Learning-Based Explainable Automated Nonlinear Computation Scoring System for Health Score and an Application for Prediction of Perioperative Stroke: Retrospective Study

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Author(s)
Mi-Young OhHee-Soo KimYoung Mi JungHyung-Chul LeeSeung-Bo LeeSeung Mi Lee
Keimyung Author(s)
Lee, Seung Bo
Department
Dept. of Medical Information (의료정보학)
Journal Title
J Med Internet Res
Issued Date
2025
Volume
27
Keyword
machine learningexplainabilityscorecomputation scoring systemNonlinear computationapplicationperioperative strokeperioperativestrokeefficiencyML-based modelspatientnoncardiac surgerynoncardiacsurgeryeffectivenessrisk toolrisktoolreal-world data
Abstract
Background:
Machine learning (ML) has the potential to enhance performance by capturing nonlinear interactions. However, ML-based models have some limitations in terms of interpretability.

Objective:
This study aimed to develop and validate a more comprehensible and efficient ML-based scoring system using SHapley Additive exPlanations (SHAP) values.

Methods:
We developed and validated the Explainable Automated nonlinear Computation scoring system for Health (EACH) framework score. We developed a CatBoost-based prediction model, identified key features, and automatically detected the top 5 steepest slope change points based on SHAP plots. Subsequently, we developed a scoring system (EACH) and normalized the score. Finally, the EACH score was used to predict perioperative stroke. We developed the EACH score using data from the Seoul National University Hospital cohort and validated it using data from the Boramae Medical Center, which was geographically and temporally different from the development set.

Results:
When applied for perioperative stroke prediction among 38,737 patients undergoing noncardiac surgery, the EACH score achieved an area under the curve (AUC) of 0.829 (95% CI 0.753-0.892). In the external validation, the EACH score demonstrated superior predictive performance with an AUC of 0.784 (95% CI 0.694-0.871) compared with a traditional score (AUC=0.528, 95% CI 0.457-0.619) and another ML-based scoring generator (AUC=0.564, 95% CI 0.516-0.612).

Conclusions:
The EACH score is a more precise, explainable ML-based risk tool, proven effective in real-world data. The EACH score outperformed traditional scoring system and other prediction models based on different ML techniques in predicting perioperative stroke.
Keimyung Author(s)(Kor)
이승보
Publisher
School of Medicine (의과대학)
Type
Article
ISSN
1439-4456
Source
https://www.jmir.org/2025/1/e58021
DOI
10.2196/58021
URI
https://kumel.medlib.dsmc.or.kr/handle/2015.oak/46253
Appears in Collections:
1. School of Medicine (의과대학) > Dept. of Medical Information (의료정보학)
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