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Development of a machine learning–based sepsis prediction model for real-world clinical settings in South Korea: a single-center retrospective study

Authors
 Hwang, Hye Eun  ;  You, Jungmin  ;  Kim, Min Su  ;  Kim, Da Young  ;  Choi, Jun-Kyu  ;  Lee, Hyangkyu 
Citation
 Journal of Korean Biological Nursing Science, Vol.28(1) : 191-205, 2026-02 
Journal Title
Journal of Korean Biological Nursing Science
ISSN
 2383-6415 
Issue Date
2026-02
Keywords
Decision support systems, clinical ; Electronic health records ; Machine learning ; Sepsis
Abstract
Purpose: This study aimed to develop a predictive model for the early identification of patients at risk of sepsis, using routinely available clinical information and laboratory test results collected during the initial phase of patient care. Methods: This retrospective analysis included electronic medical records of 22,400 adult patients who presented with suspected infection to a tertiary care university hospital in Korea between January 2013 and May 2024. Patients were classified according to Systemic Inflammatory Response Syndrome (score ≥ 2) or Quick Sequential Organ Failure Assessment (score ≥ 2), in combination with sepsis-related International Classification of Diseases, 10th revision codes. Four different machine learning models were trained and validated using five-fold cross-validation. In addition, Shapley additive explanations analysis was performed to interpret the contribution and clinical relevance of key predictive variables. Results: Among the evaluated models, CatBoost demonstrated the strongest predictive performance. Notably, platelet distribution width, alveolar–arterial oxygen difference, procalcitonin, and the arterial/alveolar oxygen ratio consistently emerged as major predictors. Importantly, several variables that did not reach statistical significance in univariate analysis nevertheless contributed substantially to overall model performance, highlighting the importance of complex, multidimensional interactions among clinical factors. Conclusion: These findings indicate that a model based on simple, routinely collected clinical data can achieve high predictive accuracy and strong generalizability. Such a tool may support early clinical decision-making by multidisciplinary teams, including nurses, across diverse real-world care settings. Further prospective studies are warranted to validate its clinical utility and to assess its potential effects on patient outcomes. © 2026 Korean Society of Biological Nursing Science.
Files in This Item:
92328.pdf Download
DOI
10.7586/jkbns.25.073
Appears in Collections:
3. College of Nursing (간호대학) > Dept. of Nursing (간호학과) > 1. Journal Papers
Yonsei Authors
Lee, Hyang Kyu(이향규) ORCID logo https://orcid.org/0000-0002-0821-6020
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/211743
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