Development and validation of an interpretable model for predicting sepsis mortality across care settings

Author:

Lee Young Seok,Han Seungbong,Lee Ye Eun,Cho Jaehwa,Choi Young Kyun,Yoon Sun-Young,Oh Dong Kyu,Lee Su Yeon,Park Mi Hyeon,Lim Chae-Man,Moon Jae Young, ,Hong Sang‑Bum,Hong Suk‑Kyung,Suh Gee Young,Jeon Kyeongman,Ko Ryoung‑Eun,Cho Young‑Jae,Lee Yeon Joo,Lim Sung Yoon,Park Sunghoon,Heo Jeongwon,Lee Jae‑myeong,Kim Kyung Chan,Chang Youjin,Lee Sang‑Min,Cho Woo Hyun,Kwak Sang Hyun,Lee Heung Bum,Ahn Jong‑Joon,Seong Gil Myeong,Lee Song I.,Park Tai Sun,Lee Su Hwan,Choi Eun Young,Kang Hyung Koo

Abstract

AbstractThere are numerous prognostic predictive models for evaluating mortality risk, but current scoring models might not fully cater to sepsis patients’ needs. This study developed and validated a new model for sepsis patients that is suitable for any care setting and accurately forecasts 28-day mortality. The derivation dataset, gathered from 20 hospitals between September 2019 and December 2021, contrasted with the validation dataset, collected from 15 hospitals from January 2022 to December 2022. In this study, 7436 patients were classified as members of the derivation dataset, and 2284 patients were classified as members of the validation dataset. The point system model emerged as the optimal model among the tested predictive models for foreseeing sepsis mortality. For community-acquired sepsis, the model’s performance was satisfactory (derivation dataset AUC: 0.779, 95% CI 0.765–0.792; validation dataset AUC: 0.787, 95% CI 0.765–0.810). Similarly, for hospital-acquired sepsis, it performed well (derivation dataset AUC: 0.768, 95% CI 0.748–0.788; validation dataset AUC: 0.729, 95% CI 0.687–0.770). The calculator, accessible at https://avonlea76.shinyapps.io/shiny_app_up/, is user-friendly and compatible. The new predictive model of sepsis mortality is user-friendly and satisfactorily forecasts 28-day mortality. Its versatility lies in its applicability to all patients, encompassing both community-acquired and hospital-acquired sepsis.

Funder

National Research Foundation of Korea

Korea Disease Control and Prevention Agency

Publisher

Springer Science and Business Media LLC

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