Machine learning prediction of in-hospital mortality and external validation in patients with cardiogenic shock: the RESCUE score

  • Ji Hyun Cha
  • , Ki Hong Choi
  • , Chul Min Ahn
  • , Cheol Woong Yu
  • , Ik Hyun Park
  • , Woo Jin Jang
  • , Hyun Joong Kim
  • , Jang Whan Bae
  • , Sung Uk Kwon
  • , Hyun Jong Lee
  • , Wang Soo Lee
  • , Jin Ok Jeong
  • , Sang Don Park
  • , Taek Kyu Park
  • , Joo Myung Lee
  • , Young Bin Song
  • , Joo Yong Hahn
  • , Seung Hyuk Choi
  • , Hyeon Cheol Gwon
  • , Jeong Hoon Yang*
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Introduction and objectives: Despite advances in mechanical circulatory support, mortality rates in cardiogenic shock (CS) remain high. A reliable risk stratification system could serve as a valuable guide in the clinical management of patients with CS. This study aimed to develop and externally validate a risk prediction model for in-hospital mortality in CS patients using machine learning (ML) algorithms. Methods: Data from 1247 patients with all-cause CS in the RESCUE registry (January 2014-December 2018) were analyzed. Key predictive variables were identified using 4 ML algorithms. A risk prediction model, the RESCUE score, was developed using logistic regression based on the selected variables. Internal validation was conducted within the RESCUE registry, and external validation was performed using an independent CS registry of 750 patients. Results: The 4 ML models identified 7 predictors: age, vasoactive inotropic score, left ventricular ejection fraction, lactic acid level, in-hospital cardiac arrest at presentation, need for continuous renal replacement therapy, and mechanical ventilation. The RESCUE score demonstrated strong predictive performance, with an AUC of 0.86 (95%CI, 0.83-0.88) for in-hospital mortality. Ten-fold internal cross-validation yielded an AUC of 0.86 (95%CI, 0.77-0.95). External validation showed an AUC of 0.80 (95%CI, 0.76-0.84). Conclusions: Our ML-based risk-scoring system, the RESCUE score, demonstrated excellent predictive performance for in-hospital mortality in all patients with CS, regardless of cause. The system could be a useful and reliable tool to estimate risk stratification of CS in everyday clinical practice. Clinical trial registration: NCT02985008.

Original languageEnglish
Pages (from-to)707-716
Number of pages10
JournalRevista Espanola de Cardiologia
Volume78
Issue number8
DOIs
Publication statusPublished - 2025 Aug

Bibliographical note

Publisher Copyright:
© 2025 Sociedad Española de Cardiología

Keywords

  • Cardiogenic shock
  • Machine learning
  • Prognosis
  • Risk stratification

ASJC Scopus subject areas

  • Cardiology and Cardiovascular Medicine

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