Development and external validation of a dynamic risk score for early prediction of cardiogenic shock in cardiac intensive care units using machine learning

Author:

Hu Yuxuan1ORCID,Lui Albert2,Goldstein Mark3,Sudarshan Mukund3,Tinsay Andrea4,Tsui Cindy4,Maidman Samuel D4,Medamana John4,Jethani Neil23,Puli Aahlad3,Nguy Vuthy5,Aphinyanaphongs Yindalon5,Kiefer Nicholas1,Smilowitz Nathaniel R1,Horowitz James1,Ahuja Tania6,Fishman Glenn I1,Hochman Judith1,Katz Stuart1,Bernard Samuel1,Ranganath Rajesh357

Affiliation:

1. Leon. H. Charney Division of Cardiology, NYU Langone Health , 550 1st Avenue, New York, NY 10016 , USA

2. NYU Grossman School of Medicine , New York , USA

3. Courant Institute of Mathematics, New York University , New York , USA

4. Department of Medicine, NYU Langone Health , New York , USA

5. Department of Population Health, NYU Langone Health , New York , USA

6. Department of Pharmacy, NYU Langone Health , New York , USA

7. Center for Data Science, New York University , New York , USA

Abstract

Abstract Aims Myocardial infarction and heart failure are major cardiovascular diseases that affect millions of people in the USA with morbidity and mortality being highest among patients who develop cardiogenic shock. Early recognition of cardiogenic shock allows prompt implementation of treatment measures. Our objective is to develop a new dynamic risk score, called CShock, to improve early detection of cardiogenic shock in the cardiac intensive care unit (ICU). Methods and results We developed and externally validated a deep learning-based risk stratification tool, called CShock, for patients admitted into the cardiac ICU with acute decompensated heart failure and/or myocardial infarction to predict the onset of cardiogenic shock. We prepared a cardiac ICU dataset using the Medical Information Mart for Intensive Care-III database by annotating with physician-adjudicated outcomes. This dataset which consisted of 1500 patients with 204 having cardiogenic/mixed shock was then used to train CShock. The features used to train the model for CShock included patient demographics, cardiac ICU admission diagnoses, routinely measured laboratory values and vital signs, and relevant features manually extracted from echocardiogram and left heart catheterization reports. We externally validated the risk model on the New York University (NYU) Langone Health cardiac ICU database which was also annotated with physician-adjudicated outcomes. The external validation cohort consisted of 131 patients with 25 patients experiencing cardiogenic/mixed shock. CShock achieved an area under the receiver operator characteristic curve (AUROC) of 0.821 (95% CI 0.792–0.850). CShock was externally validated in the more contemporary NYU cohort and achieved an AUROC of 0.800 (95% CI 0.717–0.884), demonstrating its generalizability in other cardiac ICUs. Having an elevated heart rate is most predictive of cardiogenic shock development based on Shapley values. The other top 10 predictors are having an admission diagnosis of myocardial infarction with ST-segment elevation, having an admission diagnosis of acute decompensated heart failure, Braden Scale, Glasgow Coma Scale, blood urea nitrogen, systolic blood pressure, serum chloride, serum sodium, and arterial blood pH. Conclusion The novel CShock score has the potential to provide automated detection and early warning for cardiogenic shock and improve the outcomes for millions of patients who suffer from myocardial infarction and heart failure.

Publisher

Oxford University Press (OUP)

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