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A dynamic risk score for early prediction of cardiogenic shock using machine learning

Authors :
Hu, Yuxuan
Lui, Albert
Goldstein, Mark
Sudarshan, Mukund
Tinsay, Andrea
Tsui, Cindy
Maidman, Samuel
Medamana, John
Jethani, Neil
Puli, Aahlad
Nguy, Vuthy
Aphinyanaphongs, Yindalon
Kiefer, Nicholas
Smilowitz, Nathaniel
Horowitz, James
Ahuja, Tania
Fishman, Glenn I
Hochman, Judith
Katz, Stuart
Bernard, Samuel
Ranganath, Rajesh
Publication Year :
2023

Abstract

Myocardial infarction and heart failure are major cardiovascular diseases that affect millions of people in the US. The morbidity and mortality are highest among patients who develop cardiogenic shock. Early recognition of cardiogenic shock is critical. Prompt implementation of treatment measures can prevent the deleterious spiral of ischemia, low blood pressure, and reduced cardiac output due to cardiogenic shock. However, early identification of cardiogenic shock has been challenging due to human providers' inability to process the enormous amount of data in the cardiac intensive care unit (ICU) and lack of an effective risk stratification tool. We developed 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 onset of cardiogenic shock. To develop and validate CShock, we annotated cardiac ICU datasets with physician adjudicated outcomes. CShock achieved an area under the receiver operator characteristic curve (AUROC) of 0.820, which substantially outperformed CardShock (AUROC 0.519), a well-established risk score for cardiogenic shock prognosis. CShock was externally validated in an independent patient cohort and achieved an AUROC of 0.800, demonstrating its generalizability in other cardiac ICUs.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2303.12888
Document Type :
Working Paper