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Early Prediction of Cardiogenic Shock Using Machine Learning.
Chang, Yale; Antonescu, Corneliu; Ravindranath, Shreyas; Dong, Junzi; Lu, Mingyu; Vicario, Francesco; Wondrely, Lisa; Thompson, Pam; Swearingen, Dennis; Acharya, Deepak.
Afiliação
  • Chang Y; Philips Research North America, Cambridge, MA, United States.
  • Antonescu C; Division of Cardiovascular Disease, Banner Health, Tucson, AZ, United States.
  • Ravindranath S; University of Arizona College of Medicine, Phoenix, AZ, United States.
  • Dong J; Philips Research North America, Cambridge, MA, United States.
  • Lu M; Philips Research North America, Cambridge, MA, United States.
  • Vicario F; Department of Computer Science, University of Washington, Seattle, WA, United States.
  • Wondrely L; Philips Research North America, Cambridge, MA, United States.
  • Thompson P; Philips Research North America, Cambridge, MA, United States.
  • Swearingen D; Division of Cardiovascular Disease, Banner Health, Tucson, AZ, United States.
  • Acharya D; Division of Cardiovascular Disease, Banner Health, Tucson, AZ, United States.
Front Cardiovasc Med ; 9: 862424, 2022.
Article em En | MEDLINE | ID: mdl-35911549
ABSTRACT
Cardiogenic shock (CS) is a severe condition with in-hospital mortality of up to 50%. Patients who develop CS may have previous cardiac history, but that may not always be the case, adding to the challenges in optimally identifying and managing these patients. Patients may present to a medical facility with CS or develop CS while in the emergency department (ED), in a general inpatient ward (WARD) or in the critical care unit (CC). While different clinical pathways for management exist once CS is recognized, there are challenges in identifying the patients in a timely manner, in all settings, in a timeframe that will allow proper management. We therefore developed and evaluated retrospectively a machine learning model based on the XGBoost (XGB) algorithm which runs automatically on patient data from the electronic health record (EHR). The algorithm was trained on 8 years of de-identified data (from 2010 to 2017) collected from a large regional healthcare system. The input variables include demographics, vital signs, laboratory values, some orders, and specific pre-existing diagnoses. The model was designed to make predictions 2 h prior to the need of first CS intervention (inotrope, vasopressor, or mechanical circulatory support). The algorithm achieves an overall area under curve (AUC) of 0.87 (0.81 in CC, 0.84 in ED, 0.97 in WARD), which is considered useful for clinical use. The algorithm can be refined based on specific elements defining patient subpopulations, for example presence of acute myocardial infarction (AMI) or congestive heart failure (CHF), further increasing its precision when a patient has these conditions. The top-contributing risk factors learned by the model are consistent with existing clinical findings. Our conclusion is that a useful machine learning model can be used to predict the development of CS. This manuscript describes the main steps of the development process and our results.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article