Combinatorial Use of Machine Learning and Logistic Regression for Predicting Carotid Plaque Risk Among 5.4 Million Adults With Fatty Liver Disease Receiving Health Check-Ups: Population-Based Cross-Sectional Study (Preprint)
Abstract:BACKGROUND
Carotid plaque can progress into stroke and myocardial infarction, etc., which are the leading causes of death globally. Evidence demonstrates that in patients with fatty liver disease, the incidence of carotid plaque increased significantly. However, unlike the high detection rate of fatty liver disease, screening for carotid plaque in the asymptomatic population is not yet prevalent due to cost-effectiveness reasons.
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