Regularized Machine Learning Models for Prediction of Metabolic Syndrome Using GCKR, APOA5, and BUD13 Gene Variants: Tehran Cardiometabolic Genetic Study.
Nadia AlipourAnoshirvan KazemnejadSajedeh MasjoudiFarzad EskandariAsiyeh Sadat ZahediMaryam Alsadat DaneshpourPublished in: Cell journal (2023)
Regularized machine learning models provided more accurate and parsimonious MetS classifying models. These high-performing diagnostic models can lay the foundation for clinical decision support tools that use genetic and demographical variables to locate individuals at high risk for MetS.