Ensemble machine learning prediction of hyperuricemia based on a prospective health checkup population
Yongsheng Zhang,
Li Zhang,
Haoyue Lv
et al.
Abstract:Objectives: An accurate prediction model for hyperuricemia (HUA) in adults remain unavailable. This study aimed to develop a stacking ensemble prediction model for HUA to identify high-risk groups and explore risk factors.Methods: A prospective health checkup cohort of 40899 subjects was examined and randomly divided into the training and validation sets with the ratio of 7:3. LASSO regression was employed to screen out important features and then the ROSE sampling was used to handle the imbalanced classes. An… Show more
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