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Machine learning-based model for worsening heart failure risk in Chinese chronic heart failure patients.

Ziyi SunZihan WangZhangjun YunXiaoning SunJianguo LinXiaoxiao ZhangQingqing WangJinlong DuanLi HuangLin LiKuiwu Yao
Published in: ESC heart failure (2024)
This study identifies NT-proBNP, Cr, UA, Hb, and emotional area scores as crucial predictors of WHF in CHF patients. Among the nine ML algorithms assessed, the RF model showed the highest predictive accuracy. SHAP analysis further emphasized NT-proBNP, UA, and Cr as the most significant predictors. An online risk prediction tool based on the RF model was subsequently developed to enhance early and personalized WHF risk assessment in clinical settings.
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