Multi-Modality Machine Learning Approach for Risk Stratification in Heart Failure with Left Ventricular Ejection Fraction ≤ 45%
ESC Heart Failure2020Vol. 7(6), pp. 3716–3725
Citations Over TimeTop 10% of 2020 papers
Gary Tse, Jiandong Zhou, Samuel Woo, Ching Ho Ko, Rachel Wing Chuen Lai, Tong Liu, Yingzhi Liu, Keith Sai Kit Leung, Andrew Li, Sharen Lee, Ka Hou Christien Li, Ishan Lakhani, Qingpeng Zhang
Abstract
Multi-modality assessment is important for risk stratification in HF. A machine learning approach provides additional value for improving outcome prediction.
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