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Employing feature engineering strategies to improve the performance of machine learning algorithms on echocardiogram dataset.

Huang-Nan HuangHong-Ming ChenWei-Wen LinChau-Jian HuangYung-Cheng ChenYu-Huei WangChao-Tung Yang
Published in: Digital health (2023)
This paper emphasizes feature engineering, specifically on the cleaning and analysis of missing values in the raw dataset of echocardiography and the identification of important critical features in the raw dataset. The Azure platform is used to predict patients with a history of heart disease (individuals who have been under surveillance in the past three years and those who haven't). Through data scrubbing and preprocessing methods in feature engineering, the model can more accurately predict the future occurrence of heart disease in patients.
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