Developed intelligent technologies are become play a promising role in providing better decision-making and improving the medical services provided to the patients. A risk prediction task for short-term is big challenge task; however, it is a great importance for recommendation systems in health care field to provide patients with accurate and reliable recommendations. In this work, clustering method and least square support vector machine are used for prediction a short-term disease risk prediction. The clustering similar method is based on euclidean distance which used to identify the similar sliding windows. The proposed model is trained by using the slide windows samples. Finally, the appropriate recommendations are generated for heart diseases patients who need to take a medical test or not for following day using least square support vector machine. A real dataset which collected from heart diseases patient is used for evaluation. The proposed method yields a good results related by the recommendations accuracy generated to chronicle heart patients and reduce the risk of incorrect recommendations.
CITATION STYLE
Lafta, R. L., Al-Musaylh, M. S., & Shallal, Q. M. (2022). Clustering similar time series data for the prediction the patients with heart disease. Indonesian Journal of Electrical Engineering and Computer Science, 26(2), 947–954. https://doi.org/10.11591/ijeecs.v26.i2.pp947-954
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