A hybrid machine learning approach for hypertension risk prediction (original) (raw)
Abstract
Hypertension is a primary or contributing cause for premature death in the entire world. As a matter of fact, there is a high prevalence and low control rates in low- and middle-income countries, such that the prevention and treatment of hypertension should remain a top priority in global health. In the recent years, the awareness, treatment, and control rates of hypertension patients in China have been significantly improved to 51.6%, 45.8%, and 16.8%, respectively. However, those rates are still far from a satisfactory level. Clinical studies suggest that for people in the pre-clinical stage of hypertension or having the risk of hypertension, the progression of the disease may be significanly reduced through a change in lifestyle, or by an effective drug therapy. In this paper, we address risk prediction for hypertension in the next five years, and put forward a model merging KNN and LightGBM. Our approach allows us to predict the hypertension risk for a specific individual using features such as the age of the subject and blood indicators. Results shows that our model is reliable and achieves accuracy and recall rate over 86% and 92%, respectively.
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Authors and Affiliations
- Education Center of Experiments and Innovations, Harbin Institute of Technology (ShenZhen), Shenzhen, 518055, China
Min Fang, Rui Xue & Ting Su - Huazhong University of Science and Technology Union Shenzhen Hospital (Nanshan Hospital), Shenzhen, 518051, China
Yingru Chen - Cybersecurity Program, St. Bonaventure University, New York, NY, 14778, USA
Huihui Wang - College of Computer Science and Engineering, Shenzhen University, Shenzhen, 518060, China
Nilesh Chakraborty & Yuyan Dai
Authors
- Min Fang
- Yingru Chen
- Rui Xue
- Huihui Wang
- Nilesh Chakraborty
- Ting Su
- Yuyan Dai
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Correspondence toMin Fang.
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Fang, M., Chen, Y., Xue, R. et al. A hybrid machine learning approach for hypertension risk prediction.Neural Comput & Applic 35, 14487–14497 (2023). https://doi.org/10.1007/s00521-021-06060-0
- Received: 06 December 2020
- Accepted: 19 April 2021
- Published: 20 May 2021
- Version of record: 20 May 2021
- Issue date: July 2023
- DOI: https://doi.org/10.1007/s00521-021-06060-0