Effective Treatment Recommendations for Type 2 Diabetes Management Using Reinforcement Learning: Treatment Recommendation Model Development and Validation
Journal of Medical Internet Research2021Vol. 23(7), pp. e27858–e27858
Citations Over TimeTop 11% of 2021 papers
Xingzhi Sun, Yong Mong Bee, Shao Wei Lam, Zhuo Liu, Wei Zhao, Sing Yi Chia, Hanis Abdul Kadir, Jun Wu, Boon Yew Ang, Nan Liu, Lei Zuo, Zhuoyang Xu, Tingting Zhao, Gang Hu, Guotong Xie
Abstract
Comprehensive management by combining knowledge-driven and data-driven models has good potential to help physicians improve the clinical outcomes of patients with T2DM; achieving good control on blood glucose, blood pressure, and blood lipids; and reducing the risk of diabetes complications in the long term.
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