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REINFORCEMENT LEARNING ALGORITHM FOR BLOOD GLUCOSE CONTROL IN DIABETIC PATIENTS

机译:糖尿病患者血糖控制的强化学习算法

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In this paper a reinforcement learning algorithm is applied to regulating the blood glucose level of Type Ⅰ diabetic patients using insulin pump. In this approach the agent learns from its exploration and experiences to selects its actions. In the current reinforcement learning algorithm, body weight, A1C level, and physical activity define the state of a diabetic patient. For the agent, insulin dose levels constitute the actions. There are five alternative actions for the agent: (1) raising the insulin infusion rate during 24 hours, (2) keeping it the same, (3) decreasing insulin infusion rate, (4) adjusting basal rate two times during 24 hours, and (5) adjusting basal rate three times during 24 hours. As a result of a patient's treatment, after each time step t, the reinforcement learning agent receives a numerical reward depending on the response of the patient's health condition. At each stage the reward is calculated as a function of the deviation of the A1C from its target value. Since reinforcement learning algorithm can select actions that improve patient condition by taking into account delayed effects it has tremendous potential to control blood glucose level in diabetic patients. This research will utilize ten years of clinical data obtained from a hospital.
机译:本文采用强化学习算法通过胰岛素泵调节Ⅰ型糖尿病患者的血糖水平。在这种方法中,代理从其探索和经验中学习以选择其行动。在当前的强化学习算法中,体重,A1C水平和体育活动定义了糖尿病患者的状态。对于药剂,胰岛素剂量水平构成作用。该药物有五种替代性作用:(1)在24小时内提高胰岛素输注速度;(2)保持相同;(3)降低胰岛素输注速度;(4)在24小时内两次调整基础剂量;以及(5)在24小时内三次调整基础速率。作为患者治疗的结果,在每个时间步骤t之后,强化学习代理会根据患者健康状况的响应获得数值奖励。在每个阶段,根据A1C与其目标值之间的偏差来计算奖励。由于强化学习算法可以通过考虑延迟效应来选择改善患者状况的动作,因此它具有控制糖尿病患者血糖水平的巨大潜力。这项研究将利用从医院获得的十年临床数据。

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