首页> 外文会议>IEEE International Workshop on Machine Learning for Signal Processing >CONTROLLING BLOOD GLUCOSE LEVELS IN PATIENTS WITH TYPE 1 DIABETES USING FITTED Q-ITERATIONS AND FUNCTIONAL FEATURES
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CONTROLLING BLOOD GLUCOSE LEVELS IN PATIENTS WITH TYPE 1 DIABETES USING FITTED Q-ITERATIONS AND FUNCTIONAL FEATURES

机译:使用拟合Q迭代和功能特征控制1型糖尿病患者的血糖水平

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Type 1 Diabetes is characterized by the lack of insulin-producing beta cells in the pancreas. The artificial pancreas promises to alleviate the burdens of self-management. While the physical components of the system - the continuous glucose monitor and insulin pump - have experienced rapid advances, a technological bottleneck remains in the control algorithm, which is responsible for translating data from the former into instructions for the latter. In this work, we propose to bring machine learning techniques to bear upon the challenges of blood glucose control. Specifically, we employ reinforcement learning to learn an optimal insulin policy. Learning is generalized using nonparametric regression with functional features, exploiting information contained in the shape of the glucose curve. Our algorithm is model-free, data-driven and personalized. In-silico simulations with T1D models demonstrate the potential of the proposed algorithm.
机译:1型糖尿病的特征在于胰腺中缺乏胰岛素的β细胞。人工胰腺有望减轻自我管理的负担。虽然系统的物理成分 - 连续葡萄糖监测器和胰岛素泵 - 经历了快速进步,但在控制算法中仍然存在技术瓶颈,这负责将来自前者的数据转换为后者的说明。在这项工作中,我们建议将机器学习技术带到血糖控制的挑战上。具体而言,我们采用加强学习来学习最佳的胰岛素政策。学习使用非参数回归与功能特征的广泛化,利用葡萄糖曲线形状的信息。我们的算法是无模型的,数据驱动和个性化。具有T1D模型的硅仿真展示了所提出的算法的潜力。

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