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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Deep Reinforcement Learning for Closed-Loop Blood Glucose Control
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Deep Reinforcement Learning for Closed-Loop Blood Glucose Control

机译:闭环血糖控制深度加固学习

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People with type 1 diabetes (T1D) lack the ability to produce the insulin their bodies need. As a result, they must continually make decisions about how much insulin to self-administer to adequately control their blood glucose levels. Longitudinal data streams captured from wearables, like continuous glucose monitors, can help these individuals manage their health, but currently the majority of the decision burden remains on the user. To relieve this burden, researchers are working on closed-loop solutions that combine a continuous glucose monitor and an insulin pump with a control algorithm in an ‘artificial pancreas.’ Such systems aim to estimate and deliver the appropriate amount of insulin. Here, we develop reinforcement learning (RL) techniques for automated blood glucose control. Through a series of experiments, we compare the performance of different deep RL approaches to non-RL approaches. We highlight the flexibility of RL approaches, demonstrating how they can adapt to new individuals with little additional data. On over 2.1 million hours of data from 30 simulated patients, our RL approach outperforms baseline control algorithms: leading to a decrease in median glycemic risk of nearly 50% from 8.34 to 4.24 and a decrease in total time hypoglycemic of 99.8%, from 4,610 days to 6. Moreover, these approaches are able to adapt to predictable meal times (decreasing average risk by an additional 24% as meals increase in predictability). This work demonstrates the potential of deep RL to help people with T1D manage their blood glucose levels without requiring expert knowledge. All of our code is publicly available, allowing for replication and extension.
机译:1型糖尿病(T1D)的人缺乏生产胰岛素的能力。因此,他们必须不断决定自我管理的胰岛素是多少,以充分控制血糖水平。从可穿戴物品捕获的纵向数据流,如连续葡萄糖监测器,可以帮助这些个人管理他们的健康,但目前大多数决策负担仍然存在于用户身上。为了减轻这种负担,研究人员正在研究闭环解决方案,将连续葡萄糖监测和胰岛素泵与“人工胰腺”中的控制算法相结合。'这种系统旨在估计和提供适当的胰岛素。在这里,我们开发用于自动血糖控制的强化学习(RL)技术。通过一系列实验,我们比较不同深入RL方法对非RL方法的性能。我们突出了RL方法的灵活性,展示了它们如何适应新人,几乎没有其他数据。在30多个模拟患者的数据超过210万小时的数据中,我们的RL方法优于基线控制算法:导致中位血糖风险降低近50%从8.34到4.24,从4,610天内降低了99.8%的下降血糖。此外,这些方法能够适应可预测的膳食时间(将平均风险降低额外24%,因为膳食增加可预测性)。这项工作展示了深度RL的潜力,以帮助T1D的人们管理血糖水平而不需要专家知识。我们所有的代码都是公开可用的,允许复制和扩展。

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