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使用强化学习算法应对人工胰腺的挑战。

The use of reinforcement learning algorithms to meet the challenges of an artificial pancreas.

机构信息

Fresenius Kabi Deutschland GmbH, Else-Kröner-Strasse 1, 61352 Bad Homburg, Germany.

出版信息

Expert Rev Med Devices. 2013 Sep;10(5):661-73. doi: 10.1586/17434440.2013.827515. Epub 2013 Aug 23.

DOI:10.1586/17434440.2013.827515
PMID:23972072
Abstract

Blood glucose control, for example, in diabetes mellitus or severe illness, requires strict adherence to a protocol of food, insulin administration and exercise personalized to each patient. An artificial pancreas for automated treatment could boost quality of glucose control and patients' independence. The components required for an artificial pancreas are: i) continuous glucose monitoring (CGM), ii) smart controllers and iii) insulin pumps delivering the optimal amount of insulin. In recent years, medical devices for CGM and insulin administration have undergone rapid progression and are now commercially available. Yet, clinically available devices still require regular patients' or caregivers' attention as they operate in open-loop control with frequent user intervention. Dosage-calculating algorithms are currently being studied in intensive care patients [1] , for short overnight control to supplement conventional insulin delivery [2] , and for short periods where patients rest and follow a prescribed food regime [3] . Fully automated algorithms that can respond to the varying activity levels seen in outpatients, with unpredictable and unreported food intake, and which provide the necessary personalized control for individuals is currently beyond the state-of-the-art. Here, we review and discuss reinforcement learning algorithms, controlling insulin in a closed-loop to provide individual insulin dosing regimens that are reactive to the immediate needs of the patient.

摘要

例如,在糖尿病或重病患者中,血糖控制需要严格遵循针对每个患者的食物、胰岛素给药和运动的个性化方案。用于自动治疗的人工胰腺可以提高血糖控制质量和患者的独立性。人工胰腺所需的组件包括:i)连续血糖监测(CGM),ii)智能控制器和 iii)胰岛素泵,以输送最佳剂量的胰岛素。近年来,CGM 和胰岛素给药的医疗设备已经取得了快速发展,现在已经商业化。然而,临床可用的设备仍然需要患者或护理人员的定期关注,因为它们以开环控制运行,需要频繁的用户干预。目前正在对重症监护患者中的剂量计算算法进行研究[1],用于短时间夜间控制以补充常规胰岛素输送[2],以及在患者休息并遵循规定饮食方案的短时间内[3]。能够响应门诊患者中不同活动水平的完全自动化算法,以及无法预测和报告的食物摄入,并为个人提供必要的个性化控制,目前还处于技术前沿之外。在这里,我们回顾和讨论强化学习算法,以闭环控制胰岛素,提供针对患者即时需求的个体胰岛素给药方案。

相似文献

1
The use of reinforcement learning algorithms to meet the challenges of an artificial pancreas.使用强化学习算法应对人工胰腺的挑战。
Expert Rev Med Devices. 2013 Sep;10(5):661-73. doi: 10.1586/17434440.2013.827515. Epub 2013 Aug 23.
2
Diabetes technology and treatments in the paediatric age group.儿科年龄组的糖尿病技术与治疗
Int J Clin Pract Suppl. 2011 Feb(170):76-82. doi: 10.1111/j.1742-1241.2010.02582.x.
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The artificial pancreas: current status and future prospects in the management of diabetes.人工胰腺:糖尿病管理中的现状和未来前景。
Ann N Y Acad Sci. 2014 Apr;1311:102-23. doi: 10.1111/nyas.12431.
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An artificial pancreas for automated blood glucose control in patients with Type 1 diabetes.用于1型糖尿病患者自动血糖控制的人工胰腺。
Ther Deliv. 2015;6(5):609-19. doi: 10.4155/tde.15.12.
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Who needs an artificial pancreas? (?).谁需要人工胰腺?(?)。
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Automatic learning algorithm for the MD-logic artificial pancreas system.MD-logic 人工胰腺系统的自动学习算法。
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Closing the loop.闭环
Int J Clin Pract Suppl. 2011 Feb(170):20-5. doi: 10.1111/j.1742-1241.2010.02575.x.
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Fully automated closed-loop insulin delivery versus semiautomated hybrid control in pediatric patients with type 1 diabetes using an artificial pancreas.使用人工胰腺对1型糖尿病儿科患者进行全自动闭环胰岛素输注与半自动混合控制的比较
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Safety auxiliary feedback element for the artificial pancreas in type 1 diabetes.1 型糖尿病人工胰腺的安全辅助反馈元件。
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