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首页> 外文期刊>Journal of Diabetes Science and Technology >Using an Online Disturbance Rejection and Anticipation System to Reduce Hyperglycemia in a Fully Closed-Loop Artificial Pancreas System
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Using an Online Disturbance Rejection and Anticipation System to Reduce Hyperglycemia in a Fully Closed-Loop Artificial Pancreas System

机译:使用在线扰动抑制和预期系统来减少完全闭环人工胰腺系统中的高血糖

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Introduction: Hyperglycemia following meals is a recurring challenge for people with type 1 diabetes, and even the most advanced available automated systems currently require manual input of carbohydrate amounts. To progress toward fully automated systems, we present a novel control system that can automatically deliver priming boluses and/or anticipate eating behaviors to improve postprandial full closed-loop control. Methods: A model predictive control (MPC) system was enhanced by an automated bolus system reacting to early glucose rise and/or a multistage MPC (MS-MPC) framework to anticipate historical patterns. Priming was achieved by detecting large glycemic disturbances, such as meals, and delivering a fraction of the patient’s total daily insulin (TDI) modulated by the disturbance’s likelihood (bolus priming system [BPS]). In the anticipatory module, glycemic disturbance profiles were generated from historical data using clustering to group days with similar behaviors; the probability of each cluster is then evaluated at every controller step and informs the MS-MPC framework to anticipate each profile. We tested four configurations: MPC, MPC + BPS, MS-MPC, and MS-MPC + BPS in simulation to contrast the effect of each controller module. Results: Postprandial time in range was highest for MS-MPC + BPS: 60.73 ± 25.39%, but improved with each module: MPC + BPS: 56.95±25.83 and MS-MPC: 54.83 ± 26.00%, compared with MPC: 51.79 ± 26.12%. Exposure to hypoglycemia was maintained for all controllers (time below 70 mg/dL <0.5%), and improvement came primarily from a reduction in postprandial time above range (MS-MPC + BPS: 39.10 ± 25.32%, MPC + BPS: 42.99 ± 25.81%, MS-MPC: 45.09 ± 25.96%, MPC: 48.18 ± 26.09%). Conclusions: The BPS and anticipatory disturbance profiles improved blood glucose control and were most efficient when combined.
机译:简介:膳食后的高血糖是1型糖尿病的人的经常性挑战,甚至最先进的可用自动化系统目前需要手动输入碳水化合物量。为了进入全自动系统,我们提出了一种新的控制系统,可以自动提供启动钢管和/或预期的饮食行为,以改善餐后全闭环控制。方法:通过对早期葡萄糖升高和/或多级MPC(MS-MPC)框架的自动推注系统增强了模型预测控制(MPC)系统,以预期历史模式。通过检测诸如膳食的大量血糖紊乱,并通过干扰的可能性(推注灌注系统[BPS])调节患者的总日常胰岛素(TDI)的一小部分来实现引发。在预期模块中,使用聚类与具有相似行为的群日的历史数据生成血糖干扰概况;然后在每个控制器步骤中评估每个群集的概率,并通知MS-MPC框架预测每个配置文件。我们测试了四种配置:MPC,MPC + BPS,MS-MPC和MS-MPC + BPS,以对比每个控制器模块的效果。结果:MS-MPC + BPS的后置持续时间最高:60.73±25.39%,但各模块的改善:MPC + BPS:56.95±25.83和MS-MPC:54.83±26.00%,与MPC:51.79±26.12 %。对所有控制器(低于70mg / dL <0.5%)保持低血糖暴露,并且改善主要是从低于范围(MS-MPC + BPS:39.10±25.32%,MPC + BPS:42.99± 25.81%,MS-MPC:45.09±25.96%,MPC:48.18±26.09%)。结论:BPS和预期扰动曲线改善血糖控制,并在组合时最有效。

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