1 Division of Pediatric Endocrinology, Barbara Davis Center , Aurora, Colorado.
2 Department of Chemical and Biomedical Engineering, Rensselaer Polytechnic Institute , Troy, New York.
Diabetes Technol Ther. 2018 May;20(5):335-343. doi: 10.1089/dia.2017.0424. Epub 2018 Apr 16.
Initial Food and Drug Administration-approved artificial pancreas (AP) systems will be hybrid closed-loop systems that require prandial meal announcements and will not eliminate the burden of premeal insulin dosing. Multiple model probabilistic predictive control (MMPPC) is a fully closed-loop system that uses probabilistic estimation of meals to allow for automated meal detection. In this study, we describe the safety and performance of the MMPPC system with announced and unannounced meals in a supervised hotel setting.
The Android phone-based AP system with remote monitoring was tested for 72 h in six adults and four adolescents across three clinical sites with daily exercise and meal challenges involving both three announced (manual bolus by patient) and six unannounced (no bolus by patient) meals. Safety criteria were predefined. Controller aggressiveness was adapted daily based on prior hypoglycemic events.
Mean 24-h continuous glucose monitor (CGM) was 157.4 ± 14.4 mg/dL, with 63.6 ± 9.2% of readings between 70 and 180 mg/dL, 2.9 ± 2.3% of readings <70 mg/dL, and 9.0 ± 3.9% of readings >250 mg/dL. Moderate hyperglycemia was relatively common with 24.6 ± 6.2% of readings between 180 and 250 mg/dL, primarily within 3 h after a meal. Overnight mean CGM was 139.6 ± 27.6 mg/dL, with 77.9 ± 16.4% between 70 and 180 mg/dL, 3.0 ± 4.5% <70 mg/dL, 17.1 ± 14.9% between 180 and 250 mg/dL, and 2.0 ± 4.5%> 250 mg/dL. Postprandial hyperglycemia was more common for unannounced meals compared with announced meals (4-h postmeal CGM 197.8 ± 44.1 vs. 140.6 ± 35.0 mg/dL; P < 0.001). No participants met safety stopping criteria.
MMPPC was safe in a supervised setting despite meal and exercise challenges. Further studies are needed in a less supervised environment.
最初获得美国食品和药物管理局批准的人工胰腺(AP)系统将是混合闭环系统,需要预告膳食,并不能消除餐前胰岛素给药的负担。基于概率预测的多模型预测控制(MMPPC)是一种完全闭环系统,它使用膳食的概率估计来实现自动膳食检测。在这项研究中,我们描述了在监督酒店环境中预告和未预告膳食情况下,MMPPC 系统的安全性和性能。
该基于 Android 手机的带远程监控的 AP 系统在三个临床中心的六名成年人和四名青少年中进行了 72 小时的测试,包括日常运动和膳食挑战,涉及三次预告(患者手动推注)和六次未预告(患者不推注)膳食。安全性标准是预先设定的。根据先前的低血糖事件,每天调整控制器的激进程度。
平均 24 小时连续血糖监测(CGM)为 157.4±14.4mg/dL,70-180mg/dL 读数占 63.6±9.2%,<70mg/dL 读数占 2.9±2.3%,>250mg/dL 读数占 9.0±3.9%。中度高血糖相对常见,180-250mg/dL 读数占 24.6±6.2%,主要发生在餐后 3 小时内。夜间平均 CGM 为 139.6±27.6mg/dL,70-180mg/dL 读数占 77.9±16.4%,<70mg/dL 读数占 3.0±4.5%,180-250mg/dL 读数占 17.1±14.9%,>250mg/dL 读数占 2.0±4.5%。与预告膳食相比,未预告膳食的餐后高血糖更为常见(餐后 4 小时 CGM 为 197.8±44.1 vs. 140.6±35.0mg/dL;P<0.001)。没有参与者符合安全停止标准。
尽管面临膳食和运动挑战,MMPPC 在监督环境中是安全的。需要在较少监督的环境中进行进一步研究。