Baysal Nihat, Cameron Fraser, Buckingham Bruce A, Wilson Darrell M, Chase H Peter, Maahs David M, Bequette B Wayne
Department of Chemical & Biological Engineering, Rensselaer Polytechnic Institute, Troy, NY, USA
Department of Chemical & Biological Engineering, Rensselaer Polytechnic Institute, Troy, NY, USA.
J Diabetes Sci Technol. 2014 Nov;8(6):1091-6. doi: 10.1177/1932296814553267. Epub 2014 Oct 14.
Continuous glucose monitors (CGMs) provide real-time interstitial glucose concentrations that are essential for automated treatment of individuals with type 1 diabetes. Miscalibration, noise spikes, dropouts, or pressure applied to the site (e.g., lying on the site while sleeping) can cause inaccurate glucose signals, which could lead to inappropriate insulin dosing decisions. These studies focus on the problem of pressure-induced sensor attenuations (PISAs) that occur overnight and can cause undesirable pump shut-offs in a predictive low glucose suspend system. The algorithm presented here uses real-time CGM readings without knowledge of meals, insulin doses, activity, sensor recalibrations, or fingerstick measurements. The real-time PISA detection technique was tested on outpatient "in-home" data from a predictive low-glucose suspend trial with over 1125 nights of data. A total of 178 sets were created by using different parameters for the PISA detection algorithm to illustrate its range of available performance. The tracings were reviewed via a web-based analysis tool by an engineer with an extensive expertise on analyzing clinical datasets and ~3% of the CGM readings were marked as PISA events which were used as the gold standard. It is shown that 88.34% of the PISAs were successfully detected by the algorithm, and the percentage of false detections could be reduced to 1.70% by altering the algorithm parameters. Use of the proposed PISA detection method can result in a significant decrease in undesirable pump suspensions overnight, and may lead to lower overnight mean glucose levels while still achieving a low risk of hypoglycemia.
连续血糖监测仪(CGM)可提供实时组织间液葡萄糖浓度,这对于1型糖尿病患者的自动化治疗至关重要。校准错误、噪声尖峰、信号丢失或施加于监测部位的压力(例如睡觉时压迫监测部位)可能导致血糖信号不准确,进而可能导致不恰当的胰岛素给药决策。这些研究聚焦于夜间发生的压力诱导型传感器衰减(PISA)问题,该问题可能导致预测性低血糖暂停系统中出现不良的泵关闭情况。本文提出的算法使用实时CGM读数,无需了解进餐情况、胰岛素剂量、活动情况、传感器重新校准或指尖血糖测量结果。实时PISA检测技术在一项预测性低血糖暂停试验的门诊“居家”数据上进行了测试,该试验包含超过1125个夜间的数据。通过对PISA检测算法使用不同参数创建了总共178组数据,以说明其可用性能范围。一名在分析临床数据集方面具有丰富专业知识的工程师通过基于网络的分析工具对这些记录进行了审查,约3%的CGM读数被标记为PISA事件,这些事件被用作金标准。结果表明,该算法成功检测出了88.34%的PISA事件,通过改变算法参数,误检率可降至1.70%。使用所提出的PISA检测方法可显著减少夜间不良的泵暂停情况,并可能导致夜间平均血糖水平降低,同时仍保持低血糖风险较低。