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首页> 外文期刊>Diabetes technology & therapeutics >Toward Calibration-Free Continuous Glucose Monitoring Sensors: Bayesian Calibration Approach Applied to Next-Generation Dexcom Technology
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Toward Calibration-Free Continuous Glucose Monitoring Sensors: Bayesian Calibration Approach Applied to Next-Generation Dexcom Technology

机译:朝着无抗校准连续葡萄糖监测传感器:贝叶斯校准方法适用于下一代DEXCOM技术

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Background: Continuous glucose monitoring (CGM) sensors need to be calibrated twice/day by using self-monitoring of blood glucose (SMBG) samples. Recently, to reduce the calibration frequency, we developed an online calibration algorithm based on a multiple-day model of sensor time variability and Bayesian parameter estimation. When applied to Dexcom G4 Platinum (DG4P) sensor data, the algorithm allowed the frequency of calibrations to be reduced to one-every-four-days without significant worsening of sensor accuracy. The aim of this study is to assess the same methodology on raw CGM data acquired by a next-generation Dexcom CGM sensor prototype and compare the results with that obtained on DG4P. Methods: The database consists of 55 diabetic subjects monitored for 10 days by a next-generation Dexcom CGM sensor prototype. The new calibration algorithm is assessed, retrospectively, by simulating an online procedure using progressively fewer SMBG samples until zero. Accuracy is evaluated with mean absolute relative differences (MARD) between blood glucose versus CGM values. Results: The one-per-day and one-every-two-days calibration scenarios in the next-generation CGM data have an accuracy of 8.5% MARD (vs. 11.59% of DG4P) and 8.4% MARD (vs. 11.63% of DG4P), respectively. Accuracy slightly worsens to 9.2% (vs. 11.62% of DG4P) when calibrations are reduced to one-every-four-days. The calibration-free scenario results in 9.3% MARD (vs. 12.97% of DG4P). Conclusions: In next-generation Dexcom CGM sensor data, the use of an online calibration algorithm based on a multiple-day model of sensor time variability and Bayesian parameter estimation aids in the shift toward a calibration-free scenario with even better results than those obtained in present-generation sensors.
机译:背景:通过使用血糖(SMBG)样品的自我监测,连续葡萄糖监测(CGM)传感器需要校准两次/天。最近,为了降低校准频率,我们开发了一种基于传感器时间变异性和贝叶斯参数估计的多天模型的在线校准算法。当应用于DEXCOM G4铂(DG4P)传感器数据时,该算法允许校准的频率降低到每四天,而不会显着恶化传感器精度。本研究的目的是评估由下一代DEXCOM CGM传感器原型获取的原始CGM数据的相同方法,并将结果与​​在DG4P上获得的结果进行比较。方法:数据库由下一代DEXCOM CGM传感器原型由55个糖尿病受试者组成。回顾性地,通过模拟使用逐步更少的SMBG样本的在线程序来评估新的校准算法,直到零。血糖与CGM值之间的平均绝对相对差异(MARD)评估精度。结果:下一代CGM数据中的每日单日和一次校准场景具有8.5%的墨程(VS.11.59%的DG4P)和8.4%墨程(与11.63%)的准确度分别为DG4P)。当校准减少到每四天校准时,精度略微恶化至9.2%(VS.11.62%的DG4P)。无需校准方案导致9.3%的墨程(与12.97%的DG4P)。结论:在下一代DEXCOM CGM传感器数据中,在线校准算法的使用基于传感器时间变异性的多天模型和贝叶斯参数估计的助手朝向校准场景的转变,甚至比获得的结果更好在现代传感器中。

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