IEEE Trans Biomed Eng. 2018 Mar;65(3):587-595. doi: 10.1109/TBME.2017.2706974. Epub 2017 May 23.
In most continuous glucose monitoring (CGM) devices used for diabetes management, the electrical signal measured by the sensor is transformed to glucose concentration by a calibration function whose parameters are estimated using self-monitoring of blood glucose (SMBG) samples. The calibration function is usually a linear model approximating the nonlinear relationship between electrical signal and glucose concentration in certain time intervals. Thus, CGM devices require frequent calibrations, usually twice a day. The aim here is to develop a new method able to reduce the frequency of calibrations.
The algorithm is based on a multiple-day model of sensor time-variability with second-order statistical priors on its unknown parameters. In an online setting, these parameters are numerically determined by the Bayesian estimation exploiting SMBG sparsely collected by the patient. The method is assessed retrospectively on 108 CGM signals acquired for 7 days by the Dexcom G4 Platinum sensor, testing progressively less-calibration scenarios.
Despite the reduction of calibration frequency (on average from 2/day to 0.25/day), the method shows a statistically significant accuracy improvement compared to manufacturer calibration, e.g., mean absolute relative difference when compared to a laboratory reference decreases from 12.83% to 11.62% (p-value of 0.006).
The methodology maintains (sometimes improves) CGM sensor accuracy compared to that of the original manufacturer, while reducing the frequency of calibrations.
Reducing the need of calibrations facilitates the adoption of CGM technology both in terms of ease of use and cost, an obvious prerequisite for its use as replacement of traditional SMBG devices.
在大多数用于糖尿病管理的连续血糖监测(CGM)设备中,传感器测量的电信号通过校准函数转换为血糖浓度,校准函数的参数是使用自我血糖监测(SMBG)样本估计的。校准函数通常是一个线性模型,用于近似电信号和血糖浓度在特定时间间隔内的非线性关系。因此,CGM 设备需要频繁校准,通常每天两次。本研究旨在开发一种能够降低校准频率的新方法。
该算法基于传感器时变的多日模型,其未知参数具有二阶统计先验。在在线设置中,这些参数通过患者稀疏采集的 SMBG 进行贝叶斯估计的数值确定。该方法通过回顾性评估 Dexcom G4 Platinum 传感器采集的 108 个为期 7 天的 CGM 信号,逐步测试较少校准的情况。
尽管校准频率降低(平均从每天 2 次降低至每天 0.25 次),但与制造商校准相比,该方法显示出统计学上显著的准确性提高,例如,与实验室参考值相比的平均绝对相对差异从 12.83%降低至 11.62%(p 值为 0.006)。
该方法在降低校准频率的同时,保持(有时会提高)CGM 传感器的准确性,优于原始制造商的准确性。
减少校准的需求可以提高 CGM 技术的易用性和成本效益,这是替代传统 SMBG 设备的明显前提条件。