Department of Information Engineering, University of Padova, 35131 Padova, Italy.
Biosensors (Basel). 2018 Mar 13;8(1):24. doi: 10.3390/bios8010024.
Minimally invasive continuous glucose monitoring (CGM) sensors are wearable medical devices that provide real-time measurement of subcutaneous glucose concentration. This can be of great help in the daily management of diabetes. Most of the commercially available CGM devices have a wire-based sensor, usually placed in the subcutaneous tissue, which measures a "raw" current signal via a glucose-oxidase electrochemical reaction. This electrical signal needs to be translated in real-time to glucose concentration through a calibration process. For such a scope, the first commercialized CGM sensors implemented simple linear regression techniques to fit reference glucose concentration measurements periodically collected by fingerprick. On the one hand, these simple linear techniques required several calibrations per day, with the consequent patient's discomfort. On the other, only a limited accuracy was achieved. This stimulated researchers to propose, over the last decade, more sophisticated algorithms to calibrate CGM sensors, resorting to suitable signal processing, modelling, and machine-learning techniques. This review paper will first contextualize and describe the calibration problem and its implementation in the first generation of CGM sensors, and then present the most recently-proposed calibration algorithms, with a perspective on how these new techniques can influence future CGM products in terms of accuracy improvement and calibration reduction.
微创连续血糖监测 (CGM) 传感器是一种可穿戴医疗设备,可实时测量皮下血糖浓度。这对于糖尿病的日常管理有很大帮助。大多数市售的 CGM 设备都有一个基于线的传感器,通常放置在皮下组织中,通过葡萄糖氧化酶电化学反应测量“原始”电流信号。该电信号需要通过校准过程实时转换为血糖浓度。对于这种范围,第一个商业化的 CGM 传感器实现了简单的线性回归技术,以定期通过指尖采集的参考血糖浓度测量值进行拟合。一方面,这些简单的线性技术每天需要进行多次校准,导致患者不适。另一方面,只能达到有限的精度。这促使研究人员在过去十年中提出了更复杂的算法来校准 CGM 传感器,采用合适的信号处理、建模和机器学习技术。这篇综述文章首先将阐述和描述第一代 CGM 传感器中的校准问题及其实现,然后介绍最近提出的校准算法,并从这些新技术如何在提高准确性和减少校准方面影响未来的 CGM 产品的角度来看待它们。