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提高皮下葡萄糖传感器的准确性:基于实时反卷积的方法。

Enhancing the accuracy of subcutaneous glucose sensors: a real-time deconvolution-based approach.

机构信息

Department of Information Engineering, University of Padova, Padova 35137, Italy.

出版信息

IEEE Trans Biomed Eng. 2012 Jun;59(6):1658-69. doi: 10.1109/TBME.2012.2191782. Epub 2012 Mar 23.

DOI:10.1109/TBME.2012.2191782
PMID:22481799
Abstract

Minimally invasive continuous glucose monitoring (CGM) sensors can greatly help diabetes management. Most of these sensors consist of a needle electrode, placed in the subcutaneous tissue, which measures an electrical current exploiting the glucose-oxidase principle. This current is then transformed to glucose levels after calibrating the sensor on the basis of one, or more, self-monitoring blood glucose (SMBG) samples. In this study, we design and test a real-time signal-enhancement module that, cascaded to the CGM device, improves the quality of its output by a proper postprocessing of the CGM signal. In fact, CGM sensors measure glucose in the interstitium rather than in the blood compartment. We show that this distortion can be compensated by means of a regularized deconvolution procedure relying on a linear regression model that can be updated whenever a pair of suitably sampled SMBG references is collected. Tests performed both on simulated and real data demonstrate a significant accuracy improvement of the CGM signal. Simulation studies also demonstrate the robustness of the method against departures from nominal conditions, such as temporal misplacement of the SMBG samples and uncertainty in the blood-to-interstitium glucose kinetic model. Thanks to its online capabilities, the proposed signal-enhancement algorithm can be used to improve the performance of CGM-based real-time systems such as the hypo/hyper glycemic alert generators or the artificial pancreas.

摘要

微创连续血糖监测 (CGM) 传感器可以极大地帮助糖尿病管理。这些传感器大多数由一个置于皮下组织的针状电极组成,该电极利用葡萄糖氧化酶原理测量电流。然后,通过对传感器进行一次或多次自我监测血糖 (SMBG) 样本的校准,将该电流转换为血糖水平。在这项研究中,我们设计并测试了一个实时信号增强模块,该模块与 CGM 设备级联,通过对 CGM 信号进行适当的后处理来提高其输出质量。事实上,CGM 传感器测量的是间质而非血液中的葡萄糖。我们表明,通过依赖于可以在收集到一对适当采样的 SMBG 参考值时进行更新的线性回归模型的正则化反卷积过程,可以补偿这种失真。在模拟和真实数据上进行的测试都证明了 CGM 信号的显著准确性提高。仿真研究还证明了该方法对偏离标称条件(例如 SMBG 样本的时间错位和血液到间质葡萄糖动力学模型的不确定性)的稳健性。由于其在线能力,所提出的信号增强算法可用于提高基于 CGM 的实时系统的性能,例如低血糖/高血糖警报发生器或人工胰腺。

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