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An Automatic Denoising Method with Estimation of Noise Level and Detection of Noise Variability in Continuous Glucose Monitoring

机译:一种自动去噪方法,估计噪声水平和连续葡萄糖监测中噪声变异性的检测

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Although continuous glucose monitoring (CGM) devices have been the crucial part of the artificial pancreas, their success has been discounted by random measurement noise. The difficulty of denoising methods for CGM is that the filter parameters are hard to be determined to well reflect the real noise level. Besides, the noise level may show both intraindividual and interindividual variability which thus requires that the filter parameters should be adjusted to follow the noise changes. In this paper, we proposed an automatic denoising method which covers two important components. On the one hand, the noise level can be estimated so that the filter parameters are determined properly. On the other hand, the variability of signal-to-noise ratio can be detected for self-adjustment of filter parameters. First, the noise level is evaluated using expectation maximization algorithm which can fix proper filter parameters for the current signals. Second, a confidence interval is defined by computing the power spectral density (PSD) of the CGM signals to identify the changes of noise level which can tell whether or not the parameters of Kalman filter (KF) should be adjusted. The above issues are investigated based on thirty in silico subjects. The proposed method can work well to identify the changes of noise level and determine proper filter parameters.
机译:虽然连续葡萄糖监测(CGM)器件是人工胰腺的关键部分,但它们的成功已被随机测量噪声折扣。用于CGM的去噪方法的难度是难以确定滤波器参数,以良好地反映真实噪声水平。此外,噪声水平可以显示IntrainDiverIveDual和InterDigisIdivial的可变性,因此要求应调整滤波器参数以遵循噪声变化。在本文中,我们提出了一种自动去噪方法,涵盖了两个重要组成部分。一方面,可以估计噪声水平,以便正确确定滤波器参数。另一方面,可以检测到噪声比的可变性以进行滤波器参数的自调节。首先,使用期望最大化算法评估噪声水平,其可以针对电流信号修复适当的滤波器参数。其次,通过计算CGM信号的功率谱密度(PSD)来定义置信区间,以识别可以判断卡尔曼滤波器(KF)参数的噪声电平的变化。基于三十种Silico受试者研究了上述问题。该方法可以很好地识别噪声水平的变化并确定适当的滤波器参数。

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