Zherebtsov Evgeny A, Zharkikh Elena V, Loktionova Yulia I, Zherebtsova Angelina I, Sidorov Victor V, Rafailov Edik U, Dunaev Andrey V
IEEE Trans Biomed Eng. 2023 Nov;70(11):3073-3081. doi: 10.1109/TBME.2023.3275654. Epub 2023 Oct 19.
This article presents clinical results of wireless portable dynamic light scattering sensors that implement laser Doppler flowmetry signal processing. It has been verified that the technology can detect microvascular changes associated with diabetes and ageing in volunteers. Studies were conducted primarily on wrist skin. Wavelet continuous spectrum calculation was used to analyse the obtained time series of blood perfusion recordings with respect to the main physiological frequency ranges of vasomotions. In patients with type 2 diabetes, the area under the continuous wavelet spectrum in the endothelial, neurogenic, myogenic, and cardio frequency ranges showed significant diagnostic value for the identification of microvascular changes. Aside from spectral analysis, autocorrelation parameters were also calculated for microcirculatory blood flow oscillations. The groups of elderly volunteers and patients with type 2 diabetes, in comparison with the control group of younger healthy volunteers, showed a statistically significant decrease of the normalised autocorrelation function in time scales up to 10 s. A set of identified parameters was used to test machine learning algorithms to classify the studied groups of young controls, elderly controls, and diabetic patients. Our conclusion describes and discusses the classification metrics that were found to be most effective.
本文介绍了采用激光多普勒血流仪信号处理技术的无线便携式动态光散射传感器的临床结果。现已证实,该技术能够检测志愿者体内与糖尿病和衰老相关的微血管变化。研究主要在手腕皮肤进行。利用小波连续谱计算,针对血管运动的主要生理频率范围,分析所获得的血液灌注记录时间序列。在2型糖尿病患者中,内皮、神经源性、肌源性和心脏频率范围内的连续小波谱下面积,对于识别微血管变化具有显著的诊断价值。除了频谱分析外,还计算了微循环血流振荡的自相关参数。与年轻健康志愿者对照组相比,老年志愿者组和2型糖尿病患者组在长达10秒的时间尺度上,归一化自相关函数出现了统计学上的显著下降。利用一组识别出的参数测试机器学习算法,以对年轻对照组、老年对照组和糖尿病患者这些研究组进行分类。我们的结论描述并讨论了发现的最有效的分类指标。