用于糖尿病神经病变监测的实时肌纤维传导速度追踪器

G. Mezzina, V. L. Gallo, D. Venuto
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引用次数: 6

摘要

本文描述了一种可穿戴的无线嵌入式系统的架构,该系统用于糖尿病周围神经病变(DPN)在普通动态运动(如流体步态)中的评估。在这种情况下,肌电图分析可以通过估计连接的肌纤维传导速度(MFCV)来提供有关神经状态的信息。该系统使用来自4个EMG通道的同步和数字化数据样本进行操作,这些数据样本位于被测者的每条腿上,利用嵌入式位置扫描算法提供的指导方针。本文提出了一种基于经典两电极比较测量原理的MFCV估计新算法。该系统采用动态阈值对肌电信号进行比特流转换,并采用低计算解决方案实现比特流交叉相关器。整个系统在Altera Cyclone V FPGA上完全运行。对3名受试者的实验结果表明,所提出的方法能够匹配医学文献中报道的生理MFCV值。特别是,将受控环境下获得的医学值与系统提取的MFCV进行比较,在相同的实验条件下,绝对误差平均为0.2m/s。系统返回无效实时度量的概率低于4%(最坏情况)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time muscle fiber conduction velocity tracker for diabetic neuropathy monitoring
This paper describes the architecture of a wearable, wireless embedded system for the Diabetic Peripheral Neuropathy (DPN) assessment in ordinary dynamic movements, such as a fluid gait. In this context, the EMG analysis can provide information about the nerves status by estimating the linked Muscle Fiber Conduction Velocity (MFCV). The system operates with synchronized and digitized data samples from 4 EMG channels, which are positioned on each leg of the person under test, exploiting the guidelines provided by an embedded positional scanning algorithm. This work presents a novel algorithm for the estimation of MFCV that is based on the classic 2-electrodes comparative measurement principle. The system uses dynamic thresholds bit-stream conversion of the EMG signals and a low computational solution for the implementation of the bitstream cross-correlator. The entire system fully operates on Altera Cyclone V FPGA. The experimental results on 3 subjects demonstrate the ability of the proposed method for matching the physiological MFCV values, as reported in medical literature. In particular, comparing the medical values, obtained in controlled environments, with the system extracted MFCV, in the same experimental conditions: the absolute error is, on average, 0.2m/s. The system returns a probability of invalid real-time measures below of 4% (worst case).
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