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一种用于自动可视化和激活检测由脊髓损伤患者硬膜外脊髓刺激引起的诱发电位的新方法。

A novel approach for automatic visualization and activation detection of evoked potentials induced by epidural spinal cord stimulation in individuals with spinal cord injury.

机构信息

Department of Electrical and Computer Engineering, University of Louisville, Louisville, KY, United States of America.

Department of Bioengineering, University of Louisville, Louisville, KY, United States of America.

出版信息

PLoS One. 2017 Oct 11;12(10):e0185582. doi: 10.1371/journal.pone.0185582. eCollection 2017.

Abstract

Voluntary movements and the standing of spinal cord injured patients have been facilitated using lumbosacral spinal cord epidural stimulation (scES). Identifying the appropriate stimulation parameters (intensity, frequency and anode/cathode assignment) is an arduous task and requires extensive mapping of the spinal cord using evoked potentials. Effective visualization and detection of muscle evoked potentials induced by scES from the recorded electromyography (EMG) signals is critical to identify the optimal configurations and the effects of specific scES parameters on muscle activation. The purpose of this work was to develop a novel approach to automatically detect the occurrence of evoked potentials, quantify the attributes of the signal and visualize the effects across a high number of scES parameters. This new method is designed to automate the current process for performing this task, which has been accomplished manually by data analysts through observation of raw EMG signals, a process that is laborious and time-consuming as well as prone to human errors. The proposed method provides a fast and accurate five-step algorithms framework for activation detection and visualization of the results including: conversion of the EMG signal into its 2-D representation by overlaying the located signal building blocks; de-noising the 2-D image by applying the Generalized Gaussian Markov Random Field technique; detection of the occurrence of evoked potentials using a statistically optimal decision method through the comparison of the probability density functions of each segment to the background noise utilizing log-likelihood ratio; feature extraction of detected motor units such as peak-to-peak amplitude, latency, integrated EMG and Min-max time intervals; and finally visualization of the outputs as Colormap images. In comparing the automatic method vs. manual detection on 700 EMG signals from five individuals, the new approach decreased the processing time from several hours to less than 15 seconds for each set of data, and demonstrated an average accuracy of 98.28% based on the combined false positive and false negative error rates. The sensitivity of this method to the signal-to-noise ratio (SNR) was tested using simulated EMG signals and compared to two existing methods, where the novel technique showed much lower sensitivity to the SNR.

摘要

使用腰骶部脊髓硬膜外刺激(scES)促进了脊髓损伤患者的自主运动和站立。确定适当的刺激参数(强度、频率和阳极/阴极分配)是一项艰巨的任务,需要使用诱发电位对脊髓进行广泛映射。从记录的肌电图(EMG)信号中有效可视化和检测 scES 诱导的肌肉诱发电位,对于确定最佳配置以及特定 scES 参数对肌肉激活的影响至关重要。这项工作的目的是开发一种新方法,以自动检测诱发电位的发生,量化信号的属性,并可视化大量 scES 参数下的效果。这种新方法旨在自动化当前执行此任务的过程,该过程由数据分析师通过观察原始 EMG 信号手动完成,这是一项费力且耗时的工作,并且容易出现人为错误。所提出的方法提供了一种快速而准确的五步算法框架,用于激活检测和结果的可视化,包括:通过叠加定位的信号块将 EMG 信号转换为其 2-D 表示;通过应用广义高斯马尔可夫随机场技术对 2-D 图像进行去噪;使用统计上最优的决策方法通过将每个段的概率密度函数与背景噪声进行比较利用对数似然比来检测诱发电位的发生;提取检测到的运动单元的特征,例如峰峰值幅度、潜伏期、积分 EMG 和 Min-max 时间间隔;最后将输出可视化作为 Colormap 图像。在将自动方法与五名个体的 700 个 EMG 信号的手动检测进行比较时,新方法将每个数据集的处理时间从数小时减少到不到 15 秒,并且基于综合假阳性和假阴性错误率显示出平均 98.28%的准确率。使用模拟 EMG 信号测试了该方法对信噪比(SNR)的敏感性,并与两种现有方法进行了比较,其中新方法对 SNR 的敏感性要低得多。

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