首页> 外文会议>IEEE Signal Processing in Medicine and Biology Symposium >Performance of three electromyogram decomposition algorithms as a function of signal to noise ratio: Assessment with experimental and simulated data
【24h】

Performance of three electromyogram decomposition algorithms as a function of signal to noise ratio: Assessment with experimental and simulated data

机译:三种肌电图分解算法的性能随信噪比的变化:用实验和模拟数据进行评估

获取原文

摘要

We have previously published a full report [25] comparing the performance of three automated electromyogram (EMG) decomposition algorithms. In our prior report, the primary measure of decomposition difficulty/challenge for each data record was the “Decomposability Index” of Florestal et al. [3]. This conference paper is intended to augment our prior work by providing companion results when the measure of difficulty is the motor unit signal-to-noise ratio (SNR) - a measure that is commonly used in the literature. Thus, we analyzed experimental and simulated data to assess the agreement and accuracy, as a function of SNR, of three publicly available decomposition algorithms-EMGlab[1] (single channel data only), Fuzzy Expert [2] and Montreal [3]. Data consisted of quadrifilar needle EMGs from the tibialis anterior of 12 subjects at 10%, 20% and 50% maximum voluntary contraction (MVC); single channel needle EMGs from the biceps brachii of 10 control subjects during contractions just above threshold; and matched simulated data. Performance vs. SNR was assessed via agreement between pairs of algorithms for experimental data and accuracy with respect to the known decomposition for simulated data. For experimental data, RMS errors between the achieved agreement and those predicted by an exponential model as a function of SNR ranged from 8.4% to 19.2%. For the simulations, RMS errors between achieved accuracy and those predicted by the SNR exponential model ranged from 3.7% to 14.7%. Agreement/accuracy was strongly related to SNR.
机译:我们之前发表了一份完整的报告[25]比较了三种自动电灰度(EMG)分解算法的性能。在我们的先前报告中,每个数据记录的分解难度/挑战的主要衡量标准是Florestal等人的“分解性指数”。 [3]。本次会议案件旨在通过提供伴侣的衡量标准是电机单元信噪比(SNR) - 在文献中常用的措施来增加我们的伴侣的结果。因此,我们分析了实验和模拟数据,以评估协议和准确性,作为SNR的一个函数,其中三个公开可用的分解算法 - Emglab [1](仅限单通道数据),模糊专家[2]和蒙特利尔[3]。数据由四母针的四元针EMG组成,来自12个受试者的12%,20%和50%最大自愿收缩(MVC);在收缩期间,从二头肌Brachii的单通道针EMGS在阈值上方的收缩期间的10个控制受试者;并匹配模拟数据。通过对实验数据对与模拟数据的已知分解进行实验数据的一致和准确性的一致进行性能与SNR。对于实验数据,所取得的协议与指数模型预测的符号之间的RMS误差从8.4%到19.2%的函数。对于仿真,所取得的准确度与SNR指数模型预测的RMS误差范围为3.7%至14.7%。协议/准确性与SNR密切相关。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号