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Quantitative comparison of time-frequency decomposed gait EMG signals.

机译:时频分解步态肌电信号的定量比较。

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摘要

Falls in the senior population represent an immediate threat to both current and future generations' quality of life. The results of falls can be disastrous, create a long road to recovery, and in many cases result in death. Hypertension represents a difficult-to-quantify condition which is known to contribute to gait and balance dysfunction. Accurate assessment of conditions such as these represents an area of primary investigative need.;In order to meet this need, a new experimental setup is developed which combines time-frequency analysis with surface electromyography (sEMG) signals obtained during ambulation. 3-bit pressure data is acquired using a pressure-sensitive mat, which records time-aligned gait information alongside 8 dipole sEMG sensors attached to tibialis anterior, gastrocnemius, biceps femoris and vastus lateralis. These muscles serve as representative muscles for the ankle flexor, calf (knee flexor), hamstring and quadriceps groups. In all muscles save the biceps femoris, these represent largest muscle in each respective group, providing a comprehensive picture of muscular activation during gait.;The sEMG signals are recorded simultaneously with those of a pressure-sensitive mat, the data from which is used to identify the sinusoidal center of mass for gait separation. The two signals are time-aligned using a recording trigger sent from a standalone digital output device. Signals are imported into MATLAB and rejected according to Grubb's test using beta = 90% on each of three signal attributes: signal energy, signal dc level, signal and peak-to-peak voltage. Signals are decomposed using a Hann window reduced interference distribution, with an Nt = 53-point Hann time window and No = 96-point Blackmann frequency window.;Six metrics based on the physiology and spectral analysis of sEMG signals are used to evaluate and compare several population groups. These metrics are: Instantaneous time duration (TD%), local frequency bandwidth (FB), local frequency maximum (Fmax), energy ratio conditional (E ob), conditional energy from 40-100 Hz (E%40--100Hz), and energy spectral density from 40--100 Hz (ESD 40--100Hz). These metrics rely on both Fourier transform spectrum distributions and accurate time-frequency localized distributions.;Using a large subject database, 10 male and 20 female controls are compared to 7 male and 17 female hypertensive subjects across the six metrics. Subjects are separated into control and experimental groups using medical history and self-report data; age was not a factor. Each of the six metrics are then evaluated in the four muscle groups for differentiability between control and experimental groups. These metrics are then evaluated in male and female subgroups.;In the male subgroup, when using the tibialis anterior muscle, TD%, FB, and E ob=120 Hz showed a maximal accuracy of 75.00%, 76.92% and 76.92% respectively. In the gastrocnemius, both FB and E ob=120 Hz showed 76.92% accuracy. In the vastus lateralis, Fmax ), and Eob =120 Hz showed 76.92% accuracy, while Eob=40 Hz showed 75.00% accuracy. The biceps femoris showed low levels of accuracy (maximum 62.50%).;]In the female subgroup, the overall level of accuracy is lower, due to physiological factors of subcutaneous tissue, muscle distribution, and gait differences. In the tibialis anterior, Eo b=40 Hz showed the highest accuracy at 68.42%, with TD% at 66.67%. In the gastrocnemius, TD% showed highest accuracy. In the vastus lateralis, Eob=120 Hz showed the highest accuracy, and in the biceps femoris, Eob=40 Hz showed the highest level of accuracy.;Using an aggregate of these key metrics, an accuracy of 94.12% for male subsets and 78.38% for female subsets is established for testing control groups vs hypertensive experimental groups. This research represents a hypertension diagnostic tool, and thus a quantitative indicator of fall risk.
机译:老年人口的下降是对当代和子孙后代生活质量的直接威胁。跌倒的后果可能是灾难性的,会导致漫长的康复之路,并且在许多情况下会导致死亡。高血压是一种难以量化的疾病,已知会导致步态和平衡功能障碍。对这些情况的准确评估代表了主要的研究需求。为了满足这一需求,开发了一种新的实验装置,该装置将时频分析与在步行过程中获得的表面肌电图(sEMG)信号相结合。使用压敏垫获取3位压力数据,该垫可记录时间对齐的步态信息以及与胫骨前,腓肠肌,股二头肌和股外侧肌相连的8个偶极sEMG传感器。这些肌肉可作为踝屈肌,小腿(屈膝),腿筋和股四头肌的代表肌肉。在除股二头肌外的所有肌肉中,它们代表各组中最大的肌肉,提供了步态期间肌肉激活的全面图像。sEMG信号与压敏垫同时记录,这些数据用于确定步态分离的正弦质心。这两个信号使用独立数字输出设备发送的记录触发信号进行时间校准。信号被导入到MATLAB中,并根据Grubb的测试在以下三个信号属性(信号能量,信号直流电平,信号和峰峰值电压)中的每一个上使用beta = 90%进行拒绝。使用减少了Hann窗口的干扰分布,Nt = 53点的Hann时间窗口和No = 96点的Blackmann频率窗口来分解信号;基于sEMG信号的生理学和频谱分析的六个指标用于评估和比较几个人口群体。这些指标是:瞬时持续时间(TD%),本地频率带宽(FB),本地频率最大值(Fmax),有条件的能量比(E ob),40-100 Hz的条件能量(E%40--100Hz),和40--100 Hz(ESD 40--100Hz)的能量谱密度。这些度量标准既依赖于傅立叶变换频谱分布,又依赖于准确的时频局部分布。使用大型受试者数据库,在六个度量标准中将10位男性和20位女性对照与7位男性和17位女性高血压受试者进行了比较。利用病史和自我报告数据将受试者分为对照组和实验组。年龄不是一个因素。然后在四个肌肉组中评估六个指标中每个指标在对照组和实验组之间的可区分性。然后在男性和女性亚组中评估这些指标。在男性亚组中,当使用胫骨前肌时,TD%,FB和E ob = 120 Hz分别显示最大准确度为75.00%,76.92%和76.92%。在腓肠肌中,FB和E ob = 120 Hz均显示76.92%的准确性。在股外侧肌中,F max和Eob = 120Hz显示出76.92%的准确性,而Eob = 40Hz显示出75.00%的准确性。股二头肌显示出较低的准确度水平(最高62.50%)。]在女性亚组中,由于皮下组织的生理因素,肌肉分布和步态差异,整体准确度较低。在胫骨前部,Eo b = 40 Hz显示最高的准确性,为68.42%,TD%为66.67%。在腓肠肌中,TD%显示出最高的准确性。在股外侧肌中,Eob = 120 Hz显示最高的准确性,在股二头肌中,Eob = 40 Hz显示最高的准确性。;使用这些关键指标的总和,男性子集的准确性为94.12%,78.38确定女性子集的百分比用于测试对照组和高血压实验组。这项研究代表了一种高血压诊断工具,因此是跌倒风险的定量指标。

著录项

  • 作者

    Mitchell, L. Patrick.;

  • 作者单位

    University of South Carolina.;

  • 授予单位 University of South Carolina.;
  • 学科 Electrical engineering.;Biomedical engineering.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 98 p.
  • 总页数 98
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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