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首页> 外文期刊>Comparative exercise physiology >Surface EMG signal normalisation and filtering improves sensitivity of equine gait analysis
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Surface EMG signal normalisation and filtering improves sensitivity of equine gait analysis

机译:表面EMG信号标准化和滤波提高了马步态分析的灵敏度

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摘要

Low-frequency noise attenuation and normalisation are fundamental signal processing (SP) methods for surface electromyography (sEMG), but are absent, or not consistently applied, in equine biomechanics. The purpose of this study was to examine the effect of different band-pass filtering and normalisation conventions on sensitivity for identifying differences in sEMG amplitude-related measures, calculated from leading (LdH) and trailing hindlimb (TrH) during canter, where between-limb differences in vertical loading are known. sEMG and 3D-kinematic data were collected from the right Biceps Femoris in 10 horses during both canter leads. Peak hip and stifle joint angle and angular velocity were calculated during stance to verify between-limb biomechanical differences. Four SP methods, with and without normalisation and high-pass filtering, were applied to raw sEMG data. Methods 1 (Ml) to 4 (M4) included DC-offset removal and full-wave rectification. Method 2 (M2) included additional normalisation relative to maximum sEMG across all strides. Method 3 (M3) included additional high-pass filtering (Butterworth 4th order, 40 Hz cut-off), for artefact attenuation. M4 included the addition of high-pass filtering and normalisation. Integrated EMG (iEMG) andaverage rectified value (ARV) were calculated using processed sEMG data from Ml - M4, with stride duration as the temporal domain. sEMG parameters, within Ml — M4, and kinematic parameters were grouped by LdH and TrH and compared using repeated measuresANOVA. Significant between-limb differences for hip and stifle joint kinematics were found, indicating functional differences in hindlimb movement. M2 and M4, revealed significantly greater iEMG and ARV for LdH than TrH (P<0.01), with M4 producing the lowest P-values and largest effect sizes. Significant between-limb differences in sEMG parameters were not observed with Ml and M3. The results indicate that equine sEMG SP should include normalisation and high-pass filtering to improve sensitivity for identifying differences in muscle function associated with biomechanical changes during equine gait.
机译:低频噪声衰减和归一化是表面肌电图(SEMG)的基本信号处理(SP)方法,但不存在或不一致地应用于马生物力学。本研究的目的是研究不同的带通滤波和正常化概况对术语期间从前导(LDH)和尾随后肢(TRH)计算的敏感度的灵敏度的影响,其中 - 肢体之间已知垂直装载的差异。在钙均导致期间,在10匹马中从右二头肌雌性收集SEMG和3D-kinematic数据。在立场期间计算峰值髋关节和扼杀角角和角速度,以验证 - 肢体生物力学差异。有四种SP方法,具有和不归一化和高通滤波,应用于原始SEMG数据。方法1(mL)至4(M4)包括DC偏移和全波整流。方法2(M2)包括相对于所有进度的最大SEMG的额外标准化。方法3(M3)包括额外的高通滤波(Butterworth第4阶,40 Hz截止),用于人工衰减。 M4包括添加高通滤波和归一化。使用来自ML-M4的加工SEMG数据计算集成的EMG(IEMG)andaverage校正值(ARV),具有潮流持续时间作为时间域。 ML-M4内的SEMG参数和运动学参数由LDH和TRH分组,并使用重复措施进行比较。发现了对髋关节动力学的肢体差异显着,表明在后肢运动中的功能差异。 M2和M4,LDH显示出明显更大的IEMG和ARV,而不是TRH(P <0.01),M4产生最低的P值和最大效果尺寸。利用ML和M3未观察到SEMG参数的肢体差异显着。结果表明,标准SEMG SP应包括归一化和高通滤波,以提高鉴定在马步态期间与生物力学变化相关的肌肉功能差异的敏感性。

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