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Detection of Multiple Innervation Zones from Multi-Channel Surface EMG Recordings with Low Signal-to-Noise Ratio Using Graph-Cut Segmentation

机译:使用图割分割技术从低信噪比的多通道表面肌电图记录中检测多个神经区域

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摘要

Knowledge of the location of muscle Innervation Zones (IZs) is important in many applications, e.g. for minimizing the quantity of injected botulinum toxin for the treatment of spasticity or for deciding on the type of episiotomy during child delivery. Surface EMG (sEMG) can be noninvasively recorded to assess physiological and morphological characteristics of contracting muscles. However, it is not often possible to record signals of high quality. Moreover, muscles could have multiple IZs, which should all be identified. We designed a fully-automatic algorithm based on the enhanced image Graph-Cut segmentation and morphological image processing methods to identify up to five IZs in 60-ms intervals of very-low to moderate quality sEMG signal detected with multi-channel electrodes (20 bipolar channels with Inter Electrode Distance (IED) of 5 mm). An anisotropic multilayered cylinder model was used to simulate 750 sEMG signals with signal-to-noise ratio ranging from -5 to 15 dB (using Gaussian noise) and in each 60-ms signal frame, 1 to 5 IZs were included. The micro- and macro- averaged performance indices were then reported for the proposed IZ detection algorithm. In the micro-averaging procedure, the number of True Positives, False Positives and False Negatives in each frame were summed up to generate cumulative measures. In the macro-averaging, on the other hand, precision and recall were calculated for each frame and their averages are used to determine F1-score. Overall, the micro (macro)-averaged sensitivity, precision and F1-score of the algorithm for IZ channel identification were 82.7% (87.5%), 92.9% (94.0%) and 87.5% (90.6%), respectively. For the correctly identified IZ locations, the average bias error was of 0.02±0.10 IED ratio. Also, the average absolute conduction velocity estimation error was 0.41±0.40 m/s for such frames. The sensitivity analysis including increasing IED and reducing interpolation coefficient for time samples was performed. Meanwhile, the effect of adding power-line interference and using other image interpolation methods on the deterioration of the performance of the proposed algorithm was investigated. The average running time of the proposed algorithm on each 60-ms sEMG frame was 25.5±8.9 (s) on an Intel dual-core 1.83 GHz CPU with 2 GB of RAM. The proposed algorithm correctly and precisely identified multiple IZs in each signal epoch in a wide range of signal quality and is thus a promising new offline tool for electrophysiological studies.
机译:肌肉神经支配区(IZs)位置的知识在许多应用中很重要,例如用于减少注射的肉毒杆菌毒素的量,以治疗痉挛或决定分娩时的外阴切开术的类型。表面肌电图(sEMG)可以无创记录,以评估收缩肌肉的生理和形态特征。但是,通常不可能记录高质量的信号。此外,肌肉可能具有多个IZ,应将其全部识别出来。我们基于增强的图像Graph-Cut分割和形态图像处理方法设计了一种全自动算法,以多通道电极(20双极)检测到的非常低至中等质量的sEMG信号在60毫秒间隔内识别多达五个IZ电极间距离(IED)为5毫米的通道)。各向异性多层圆柱模型用于模拟750 sEMG信号,其信噪比范围为-5至15 dB(使用高斯噪声),​​并且在每个60-ms信号帧中包括1至5 IZ。然后针对拟议的IZ检测算法报告了微观和宏观平均性能指标。在微平均过程中,将每一帧中的真阳性,假阳性和假阴性的数量相加以产生累积量度。另一方面,在宏平均中,为每个帧计算精度和召回率,并将它们的平均值用于确定F1得分。总体而言,用于IZ通道识别的算法的微(宏观)平均灵敏度,精度和F1分数分别为82.7%(87.5%),92.9%(94.0%)和87.5%(90.6%)。对于正确识别的IZ位置,平均偏差误差为0.02±0.10 IED比。同样,对于这样的框架,平均绝对传导速度估计误差为0.41±0.40m / s。进行了灵敏度分析,包括增加IED和减小时间样本的插值系数。同时,研究了增加电力线干扰和使用其他图像插值方法对所提算法性能下降的影响。在具有2 GB RAM的英特尔双核1.83 GHz CPU上,该算法在每个60毫秒sEMG帧上的平均运行时间为25.5±8.9(s)。所提出的算法可以在广泛的信号质量范围内正确,准确地识别出每个信号历元中的多个IZ,因此是一种有前途的离线电生理研究工具。

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