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首页> 外文期刊>IEEE computational intelligence magazine >Muscle Fatigue Tracking with Evoked EMG via Recurrent Neural Network: Toward Personalized Neuroprosthetics
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Muscle Fatigue Tracking with Evoked EMG via Recurrent Neural Network: Toward Personalized Neuroprosthetics

机译:通过循环神经网络通过诱发性肌电图追踪肌肉疲劳:走向个性化的神经假体

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Abstract-One of the challenging issues in computational rehabilitation is that there is a large variety of patient situations depending on the type of neurological disorder. Human characteristics are basically subject specific and time variant; for instance, neuromuscular dynamics may vary due to muscle fatigue. To tackle such patient specificity and time-varying characteristics, a robust bio-signal processing and a precise model-based control which can manage the nonlinearity and time variance of the system, would bring break-through and new modality toward computational intelligence (CI) based rehabilitation technology and personalized neuroprosthetics. Functional electrical stimulation (FES) is a useful technique to assist restoring motor capability of spinal cord injured (SCI) patients by delivering electrical pulses to paralyzed muscles. However, muscle fatigue constraints the application of FES as it results in the time-variant muscle response. To perform adaptive closedloop FES control with actual muscle response feedback taken into account, muscular torque is essential to be estimated accurately. However, inadequacy of the implantable torque sensor limits the direct measurement of the time-variant torque at the joint. This motivates the development of methods to estimate muscle torque from bio-signals that can be measured. Evoked electromyogram (eEMG) has been found to be highly correlated with FES-induced torque under various muscle conditions, indicating that it can be used for torque/force prediction. A nonlinear ARX (NARX) type model is preferred to track the relationship between eEMG and stimulated muscular torque. This paper presents a NARX recurrent neural network (NARX-RNN) model for identification/prediction of FES-induced muscular dynamics with eEMG. The NARX-RNN model may possess novelty of robust prediction performance. Due to the difficulty of choosing a proper forgetting factor of Kalman filter for predicting time-variant torque with eEMG, the- presented NARX-RNN could be considered as an alternative muscular torque predictor. Data collected from five SCI patients is used to evaluate the proposed NARX-RNN model, and the results show promising estimation performances. In addition, the general importance regarding CI-based motor function modeling is introduced along with its potential impact in the rehabilitation domain. The issue toward personalized neuroprosthetics is discussed in detail with the potential role of CI-based identification and the benefit for motor-impaired patient community.
机译:摘要-计算康复中的挑战性问题之一是,根据神经系统疾病的类型,患者的情况多种多样。人的特征基本上是特定于主题的并且随时间变化的;例如,神经肌肉动力可能由于肌肉疲劳而变化。为了解决此类患者的特异性和时变特征,强大的生物信号处理和基于模型的精确控制(可以管理系统的非线性和时间变化)将为计算智能(CI)带来突破性和新的模式基于康复技术和个性化的神经假体。功能性电刺激(FES)是一种有用的技术,可通过向瘫痪的肌肉传递电脉冲来帮助恢复脊髓损伤(SCI)患者的运动能力。但是,肌肉疲劳会限制FES的应用,因为它会导致随时间变化的肌肉反应。为了在考虑实际肌肉反应反馈的情况下执行自适应闭环FES控制,肌肉扭矩对于准确估算至关重要。然而,植入式扭矩传感器的不足限制了关节处时变扭矩的直接测量。这激励了从可以测量的生物信号估算肌肉扭矩的方法的发展。已发现在各种肌肉条件下,诱发的肌电图(eEMG)与FES诱发的扭矩高度相关,这表明它可用于扭矩/力预测。最好使用非线性ARX(NARX)类型的模型来跟踪eEMG和刺激的肌肉扭矩之间的关系。本文提出了一种NARX递归神经网络(NARX-RNN)模型,用于通过eEMG识别/预测FES诱导的肌肉动力学。 NARX-RNN模型可能具有鲁棒预测性能的新颖性。由于难以选择合适的卡尔曼滤波器的遗忘因子来通过eEMG预测时变转矩,因此提出的NARX-RNN可被视为替代性的肌肉转矩预测器。从五名SCI患者中收集的数据用于评估拟议的NARX-RNN模型,结果显示出有希望的估计性能。此外,还介绍了有关基于CI的运动功能建模的一般重要性及其在康复领域的潜在影响。讨论了针对个性化神经假体的问题,以及基于CI的识别的潜在作用以及对运动障碍患者社区的好处。

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