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Design of a real time portable low-cost multi-channel surface electromyography system to aid neuromuscular disorder and post stroke rehabilitation patients

机译:实时便携式低成本多通道表面肌电图系统的设计,可帮助神经肌肉疾病和中风后康复患者

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Surface and needle-based electromyography signals are used as diagnostic markers for detecting neuromuscular disorders. Existing systems that are used to acquire these signals are usually expensive and invasive in practice. A novel 8 channel surface EMG (sEMG) acquisition system is designed and developed to acquire signals for various upper limb movements in order to evaluate the motor impairment. The real time sEMG signals are generated from the muscle fibre movements, originated solely from the upper limb physical actions. Intuitively, sEMG signals characterize different actions performed by the upper limb, which is considered apt for assessing the improvement for post stroke patients undergoing routine physical therapy activities. The system is designed and assembled in a view to make it affordable and modular for easier proliferation, and extendable to motor classifying applications. The system was validated by recording realtime sEMG data using six differential electrodes for various finger and wrist actions. The signals are filtered and processed to develop a machine learning (ML) model to classify upper limb actions, and other electronic systems are designed in the portable form around the patch electrodes. A classifier was trained to predict each action and the accuracy of the classifier was assessed across different usage of channels. The accuracy of the classifier was improved by optimizing the number of electrodes as well as the spatial position of these electrodes. The sEMG circuit designed has the capacity to characterize wrists, and finger movements. The improvement observed in the sEMG signals should benefit the physiotherapists to plan further protocols in the prescribed rehabilitation program.
机译:基于表面和针的肌电信号被用作检测神经肌肉疾病的诊断标记。在实践中,用于获取这些信号的现有系统通常很昂贵并且具有侵入性。设计并开发了一种新颖的8通道表面肌电(sEMG)采集系统,以采集各种上肢运动的信号,以评估运动障碍。实时sEMG信号是由肌纤维运动产生的,而肌纤维运动仅起源于上肢的身体动作。直观地,sEMG信号表征了上肢执行的不同动作,这被认为适合评估接受常规物理治疗活动的中风后患者的改善情况。设计和组装该系统的目的是使其价格适中且模块化,从而易于扩展,并可以扩展到电机分类应用中。该系统通过使用六个差分电极记录各种手指和腕部动作的实时sEMG数据进行了验证。对信号进行滤波和处理,以开发机器学习(ML)模型以对上肢动作进行分类,并且以贴片电极周围的便携式形式设计其他电子系统。训练分类器以预测每个动作,并在不同渠道使用情况下评估分类器的准确性。通过优化电极数量以及这些电极的空间位置,可以提高分类器的准确性。设计的sEMG电路具有表征手腕和手指运动的能力。在sEMG信号中观察到的改善应该有益于物理治疗师在规定的康复计划中计划进一步的方案。

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