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Assessment of upper limb muscle tone level based on estimated impedance parameters

机译:根据估计的阻抗参数评估上肢肌肉紧张程度

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Many strategies have been developed by occupational and physical therapists for the assessment of post-stroke patients' upper limb muscle tone and physical recovery progress. Despite, having the appropriate skills, they face serious challenges in quantifying continuously, the patients' recovery progress. Moreover, the therapy has become more costly and time consuming since the patients are required to have a face-to-face contact with the therapist over a long period of time. By deploying robot-assisted rehabilitation therapy, some of these problems have been addressed, however, serious challenges still exist in the aspect of proper estimation and assessment of patients muscle tone level and recovery progress during rehabilitation therapy. This paper proposes an appropriate strategy for prediction and assessment of subjects' muscle tone level and recovery based on the estimation of upper-limb mechanical impedance parameters. The subjects' mechanical impedance parameters are estimated using a recursive least square estimator method and the muscle tone level are predicted by Artificial Neural Network (ANN) which has been trained using the estimated impedance parameters. Preliminary experimental result shows that the upper-limb impedance parameters can be estimated to an accuracy level of 90%, while simulation studies have revealed that the muscle tone level can be reliably predicted at 95.01% accuracy level.
机译:职业和物理治疗师已经开发出许多策略来评估中风后患者的上肢肌肉张力和身体恢复进展。尽管具有适当的技能,但他们在持续量化患者的康复进度方面仍面临严峻挑战。此外,由于要求患者长期与治疗师面对面接触,因此治疗变得更加昂贵和费时。通过部署机器人辅助的康复治疗,已经解决了其中一些问题,但是,在正确估计和评估患者的肌肉张力水平以及康复治疗期间的恢复进展方面,仍然存在严峻的挑战。本文基于上肢机械阻抗参数的估计,提出了一种合适的策略,用于预测和评估受试者的肌肉张力水平和恢复情况。使用递归最小二乘估计器方法估计受试者的机械阻抗参数,并通过人工神经网络(ANN)预测肌肉张力水平,该人工神经网络已使用估计的阻抗参数进行训练。初步实验结果表明,上肢阻抗参数的准确度可以达到90%,而仿真研究表明,肌肉紧张程度的准确度可以达到95.01%。

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