Design of system for parkinson's hand tremor evaluating based on machine learning

Meijiao Wang, Chen Xu, Xiaoqiang Ji, Xiaoting Kan, Sun Qi
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Abstract

About 70% of Parkinson's disease patients have the initial symptoms of tremors at the end of upper limbs in the clinic, which seriously affects the normal work and life of patients. The severity of Parkinson's disease patients is evaluated clinically by doctors based on their experience, lacking objective evaluation criteria. It is particularly important to study an objective and fast tremor assessment method to assist doctors in the diagnosis and treatment of Parkinson's disease. In this paper, a recognition system of Parkinson's patients' hand function tremor based on machine learning is designed. Firstly, the acceleration sensor is used to collect the hand tremor signal, and then the median and band-pass filters are used to remove the noise. Next, the time-domain and frequency-domain characteristics of the tremors signal are extracted. Finally, BP neural network algorithm is used to classify the tremor degree into three categories. 12 volunteers were selected to carry out the system function experiment, and the results show that the system can achieve the classification of hand tremors, with an accuracy rate of 84.5%. The Parkinson's patient's hand tremor evaluation system designed in this paper has the advantages of low cost, small size, comfortable wearing, and high accuracy. It can assist clinical rehabilitation training and help doctors formulate scientific and reasonable rehabilitation training programs.
基于机器学习的帕金森手颤评估系统设计
临床上约70%的帕金森病患者首发症状为上肢末端震颤,严重影响患者的正常工作和生活。帕金森病患者的严重程度在临床上由医生根据自身经验进行评估,缺乏客观的评价标准。研究一种客观、快速的震颤评估方法,以辅助医生对帕金森病的诊断和治疗显得尤为重要。本文设计了一种基于机器学习的帕金森病患者手功能性震颤识别系统。首先利用加速度传感器采集手颤信号,然后利用中值滤波和带通滤波去除噪声。其次,提取地震信号的时域和频域特征。最后,利用BP神经网络算法将地震震级划分为三类。选取12名志愿者进行系统功能实验,结果表明,该系统可以实现手部震颤的分类,准确率为84.5%。本文设计的帕金森病患者手部震颤评估系统具有成本低、体积小、佩戴舒适、准确度高等优点。辅助临床康复训练,帮助医生制定科学合理的康复训练方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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