结合阻抗传感的可穿戴式帕金森病手指敲击定量评估算法

Jhih-Syong Fong, Ya-Hui Chuang, Fu-Sheng Yu, I-Chyn Wey, San-Fu Wang
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引用次数: 0

摘要

提出了一种结合人体电阻和电容传感的人工智能识别算法。测量到的人体阻抗数据通过简单的四算法进行分析,然后根据帕金森病患者的特点,使用四种不同的AI算法来判断是否存在。本文的算法是基于正常人和PD患者的阻抗数据,通过本文提出的计算电路,分析身体阻力、手指配合次数、手指揉捏周期、手指揉捏幅度的差异,准确区分PD患者手指的震颤和僵硬症状。通过对四种AI算法的特征分析,判断PD患者的准确率高于90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wearable Parkinson’s Disease Finger Tapping Quantitative Evaluation Algorithm Combined with Impedance Sensing
This paper proposes an Artificial Intelligence (AI) identification algorithm that combined the human body resistance and capacitance sensing. The measured human body impedance data is analyzed by a simple four-arithmetic algorithm, and then four different AI algorithms are used to determine whether or not according to the characteristics of Parkinson’s Disease (PD) patients. The algorithm of this paper is based on the impedance data of normal people and PD patients through the calculation circuit proposed in this paper to analyze the difference in body resistance, the number of finger fits, finger kneading cycles, and finger kneading amplitude to accurately distinguish the fingers of PD patients Symptoms of tremor and stiffness. Through the feature analysis of four AI algorithms, it is judged that the accuracy rate of PD patients is higher than 90%.
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