A smart glove to evaluate Parkinson's disease by flexible piezoelectric and inertial sensors

R. De Fazio , C. Del-Valle-Soto , V.M. Mastronardi , M. De Vittorio , P. Visconti
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Abstract

Parkinson's disease (PD), to date, is widespread. It is a neurodegenerative disease that impairs the quality of life of the affected, as it is a slowly but progressively evolving disease. This paper presents a smart glove for evaluating PD patients by monitoring hand tremors and evaluating specific exercises involved by the MDS-UPDRS (Movement Disorder Society - Unified Parkinson Disease Rating Scale), enabling disease evolution assessment. The smart glove consists of a TPU flexible support, integrating two flexible MEMS piezoelectric sensors based on Aluminum Nitride and an inertial sensor to detect finger and arm movements. The smart glove integrates an electronic conditioning section for piezoelectric signals to make them suitable for the following acquisition by a microcontroller section based on nRF52840 SoC, which jointly processes the piezoelectric and inertial signals related to standard patient's hand and arm exercises (i.e., finger tapping, fist opening/closing of the hand, resting hand tremor), assigning them scores according to the MDS-UPDRS. Three embedded Machine Learning (ML) algorithms based on Neural Networks (NN) were deployed to classify piezoelectric and inertial signals. Seven individuals, six of them with diagnosed PD, were involved in developing ML models. Datasets were gathered to train and test the ML algorithms, constituted by signal samples related to three tests involved in the UPDRS scale according to PD severity. The tests demonstrated the proper operation of the proposed smart glove in tracking the movement changes induced by PD; also, the developed embedded ML algorithms showed performance in classifying hand/arm movements, reaching 95.12 %, 98.39 %, and 96.62 % for finger-tapping, hand-fist closure, and resting tremor, respectively.
一种用柔性压电和惯性传感器评估帕金森病的智能手套
帕金森氏症(PD)至今仍很普遍。它是一种神经退行性疾病,会损害患者的生活质量,因为它是一种缓慢但逐渐发展的疾病。本文提出了一种智能手套,通过监测手部震颤和评估MDS-UPDRS(运动障碍学会-统一帕金森病评定量表)中涉及的特定运动来评估PD患者,从而实现疾病演变评估。该智能手套由TPU柔性支架组成,集成了两个基于氮化铝的柔性MEMS压电传感器和一个惯性传感器,用于检测手指和手臂的运动。智能手套集成了压电信号的电子调理部分,使其适用于基于nRF52840 SoC的微控制器部分的后续采集,该微控制器部分联合处理与标准患者手部和手臂运动相关的压电信号和惯性信号(即手指敲击,手的拳头打开/闭合,静止的手震颤),并根据MDS-UPDRS对其进行评分。采用三种基于神经网络的嵌入式机器学习算法对压电信号和惯性信号进行分类。7个人,其中6人诊断为帕金森病,参与了ML模型的开发。收集数据集训练和测试ML算法,这些数据集由UPDRS量表中根据PD严重程度涉及的三个测试相关的信号样本组成。实验结果表明,所设计的智能手套能够很好地跟踪PD引起的运动变化;此外,所开发的嵌入式ML算法在手/手臂运动分类方面表现出色,对手指敲击、手-拳闭合和静息性震颤的分类分别达到95.12%、98.39%和96.62%。
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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CiteScore
17.40
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