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A study on gait-based Parkinson's disease detection using a force sensitive platform

机译:基于力敏感平台的基于步态的帕金森病检测研究

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Gait analysis aims to study human motion and its potential association with chronic diseases, such as Parkinson's disease and hemiplegic paralysis, by extracting various gait characteristics. It has been a challenging problem to accurately extract temporal and spatial gait parameter and to explore the relationship between gait signal and a disease of interest. In this study, we introduce a gait sensing platform that can capture human movement and classify patients with Parkinson's disease from healthy subjects. Specifically, we first show the platform that consists of force sensitive pressure sensors. Second, we extract gait features from the gait signal collected from the platform. Finally, we collect experimental data from 386 volunteers, including 218 healthy subjects and 168 patients with Parkinson's disease, and conduct extensive experiments to show the possibility of classifying Parkinson's disease patients at a high confidence level. Experimental results of nine different classifiers show that the random forest model outperforms the other eight competitors and obtains an accuracy of 92.49%, demonstrating the power of quantitative gait analysis in the early detection of Parkinson's disease.
机译:步态分析旨在通过提取各种步态特征来研究人体运动及其与慢性疾病(如帕金森氏病和偏瘫性麻痹)的潜在关联。准确地提取时间和空间步态参数并探索步态信号与目标疾病之间的关系一直是一个挑战性问题。在这项研究中,我们引入了一个步态感应平台,该平台可以捕获人类的运动并对健康受试者中的帕金森氏病患者进行分类。具体来说,我们首先展示由力敏压力传感器组成的平台。其次,我们从平台收集的步态信号中提取步态特征。最后,我们收集了386名志愿者(包括218名健康受试者和168名帕金森氏病患者)的实验数据,并进行了广泛的实验,以显示以高置信度对帕金森氏病患者进行分类的可能性。九个不同分类器的实验结果表明,随机森林模型优于其他八个竞争者,其准确度为92.49%,这证明了定量步态分析在帕金森氏病早期检测中的作用。

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