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数据驱动的正常压力脑积水患者步态模式研究。

Data-Driven Investigation of Gait Patterns in Individuals Affected by Normal Pressure Hydrocephalus.

机构信息

Product Development Group Zurich, Department of Mechanical and Process Engineering, ETH Zurich, 8092 Zurich, Switzerland.

Institute for Dynamic Systems and Control, ETH Zurich, 8092 Zurich, Switzerland.

出版信息

Sensors (Basel). 2021 Sep 27;21(19):6451. doi: 10.3390/s21196451.

Abstract

Normal pressure hydrocephalus (NPH) is a chronic and progressive disease that affects predominantly elderly subjects. The most prevalent symptoms are gait disorders, generally determined by visual observation or measurements taken in complex laboratory environments. However, controlled testing environments can have a significant influence on the way subjects walk and hinder the identification of natural walking characteristics. The study aimed to investigate the differences in walking patterns between a controlled environment (10 m walking test) and real-world environment (72 h recording) based on measurements taken via a wearable gait assessment device. We tested whether real-world environment measurements can be beneficial for the identification of gait disorders by performing a comparison of patients' gait parameters with an aged-matched control group in both environments. Subsequently, we implemented four machine learning classifiers to inspect the individual strides' profiles. Our results on twenty young subjects, twenty elderly subjects and twelve NPH patients indicate that patients exhibited a considerable difference between the two environments, in particular gait speed (-value p=0.0073), stride length (-value p=0.0073), foot clearance (-value p=0.0117) and swing/stance ratio (-value p=0.0098). Importantly, measurements taken in real-world environments yield a better discrimination of NPH patients compared to the controlled setting. Finally, the use of stride classifiers provides promise in the identification of strides affected by motion disorders.

摘要

常压性脑积水(NPH)是一种慢性进行性疾病,主要影响老年患者。最常见的症状是步态障碍,通常通过视觉观察或在复杂的实验室环境中进行的测量来确定。然而,受控的测试环境会对受测者的行走方式产生重大影响,并阻碍对自然行走特征的识别。本研究旨在通过可穿戴步态评估设备进行测量,研究基于受控环境(10 米步行测试)和真实环境(72 小时记录)的行走模式差异。我们通过在两种环境中比较患者的步态参数与年龄匹配的对照组,来检验真实环境测量是否有助于识别步态障碍。随后,我们实施了四个机器学习分类器来检查各个步幅的特征。我们对二十名年轻受试者、二十名老年受试者和十二名 NPH 患者的研究结果表明,患者在两种环境下表现出明显的差异,特别是步行速度(-值 p=0.0073)、步长(-值 p=0.0073)、足离地高度(-值 p=0.0117)和摆动/站立比例(-值 p=0.0098)。重要的是,与受控环境相比,在真实环境中测量的结果能更好地区分 NPH 患者。最后,步幅分类器的使用有望识别受运动障碍影响的步幅。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e3d7/8512819/b710bed8590d/sensors-21-06451-g001.jpg

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