一种用于中风患者步态检测的无线物联网系统

A. J. Majumder, Yosuf ElSaadany, M. ElSaadany, D. Ucci, F. Rahman
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引用次数: 12

摘要

通过物联网(IoT)进行的步态监测能够提供对日常生活的全面评估。现有的步态异常预测系统主要考虑步态相关参数。他们的准确性是有限的,因为由于受伤的后果是由步态中的不同事件显著影响。本研究的目的是提出一个多感觉系统,研究步行模式,以预测中风患者的谨慎步态。在这项研究中,使用内置传感器的智能手机和带有Wi-Fi通信模块的物联网鞋来谨慎地监测鞋垫压力和患者的运动加速度。据我们所知,我们是第一个使用智能手机中实现的步态时空参数来预测中风患者谨慎步态的人。该系统可以警告用户他们的异常步态,并可能避免他们因害怕摔倒而受伤。
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A wireless IoT system towards gait detection in stroke patients
Gait monitoring through the Internet of Things (IoT) is able to provide an overall assessment of daily living. All existing systems for predicting abnormality in gait mainly consider the gait related parameters. Their accuracy is limited because consequences due to injuries are significantly affected by different events in the gait. The objective of this study is to present a multisensory system that investigates walking patterns to predict a cautious gait in stroke patient. For this study, a smartphone built-in sensor and an IoT-shoe with a Wi-Fi communication module is used to discreetly monitor insole pressure and accelerations of the patient's motion. To the best of our knowledge, we are the first to use the gait spatiotemporal parameters implemented in smartphones to predict a cautious gait in a stroke patient. The proposed system can warn the user about their abnormal gait and possibly save them from forthcoming injuries from fear of falling.
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