Department of Physical Medicine & Rehabilitation, Michigan Medicine, University of Michigan, Ann Arbor, Michigan, USA.
Department of Kinesiology and Community Health, College of Applied Health Sciences, University of Illinois at Urbana-Champaign, Urbana, Illinois, USA.
Assist Technol. 2023 Nov 2;35(6):523-531. doi: 10.1080/10400435.2023.2177775. Epub 2023 Feb 28.
Automated fall detection devices for individuals who use wheelchairs to minimize the consequences of falls are lacking. This study aimed to develop and train a fall detection algorithm to differentiate falls from wheelchair mobility activities using machine learning techniques. Thirty, healthy, ambulatory, young adults simulated falls from a wheelchair and performed other wheelchair-related mobility activities in a laboratory. Neural Network classifiers were used to train the algorithm developed based on data retrieved from accelerometers mounted at the participant's wrist, chest, and head. Results indicate excellent accuracy to differentiate between falls and wheelchair mobility activities. The sensors mounted at the wrist, chest, and head presented with an accuracy of 100%, 96.9%, and 94.8%, respectively, using data from 258 falls and 220 wheelchair mobility activities. This pilot study indicates that a fall detection algorithm developed in a laboratory setting based on fall accelerometer patterns can accurately differentiate wheelchair-related falls and wheelchair mobility activities. This algorithm should be integrated into a wrist-worn devices and tested among individuals who use a wheelchair in the community.
目前缺乏专门针对使用轮椅的个体的自动跌倒检测设备,以最大限度地降低跌倒的后果。本研究旨在开发和训练一种跌倒检测算法,使用机器学习技术区分跌倒和轮椅移动活动。三十名健康、能走动的年轻成年人在实验室中模拟从轮椅上跌倒,并进行其他与轮椅相关的移动活动。神经网络分类器用于训练基于安装在参与者手腕、胸部和头部的加速度计获取的数据开发的算法。结果表明,该算法能够准确区分跌倒和轮椅移动活动。使用来自 258 次跌倒和 220 次轮椅移动活动的数据,分别在手腕、胸部和头部安装的传感器的准确率为 100%、96.9%和 94.8%。这项初步研究表明,基于跌倒加速度计模式在实验室环境中开发的跌倒检测算法可以准确区分与轮椅相关的跌倒和轮椅移动活动。该算法应集成到手戴设备中,并在社区中使用轮椅的个体中进行测试。