Department of Intelligent Systems, Jožef Stefan Institute, 1000 Ljubljana, Slovenia.
Jožef Stefan International Postgraduate School, 1000 Ljubljana, Slovenia.
Sensors (Basel). 2020 Sep 19;20(18):5373. doi: 10.3390/s20185373.
Falls are a significant threat to the health and independence of elderly people and represent an enormous burden on the healthcare system. Successfully predicting falls could be of great help, yet this requires a timely and accurate fall risk assessment. Gait abnormalities are one of the best predictive signs of underlying locomotion conditions and precursors of falls. The advent of wearable sensors and wrist-worn devices provides new opportunities for continuous and unobtrusive monitoring of gait during daily activities, including the identification of unexpected changes in gait. To this end, we present in this paper a novel method for determining gait abnormalities based on a wrist-worn device and a deep neural network. It integrates convolutional and bidirectional long short-term memory layers for successful learning of spatiotemporal features from multiple sensor signals. The proposed method was evaluated using data from 18 subjects, who recorded their normal gait and simulated abnormal gait while wearing impairment glasses. The data consist of inertial measurement unit (IMU) sensor signals obtained from smartwatches that the subjects wore on both wrists. Numerous experiments showed that the proposed method provides better results than the compared methods, achieving 88.9% accuracy, 90.6% sensitivity, and 86.2% specificity in the detection of abnormal walking patterns using data from an accelerometer, gyroscope, and rotation vector sensor. These results indicate that reliable fall risk assessment is possible based on the detection of walking abnormalities with the use of wearable sensors on a wrist.
跌倒对老年人的健康和独立性是一个重大威胁,也是医疗系统的巨大负担。成功预测跌倒可能会有很大的帮助,但这需要及时和准确的跌倒风险评估。步态异常是潜在运动障碍和跌倒前兆的最佳预测标志之一。可穿戴传感器和腕戴设备的出现为在日常活动中连续、非侵入式监测步态提供了新的机会,包括识别步态的意外变化。为此,我们在本文中提出了一种基于腕戴设备和深度神经网络的新方法来确定步态异常。它集成了卷积和双向长短时记忆层,能够成功地从多个传感器信号中学习时空特征。该方法使用 18 名受试者的数据进行了评估,这些受试者在佩戴视力障碍眼镜时记录了正常步态和模拟的异常步态。数据包括智能手表上的惯性测量单元 (IMU) 传感器信号,受试者在两个手腕上都佩戴了智能手表。大量实验表明,与比较方法相比,该方法提供了更好的结果,在使用加速度计、陀螺仪和旋转矢量传感器的数据检测异常行走模式时,准确率为 88.9%,灵敏度为 90.6%,特异性为 86.2%。这些结果表明,基于使用腕戴传感器检测行走异常,可以可靠地评估跌倒风险。