Kim Hanbyul, Lee Hong Ji, Lee Woongwoo, Kwon Sungjun, Kim Sang Kyong, Jeon Hyo Seon, Park Hyeyoung, Shin Chae Won, Yi Won Jin, Jeon Beom S, Park Kwang S
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:3751-4. doi: 10.1109/EMBC.2015.7319209.
Freezing of gait (FOG) is a common motor impairment to suffer an inability to walk, experienced by Parkinson's disease (PD) patients. FOG interferes with daily activities and increases fall risk, which can cause severe health problems. We propose a novel smartphone-based system to detect FOG symptoms in an unconstrained way. The feasibility of single device to sense gait characteristic was tested on the various body positions such as ankle, trouser pocket, waist and chest pocket. Using measured data from accelerometer and gyroscope in the smartphone, machine learning algorithm was applied to classify freezing episodes from normal walking. The performance of AdaBoost.M1 classifier showed the best sensitivity of 86% at the waist, 84% and 81% in the trouser pocket and at the ankle respectively, which is comparable to the results of previous studies.
冻结步态(FOG)是帕金森病(PD)患者常见的一种运动障碍,表现为无法行走。冻结步态会干扰日常活动并增加跌倒风险,进而可能导致严重的健康问题。我们提出了一种基于智能手机的新型系统,以无约束的方式检测冻结步态症状。在脚踝、裤兜、腰部和胸袋等不同身体部位测试了使用单个设备感知步态特征的可行性。利用智能手机中加速度计和陀螺仪的测量数据,应用机器学习算法对正常行走和冻结发作进行分类。AdaBoost.M1分类器的性能在腰部表现出最佳灵敏度,为86%,在裤兜和脚踝处分别为84%和81%,这与先前研究的结果相当。