Injury Prevention and Mobility Laboratory, Simon Fraser University, Burnaby, B.C., Canada; School of Engineering Science, Simon Fraser University, Burnaby, B.C., Canada.
Gait Posture. 2014;39(1):506-12. doi: 10.1016/j.gaitpost.2013.08.034. Epub 2013 Sep 23.
Falls are the number one cause of injury in older adults. Lack of objective evidence on the cause and circumstances of falls is often a barrier to effective prevention strategies. Previous studies have established the ability of wearable miniature inertial sensors (accelerometers and gyroscopes) to automatically detect falls, for the purpose of delivering medical assistance. In the current study, we extend the applications of this technology, by developing and evaluating the accuracy of wearable sensor systems for determining the cause of falls. Twelve young adults participated in experimental trials involving falls due to seven causes: slips, trips, fainting, and incorrect shifting/transfer of body weight while sitting down, standing up from sitting, reaching and turning. Features (means and variances) of acceleration data acquired from four tri-axial accelerometers during the falling trials were input to a linear discriminant analysis technique. Data from an array of three sensors (left ankle+right ankle+sternum) provided at least 83% sensitivity and 89% specificity in classifying falls due to slips, trips, and incorrect shift of body weight during sitting, reaching and turning. Classification of falls due to fainting and incorrect shift during rising was less successful across all sensor combinations. Furthermore, similar classification accuracy was observed with data from wearable sensors and a video-based motion analysis system. These results establish a basis for the development of sensor-based fall monitoring systems that provide information on the cause and circumstances of falls, to direct fall prevention strategies at a patient or population level.
跌倒 是老年人受伤的首要原因。缺乏对跌倒原因和情况的客观证据,往往是制定有效预防策略的障碍。先前的研究已经证明了可穿戴微型惯性传感器(加速度计和陀螺仪)自动检测跌倒的能力,目的是提供医疗援助。在当前的研究中,我们通过开发和评估可穿戴传感器系统确定跌倒原因的准确性,扩展了这项技术的应用。12 名年轻人参与了涉及 7 种原因的实验性试验:滑倒、绊倒、晕厥以及坐下、从坐下站起来、伸手和转身时体重转移不正确。在跌倒试验中,从四个三轴加速度计采集的加速度数据的特征(均值和方差)被输入到线性判别分析技术中。来自三个传感器阵列(左脚踝+右脚踝+胸骨)的数据在分类因滑倒、绊倒和体重转移不正确而导致的跌倒时提供了至少 83%的灵敏度和 89%的特异性。对晕厥和起身时体重转移不正确导致的跌倒进行分类,在所有传感器组合中效果较差。此外,可穿戴传感器和基于视频的运动分析系统的数据具有相似的分类准确性。这些结果为开发基于传感器的跌倒监测系统奠定了基础,该系统可提供有关跌倒原因和情况的信息,以便在患者或人群层面上指导跌倒预防策略。