Department of Biomedical Engineering,Politecnico di Milano, 20133 Milan, Italy.
IEEE Trans Neural Syst Rehabil Eng. 2010 Dec;18(6):619-27. doi: 10.1109/TNSRE.2010.2070807. Epub 2010 Aug 30.
Falls and fall related injuries are a significant cause of morbidity, disability, and health care utilization, particularly among the age group of 65 years and over. The ability to detect falls events in an unsupervised manner would lead to improved prognoses for falls victims. Several wearable accelerometry and gyroscope-based falls detection devices have been described in the literature; however, they all suffer from unacceptable false positive rates. This paper investigates the augmentation of such systems with a barometric pressure sensor, as a surrogate measure of altitude, to assist in discriminating real fall events from normal activities of daily living. The acceleration and air pressure data are recorded using a wearable device attached to the subject's waist and analyzed offline. The study incorporates several protocols including simulated falls onto a mattress and simulated activities of daily living, in a cohort of 20 young healthy volunteers (12 male and 8 female; age: 23.7 ±3.0 years). A heuristically trained decision tree classifier is used to label suspected falls. The proposed system demonstrated considerable improvements in comparison to an existing accelerometry-based technique; showing an accuracy, sensitivity and specificity of 96.9%, 97.5%, and 96.5%, respectively, in the indoor environment, with no false positives generated during extended testing during activities of daily living. This is compared to 85.3%, 75%, and 91.5% for the same measures, respectively, when using accelerometry alone. The increased specificity of this system may enhance the usage of falls detectors among the elderly population.
跌倒及相关伤害是发病率、残疾和医疗保健利用的一个重要原因,尤其是在 65 岁及以上的人群中。能够以非监督的方式检测跌倒事件,将有助于改善跌倒受害者的预后。文献中已经描述了几种基于可穿戴式加速度计和陀螺仪的跌倒检测设备;然而,它们都存在不可接受的高误报率。本文研究了通过气压传感器对这些系统进行增强,作为高度的替代测量值,以帮助区分真实的跌倒事件和日常生活中的正常活动。加速度和气压数据使用佩戴在受试者腰部的可穿戴设备记录,并离线进行分析。该研究纳入了几个协议,包括模拟在床垫上跌倒和模拟日常生活活动,共有 20 名年轻健康志愿者(12 名男性和 8 名女性;年龄:23.7±3.0 岁)参与。使用启发式训练的决策树分类器对疑似跌倒进行标记。与现有的基于加速度计的技术相比,该系统表现出了显著的改进;在室内环境下,准确性、敏感性和特异性分别达到 96.9%、97.5%和 96.5%,在日常生活活动的扩展测试中没有产生误报。相比之下,单独使用加速度计时,相同指标的准确性、敏感性和特异性分别为 85.3%、75%和 91.5%。该系统的特异性提高可能会增加老年人对跌倒探测器的使用。