Quagliarella L, Sasanelli N, Belgiovine G
Sezione di Ingegneria Biomedica, Dip. di Scienze Chirurgiche Generali e Specialistiche, Università di Bari, Bari - Italy.
J Appl Biomater Biomech. 2008 May-Aug;6(2):119-26.
Falls and loss of consciousness (FLoC) is the leading cause of serious health problems, above all in the elderly population, since the subjects involved are not able to ask for help and may lie in critical conditions for a long time, thus deteriorating into severe conditions which can even lead to death. Therefore, developing a device capable of automatically detecting a FLoC and activating an alarm call seems to be of utmost importance. This study intended to develop such a device using an accelerometer sensor. Four hundred and sixty simulated falls were performed by 20 subjects: 10 young subjects and 10 elderly subjects. The young subjects were asked to perform 200 FLoCs as well as 60 non common activities (NCAs), whereas the elderly subjects were asked to carry out only 200 activities of daily living (ADL). The signal used to detect the fall event was acquired by a single accelerometer placed on the subjects' belts. The test set was divided into two groups of the same size: Training Set (TS) and Verification Set (VS). The first set was meant to determine the related algorithm, whereas the second set was intended to check its reliability. The proposed algorithm was devised to detect the effects of the three phases of a FLoC (impact of the body on the ground, lying position and immobility) into the acceleration and jerk signals along the cranio-caudal axis (CCA). The correct detection of all FLoC cases and the absence of false positives among ADL corroborate the usefulness of the device proposed.
跌倒与意识丧失(FLoC)是严重健康问题的主要原因,尤其是在老年人群体中,因为相关受试者无法求助,可能长时间处于危急状态,进而恶化为严重状况甚至导致死亡。因此,开发一种能够自动检测FLoC并触发警报呼叫的设备似乎至关重要。本研究旨在使用加速度计传感器开发这样一种设备。20名受试者进行了460次模拟跌倒:10名年轻受试者和10名老年受试者。年轻受试者被要求进行200次FLoC以及60次非日常活动(NCA),而老年受试者仅被要求进行200次日常生活活动(ADL)。用于检测跌倒事件的信号由放置在受试者腰部的单个加速度计采集。测试集被分成大小相同的两组:训练集(TS)和验证集(VS)。第一组用于确定相关算法,而第二组用于检查其可靠性。所提出的算法旨在检测FLoC三个阶段(身体撞击地面、躺卧姿势和静止不动)对沿颅尾轴(CCA)的加速度和加加速度信号的影响。对所有FLoC病例的正确检测以及ADL中无假阳性结果证实了所提出设备的有效性。