Redmond Stephen J, Scalzi Maria Elena, Narayanan Michael R, Lord Stephen R, Cerutti Sergio, Lovell Nigel H
School of Electrical Engineering and Telecommunications, University of New South Wales, Sydney, 2052, Australia.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:2234-7. doi: 10.1109/IEMBS.2010.5627384.
Falls-related injuries in the elderly population represent one of the most significant contributors to rising health care expense in developed countries. In recent years, falls detection technologies have become more common. However, very few have adopted a preferable falls prevention strategy through unsupervised monitoring in the free-living environment. The basis of the monitoring described herein was a self-administered directed-routine (DR) comprising three separate tests measured by way of a waist-mounted triaxial accelerometer. Using features extracted from the manually segmented signals, a reasonable estimate of falls risk can be achieved. We describe here a series of algorithms for automatically segmenting these recordings, enabling the use of the DR assessment in the unsupervised and home environments. The accelerometry signals, from 68 subjects performing the DR, were manually annotated by an observer. Using the proposed signal segmentation routines, an good agreement was observed between the manually annotated markers and the automatically estimated values. However, a decrease in the correlation with falls risk to 0.73 was observed using the automatic segmentation, compared to 0.81 when using markers manually placed by an observer.
老年人因跌倒导致的受伤是发达国家医疗费用不断上涨的最重要因素之一。近年来,跌倒检测技术变得更加普遍。然而,很少有技术能通过在自由生活环境中的无监督监测来采用更好的跌倒预防策略。本文所述监测的基础是一种自我管理的定向常规(DR),它由通过佩戴在腰部的三轴加速度计测量的三个单独测试组成。利用从手动分割信号中提取的特征,可以对跌倒风险进行合理估计。我们在此描述了一系列用于自动分割这些记录的算法,从而能够在无监督的家庭环境中使用DR评估。来自68名执行DR的受试者的加速度计信号由一名观察者进行手动标注。使用所提出的信号分割程序,观察到手动标注的标记与自动估计值之间具有良好的一致性。然而,使用自动分割时,与跌倒风险的相关性降至0.73,而使用观察者手动放置的标记时为0.81。