School of Electrical Engineering and Telecommunications, University of New South Wales, Sydney, NSW, Australia.
IEEE Trans Biomed Eng. 2010 Mar;57(3):534-41. doi: 10.1109/TBME.2009.2033038. Epub 2009 Sep 29.
Falls among the elderly population are a major cause of morbidity and injury-particularly among the over 65 years age group. Validated clinical tests and associated models, built upon assessment of functional ability, have been devised to estimate an individual's risk of falling in the near future. Those identified as at-risk of falling may be targeted for interventative treatment. The migration of these clinical models estimating falls risk to a surrogate technique, for use in the unsupervised environment, might broaden the reach of falls-risk screening beyond the clinical arena. This study details an approach that characterizes the movements of 68 elderly subjects performing a directed routine of unsupervised physical tasks. The movement characterization is achieved through the use of a triaxial accelerometer. A number of fall-related features, extracted from the accelerometry signals, combined with a linear least squares model, maps to a clinically validated measure of falls risk with a correlation of rho = 0.81 (p < 0.001).
老年人跌倒的发生率是发病率和伤害的主要原因,尤其是在 65 岁以上的人群中。已经设计了经过验证的临床测试和相关模型,这些模型建立在对功能能力的评估基础上,用于估计个体在不久的将来跌倒的风险。那些被确定为有跌倒风险的人可能会成为干预治疗的目标。将这些估计跌倒风险的临床模型迁移到一种替代技术中,用于无人监督的环境中,可能会将跌倒风险筛查的范围扩大到临床领域之外。本研究详细介绍了一种方法,该方法描述了 68 名老年受试者执行无人监督的物理任务的定向常规动作。运动特征是通过使用三轴加速度计来实现的。从加速度计信号中提取出一些与跌倒相关的特征,并与线性最小二乘模型相结合,映射到与跌倒风险相关的临床验证测量值,相关系数 rho = 0.81(p < 0.001)。