IEEE Trans Biomed Eng. 2011 Aug;58(8). doi: 10.1109/TBME.2011.2151193. Epub 2011 May 5.
Injurious falls are a prevalent and serious problem faced by a growing elderly population. Accurate assessment and long-term monitoring of falls-risk could prove useful in the prevention of falls, by identifying those at risk of falling early so targeted intervention may be prescribed. Previous studies have demonstrated the feasibility of using triaxial accelerometry to estimate the risk of a person falling in the near future, by characterizing their movement as they execute a restricted sequence of predefined movements in an unsupervised environment, termed a directed routine. This study presents an improvement on this previously published system, which relied explicitly on time-domain features extracted from the accelerometry signals. The proposed improvement incorporates features derived from spectral analysis of the same accelerometry signals; in particular the harmonic ratios between signal harmonics and the fundamental frequency component are used. Employing these additional frequency-domain features, in combination with the previously reported time-domain features, an increase in the observed correlation with the clinical gold-standard risk of falling, from = 0:81 to = 0:96, was achieved when using manually annotated event segmentation markers; using an automated algorithm to segment the signals gave corresponding results of = 0:73 and = 0:99, before and after the inclusion of spectral features. The strong correlation with falls-risk observed in this preliminary study further supports the feasibility of using an unsupervised assessment of falls-risk in the home environment.
伤害性跌倒对于日益老龄化的人口来说是一个普遍且严重的问题。通过识别那些有跌倒风险的人,及早采取有针对性的干预措施,对跌倒风险进行准确评估和长期监测可能有助于预防跌倒。先前的研究已经证明,通过在无人监督的环境中对三轴加速度计信号进行分析,来估计一个人在不久的将来跌倒的风险是可行的。该方法通过对个体执行受限的预定运动序列时的运动进行特征化,来实现这一目标,这个运动序列被称为定向日常活动。本研究对之前发表的系统进行了改进,该系统明确依赖于从加速度计信号中提取的时域特征。所提出的改进方法将来自于对相同加速度计信号的频谱分析的特征纳入其中;特别是利用信号谐波和基频分量之间的谐波比作为特征。当使用手动注释的事件分割标记时,与临床金标准跌倒风险的观测相关性从 = 0.81 增加到 = 0.96,这是通过结合先前报道的时域特征并采用这些额外的频域特征实现的;使用自动算法对信号进行分割,在包括频谱特征之前和之后,分别得到 = 0.73 和 = 0.99 的结果。这项初步研究中观察到与跌倒风险的强相关性进一步支持了在家庭环境中使用无人监督的跌倒风险评估的可行性。