Soaz Cristina, Diepold Klaus
IEEE Trans Biomed Eng. 2016 May;63(5):933-942. doi: 10.1109/TBME.2015.2480296. Epub 2015 Sep 18.
One of the major reasons why the elderly lose their ability to live independently at home is the decline in gait performance. A measure to assess gait performance using accelerometers is step counting. The main problem with most step detection algorithms is the loss of accuracy at low speeds ( 0.8 m/s) which limits their use in frail elderly populations. In this paper, a step detection algorithm was developed and validated using data from 10 healthy adults and 21 institutionalized seniors, predominantly frail older adults. Data were recorded using a single waist-worn triaxial accelerometer as each of the subjects performed one 10-m-walk trial. The algorithm demonstrated high mean sensitivity (99 ± 1%) for gait speeds between 0.2-1.5 m/s. False positives were evaluated with a series of motion activities performed by one subject. These activities simulate acceleration patterns similar to those generated near the body's center of mass while walking in terms of amplitude signal and periodicity. Cycling was the activity which led to a higher number of false positives. By applying template matching, we reduced by 73% the number of false positives in the cycling activity and eliminated all false positives in the rest of activities. Using K-means clustering, we obtained two different characteristic step patterns, one for normal and one for frail walking, where particular gait events related to limb impacts and muscle flexions were recognized. The proposed system can help to identify seniors at high risk of functional decline and monitor the progress of patients undergoing exercise therapy interventions.
老年人失去在家独立生活能力的主要原因之一是步态表现下降。使用加速度计评估步态表现的一项指标是步数计数。大多数步检测算法的主要问题是在低速(0.8米/秒)时准确性下降,这限制了它们在体弱老年人群中的应用。本文开发了一种步检测算法,并使用来自10名健康成年人和21名机构养老老年人(主要是体弱老年人)的数据进行了验证。当每个受试者进行一次10米步行试验时,使用一个佩戴在腰部的三轴加速度计记录数据。该算法在0.2 - 1.5米/秒的步态速度下显示出较高的平均灵敏度(99 ± 1%)。通过一名受试者进行的一系列运动活动评估误报情况。这些活动模拟了在行走时类似于身体质心附近产生的加速度模式,包括幅度信号和周期性。骑自行车是导致误报数量较多的活动。通过应用模板匹配,我们将骑自行车活动中的误报数量减少了73%,并消除了其他活动中的所有误报。使用K均值聚类,我们获得了两种不同的特征步模式,一种是正常步行的,一种是体弱步行的,其中识别出了与肢体撞击和肌肉屈伸相关的特定步态事件。所提出的系统有助于识别功能下降高风险的老年人,并监测接受运动治疗干预的患者的进展情况。