表面肌电图技术评价跌倒风险

A. Leone, G. Rescio, P. Siciliano
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引用次数: 4

摘要

跌倒是老年人致残和死亡的主要原因之一。已经实现了几种基于惯性的自动跌倒和预跌倒检测可穿戴设备。他们首先使用基于阈值的方法,他们在影响之前的平均前置时间约为200-500毫秒。这项工作的主要目的是建立一个考虑下肢表面肌电图的跌倒风险评估框架。选择用户的肌肉行为是因为它可以比用户的运动学评估更快地识别不平衡事件。此外,采用了一种机器学习方案,克服了众所周知的阈值方法必须根据用户的具体物理特征设置算法参数的缺点。研究了下肢肌肉活动分析中常用的10种时域特征,采用基于马尔科夫随机场的Fisher-Markov选择器降低信号处理复杂度。通过低计算成本和高分类精度的线性判别分析获得监督分类阶段。该系统在受控条件下具有很高的灵敏度和特异性(约90%),平均前置时间约为775 ms。
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Fall risk evaluation by surface electromyography technology
Falls are one of the main causes of disability and death among the elderly. Several inertial-based wearable devices for automatic fall and pre-fall detection have been realized. They use the threshold-based approach above all and their mean lead-time before the impact is about 200–500 ms. The main purpose of the work was to develop a framework for fall risk assessment considering the lower limb surface electromyography. The user's muscle behavior was chosen because it may allow a faster recognition of an imbalance event than the user's kinematic evaluation. Moreover, a machine learning scheme was adopted to overcome the drawbacks of well-known threshold approaches, in which the algorithm parameters have to be set according to the users' specific physical characteristics. Ten kinds of time-domain features, commonly used in the analysis of the lower-limb muscle activity, were investigated and the Markov Random Field based Fisher-Markov selector was used to reduce the signal processing complexity. The supervised classification phase was obtained through a low computational cost and a high classification accuracy Linear Discriminant Analysis. The developed system showed high performance in terms of sensitivity and specificity (about 90%) in controlled conditions, with a mean lead-time before the impact of about 775 ms.
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