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Supervised machine learning scheme for electromyography-based pre-fall detection system

机译:基于肌电图的跌倒检测系统的监督机器学习方案

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Falls are the leading cause of disability and death among the elderly. Over the years, several inertial-based wearable devices for automatic fall and pre-fall detection have been devised. Under controlled condition, these systems show a high performance for unbalance detection (up to 100% of specificity and sensitivity), however the mean lead time before the impact is about 200-400 ms. Although this period of time is enough to active an impact reduction system (i.e wearable airbag) to minimize injury, it is necessary to increase it so as to improve the system efficiency and reliability. A user's muscle behavior analysis could be more strategic than that of a kinematic evaluation one, permitting a rapid recognition of an imbalance event. This also holds true for several research studies on muscles response during a state of imbalance, whereas a limit number of them deal with the development of wearable electromyography (EMG)-based systems for human imbalance detection, suitable for predicting a lack of balance in real time. With respects these limitations, the main purpose of this work has been the development of a low computational cost expert system for real time and automatic fall risk detection. The analysis of this is achieved through lower limb muscles behavior monitoring. A Machine Learning scheme has been chosen in order to overcome the well-known drawbacks of threshold approaches widely used in pre-fall systems, 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, have been investigated. With a view to reducing the processing complexity, the Markov Random Field (MRF) based Fisher-Markov feature selector was tested. It showed a high degree of accuracy in the EMG-based features selection for lack of balance detection. The Co-Contraction Index, Integrated EMG and Willison Amplitude features have been also considered. The supervised classification phase has been obtained through a low computational cost and a high classification accuracy level Linear Discriminant Analysis. The developed system shows 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. Therefore, the feasibility of a quick and wearable surface EMG-based unbalance detection system, by using Machine Learning methodology, has been demonstrated. The system may recognize a fall event during the initial phase, increasing the decision making time and minimizing the incorrect and inappropriate activations of the protection system, in real life scenario. (C) 2018 Elsevier Ltd. All rights reserved.
机译:跌倒是老年人残疾和死亡的主要原因。多年来,已经设计了几种用于自动跌倒和跌倒前检测的基于惯性的可穿戴设备。在受控条件下,这些系统显示出用于不平衡检测的高性能(高达100%的特异性和敏感性),但是在发生撞击之前的平均前置时间约为200-400 ms。尽管这段时间足以激活减震系统(即可穿戴安全气囊)以最大程度地减少伤害,但有必要增加它以提高系统效率和可靠性。用户的肌肉行为分析可能比运动学评估更具战略意义,从而可以快速识别不平衡事件。对于不平衡状态下肌肉反应的多项研究也是如此,而其中的有限研究涉及基于可穿戴式肌电图(EMG)的人体不平衡检测系统的开发,该系统适用于预测实际身体中的失衡情况。时间。考虑到这些限制,这项工作的主要目的是开发一种用于实时和自动跌倒风险检测的低计算成本专家系统。通过下肢肌肉行为监测来进行分析。为了克服在跌落前系统中广泛使用的阈值方法的众所周知的缺点,选择了一种机器学习方案,在该方法中必须根据用户的特定物理特征来设置算法参数。研究了通常用于分析下肢肌肉活动的十种时域特征。为了降低处理复杂度,测试了基于Markov随机域(MRF)的Fisher-Markov特征选择器。由于缺乏平衡检测,它在基于EMG的特征选择中显示出很高的准确性。还考虑了共同收缩指数,综合肌电图和威利森振幅特征。通过低计算量和高分类准确度线性判别分析获得了监督分类阶段。所开发的系统在受控条件下的敏感性和特异性方面表现出很高的性能(约90%),在撞击之前的平均前置时间约为775 ms。因此,通过使用机器学习方法,已经证明了基于表面肌电图的快速且可穿戴的不平衡检测系统的可行性。在现实生活中,系统可能会识别出初始阶段的跌倒事件,从而增加了决策时间,并使保护系统的错误和不适当激活最小化。 (C)2018 Elsevier Ltd.保留所有权利。

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