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使用肌电信号检测上肢外骨骼在伸展任务中的运动起始。

Detection of movement onset using EMG signals for upper-limb exoskeletons in reaching tasks.

机构信息

The BioRobotics Institute, Scuola Superiore Sant'Anna, Pisa, Italy.

IRCCS Fondazione Don Carlo Gnocchi, Milan, Italy.

出版信息

J Neuroeng Rehabil. 2019 Mar 29;16(1):45. doi: 10.1186/s12984-019-0512-1.

Abstract

BACKGROUND

To assist people with disabilities, exoskeletons must be provided with human-robot interfaces and smart algorithms capable to identify the user's movement intentions. Surface electromyographic (sEMG) signals could be suitable for this purpose, but their applicability in shared control schemes for real-time operation of assistive devices in daily-life activities is limited due to high inter-subject variability, which requires custom calibrations and training. Here, we developed a machine-learning-based algorithm for detecting the user's motion intention based on electromyographic signals, and discussed its applicability for controlling an upper-limb exoskeleton for people with severe arm disabilities.

METHODS

Ten healthy participants, sitting in front of a screen while wearing the exoskeleton, were asked to perform several reaching movements toward three LEDs, presented in a random order. EMG signals from seven upper-limb muscles were recorded. Data were analyzed offline and used to develop an algorithm that identifies the onset of the movement across two different events: moving from a resting position toward the LED (Go-forward), and going back to resting position (Go-backward). A set of subject-independent time-domain EMG features was selected according to information theory and their probability distributions corresponding to rest and movement phases were modeled by means of a two-component Gaussian Mixture Model (GMM). The detection of movement onset by two types of detectors was tested: the first type based on features extracted from single muscles, whereas the second from multiple muscles. Their performances in terms of sensitivity, specificity and latency were assessed for the two events with a leave one-subject out test method.

RESULTS

The onset of movement was detected with a maximum sensitivity of 89.3% for Go-forward and 60.9% for Go-backward events. Best performances in terms of specificity were 96.2 and 94.3% respectively. For both events the algorithm was able to detect the onset before the actual movement, while computational load was compatible with real-time applications.

CONCLUSIONS

The detection performances and the low computational load make the proposed algorithm promising for the control of upper-limb exoskeletons in real-time applications. Fast initial calibration makes it also suitable for helping people with severe arm disabilities in performing assisted functional tasks.

摘要

背景

为了帮助残疾人,外骨骼必须配备能够识别用户运动意图的人机接口和智能算法。表面肌电图(sEMG)信号可能适用于此目的,但由于高个体间变异性,其在日常生活活动中辅助设备实时操作的共享控制方案中的适用性有限,这需要定制校准和培训。在这里,我们开发了一种基于机器学习的算法,用于根据肌电信号检测用户的运动意图,并讨论了其在控制严重上肢残疾患者上肢外骨骼方面的适用性。

方法

十位健康参与者坐在屏幕前,同时穿着外骨骼,要求他们执行几个向三个 LED 移动的动作,这些动作以随机顺序呈现。记录来自七个上肢肌肉的肌电信号。离线分析数据,并开发一种算法,用于识别两个不同事件中的运动开始:从静止位置向 LED 移动(向前),以及返回静止位置(向后)。根据信息论选择了一组独立于个体的时域肌电特征,并用双组件高斯混合模型(GMM)对与静止和运动阶段相对应的特征概率分布进行建模。使用两种类型的检测器测试了运动开始的检测:第一种基于从单个肌肉提取的特征,第二种基于从多个肌肉提取的特征。使用离开一个受试者的测试方法评估了两种事件的灵敏度、特异性和潜伏期。

结果

向前运动的运动开始检测到最大灵敏度为 89.3%,向后运动的灵敏度为 60.9%。特异性最佳的性能分别为 96.2%和 94.3%。对于两种事件,算法都能够在实际运动之前检测到运动开始,同时计算负荷与实时应用兼容。

结论

检测性能和低计算负荷使所提出的算法有望用于实时应用中外骨骼的控制。快速初始校准也使其适合帮助严重上肢残疾患者执行辅助功能任务。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9f2f/6440169/2cc69033a018/12984_2019_512_Fig1_HTML.jpg

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