Decoding neural activity preceding balance loss during standing with a lower-limb exoskeleton using an interpretable deep learning model

Akshay Sujatha Ravindran, Christopher A. Malaya, Isaac John, G. Francisco, C. Layne, J. Contreras-Vidal
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引用次数: 5

Abstract

Objective: Falls are a leading cause of death in adults 65 and older. Recent efforts to restore lower-limb function in these populations have seen an increase in the use of wearable robotic systems; however, fall prevention measures in these systems require early detection of balance loss to be effective. Prior studies have investigated whether kinematic variables contain information about an impending fall, but few have examined the potential of using electroencephalography (EEG) as a fall-predicting signal and how the brain responds to avoid a fall. Approach: To address this, we decoded neural activity in a balance perturbation task while wearing an exoskeleton. We acquired EEG, electromyography (EMG), and center of pressure (COP) data from seven healthy participants during mechanical perturbations while standing. The timing of the perturbations was randomized in all trials. Main results: We found perturbation evoked potentials (PEP) components as early as 75–134 ms after the onset of the external perturbation, which preceded both the peak in EMG (∼180 ms) and the COP (∼350 ms). A convolutional neural network trained to predict balance perturbations from single-trial EEG had a mean F-score of 75.0 ± 4.3 % . Clustering GradCAM-based model explanations demonstrated that the model utilized components in the PEP and was not driven by artifacts. Additionally, dynamic functional connectivity results agreed with model explanations; the nodal connectivity measured using phase difference derivative was higher in the occipital-parietal region in the early stage of perturbations, before shifting to the parietal, motor, and back to the frontal-parietal channels. Continuous-time decoding of COP trajectories from EEG, using a gated recurrent unit model, achieved a mean Pearson’s correlation coefficient of 0.7 ± 0.06. Significance: Overall, our findings suggest that EEG signals contain short-latency neural information related to an impending fall, which may be useful for developing brain-machine interface systems for fall prevention in robotic exoskeletons.
使用可解释的深度学习模型解码下肢外骨骼站立时平衡丧失前的神经活动
目的:跌倒是65岁及以上成年人死亡的主要原因。最近在这些人群中恢复下肢功能的努力已经看到了可穿戴机器人系统的使用增加;然而,在这些系统中,预防跌倒的措施需要早期发现平衡丧失才能有效。先前的研究已经调查了运动学变量是否包含即将跌倒的信息,但很少有研究使用脑电图(EEG)作为跌倒预测信号的潜力以及大脑如何反应以避免跌倒。方法:为了解决这个问题,我们在佩戴外骨骼时解码了平衡扰动任务中的神经活动。我们获得了7名健康参与者在站立时受到机械扰动时的脑电图、肌电图(EMG)和压力中心(COP)数据。在所有试验中,扰动的时间是随机的。主要结果:我们发现扰动诱发电位(PEP)成分早在外部扰动开始后75-134 ms,早于肌电峰(~ 180 ms)和COP峰(~ 350 ms)。经训练预测单次EEG平衡扰动的卷积神经网络平均f值为75.0±4.3%。聚类基于gradcam的模型解释表明,该模型利用了PEP中的组件,而不是由工件驱动。此外,动态功能连接结果与模型解释一致;使用相位差导数测量的节点连通性在扰动早期在枕顶叶区域较高,然后转移到顶叶、运动和回到额顶叶通道。使用门控循环单元模型对EEG的COP轨迹进行连续时间解码,平均Pearson相关系数为0.7±0.06。意义:总的来说,我们的研究结果表明脑电图信号包含与即将到来的跌倒相关的短潜伏期神经信息,这可能有助于开发用于机器人外骨骼预防跌倒的脑机接口系统。
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