Characterizing the neural representations and decoding performance of foot rhythmic motor execution or imagery guided by action observation.

IF 3.8
Xu Wang, Jianjun Meng, Yu Zheng, Yuxuan Wei, Fan Wang, Han Ding, Yan Zhuo
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Abstract

Objective. The limited spatial resolution inherent in electroencephalography (EEG), a widely-adopted non-invasive neuroimaging technique, combined with the intrinsic complexity of performing unilateral lower-limb motor imagery (MI), restricts decoding accuracy. To address these challenges, we propose a paradigm based on action observation-guided rhythmic motor execution (AO-ME) and motor imagery (AO-MI), designed to simplify task demands and enhance decoding performance. Magnetoencephalography (MEG) serves as the data acquisition method, leveraging its superior spatiotemporal resolution.Approach. Spatiotemporal and spectral features were characterized at the sensor level, and source imaging techniques were employed to examine cortical activation patterns. Ensemble task-related component analysis (eTRCA) facilitated decoding of unilateral tasks. And multiple decoding algorithms were employed to validate the effectiveness of the proposed paradigm.Main results. Robust lateralized neural responses were observed, exhibiting low-frequency phase-locked components that distinctly reflected the task frequency and its second harmonic within sensorimotor, parietal, and occipital cortices. Moreover, significant contralateral suppression of the sensorimotor rhythm was observed. Decoding accuracies reached 95.22 ± 4.75% for AO-ME and 88.66 ± 8.52% for AO-MI across twenty participants based on the phase-locked features using eTRCA.Significance. Collectively, our findings demonstrate that the proposed paradigm provides an effective approach for eliciting robust, distinguishable neural responses, enabling high decoding performance of unilateral lower-limb movements. This work offers new insights into the underexplored domain of lower-limb MI and highlights the paradigm's potential for brain-computer interface applications.

动作观察指导下足部韵律运动执行或意象的神经表征及解码表现。
目的:脑电图(EEG)是一种被广泛采用的非侵入性神经成像技术,其固有的有限空间分辨率,加上单侧下肢运动成像(MI)的固有复杂性,限制了解码的准确性。为了解决这些挑战,我们提出了一种基于动作观察引导的韵律运动执行(AO-ME)和运动意象(AO-MI)的范式,旨在简化任务需求并提高解码性能。脑磁图(MEG)作为数据采集方法,利用其优越的时空分辨率。方法:在传感器水平上表征时空和光谱特征,并采用源成像技术来检查皮层激活模式。综合任务相关成分分析(eTRCA)有助于单侧任务的解码。主要结果 ;观察到稳健的侧化神经反应,表现出低频锁相成分,明显反映了任务频率及其在感觉运动皮层、顶叶皮层和枕叶皮层的二次谐波。此外,还观察到明显的对侧感觉运动节律抑制。基于锁相特征的AO-ME解码准确率为95.22%±4.75%,AO-MI解码准确率为88.66%±8.52%。意义:总的来说,我们的研究结果表明,AO-ME/MI范式引发了稳定的、可区分的神经活动,突出了它作为脑机接口(BCI)应用中解码单侧下肢运动的有效策略的潜力。 。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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