在运动执行和运动想象过程中使用脑电图解码和生成基于协同的手部运动

Dingyi Pei, Ramana Vinjamuri
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引用次数: 0

摘要

脑机接口(BMIs)在运动控制和康复方面已被证明是有价值的。运动意象(MI)是开发bmi的关键工具,特别是对于肢体功能受损的个体。在运动执行(ME)和运动想象中,运动规划和内部编程被假设是相似的。运动执行和运动想象在解剖学和功能上的相似性表明,基于协同的运动生成可以通过从运动想象中提取协同或运动原语的神经关联来实现。本研究利用脑电图(EEG)从想象的手部运动中探索基于协同的手部运动生成的可行性。10名受试者参与了一项实验,在想象和执行手部运动任务的同时,记录了他们的手部运动学和神经活动。由执行的运动产生的手部运动协同效应与脑电图频谱特征相关联,以创建神经解码模型。利用该模型对运动意象脑电的运动协同权值进行解码。然后将这些解码的权重与运动学协同作用结合起来产生手部运动。结果,解码模型成功地预测了与抓取不同物体相关的手关节角速度模式。这种适应性证明了该模型能够捕获ME和MI的运动控制特性,促进了我们对基于MI的神经解码的理解。该结果有望在无创性的基于协同作用的神经运动控制和上肢运动障碍人群康复方面的潜在应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decoding and generating synergy-based hand movements using electroencephalography during motor execution and motor imagery
Brain-machine interfaces (BMIs) have proven valuable in motor control and rehabilitation. Motor imagery (MI) is a key tool for developing BMIs, particularly for individuals with impaired limb function. Motor planning and internal programming are hypothesized to be similar during motor execution (ME) and motor imagination. The anatomical and functional similarity between motor execution and motor imagery suggests that synergy-based movement generation can be achieved by extracting neural correlates of synergies or movement primitives from motor imagery. This study explored the feasibility of synergy-based hand movement generation using electroencephalogram (EEG) from imagined hand movements. Ten subjects participated in an experiment to imagine and execute hand movement tasks while their hand kinematics and neural activity were recorded. Hand kinematic synergies derived from executed movements were correlated with EEG spectral features to create a neural decoding model. This model was used to decode the weights of kinematic synergies from motor imagery EEG. These decoded weights were then combined with kinematic synergies to generate hand movements. As a result, the decoding model successfully predicted hand joint angular velocity patterns associated with grasping different objects. This adaptability demonstrates the model's ability to capture the motor control characteristics of ME and MI, advancing our understanding of MI-based neural decoding. The results hold promise for potential applications in noninvasive synergy-based neuromotor control and rehabilitation for populations with upper limb motor disabilities.
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来源期刊
Biomedical engineering advances
Biomedical engineering advances Bioengineering, Biomedical Engineering
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