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Decoding Movements from Human Deep Brain Local Field Potentials Using Radial Basis Function Neural Network

机译:使用径向基函数神经网络从人类深部大脑局部场电位解码运动

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Research on neural process is fundamental to understand neurodegenerative disorders and develop its interventions. This also enhances the development of brain machine interfaces to assist neurologically impaired human and rehabilitation. This study aimed to decode deep brain local field potentials (LFPs) related to voluntary movement activities and its forthcoming laterality, left or right sided visually cued movements. The frequency related components of local field potentials from the sub thalamic nucleus (STN) were decomposed by time scale domain using wavelet packet transform (WPT). In each frequency component, event related instantaneous power was considered as features for decoding. Decoding of movement (Event vs. Rest) and its sequential laterality (Left vs. Right) were performed using radial basis function neural network (RBFNN). The average classification accuracy achieved 85.93% for distinguishing movement from the rest, while laterality discrimination, the accuracy achieved 70.81% with 10 fold cross validation. The RBFNN classifier successfully managed to achieve decoding accuracy better than the chance level during movement and its laterality for all subjects.
机译:对神经过程的研究是了解神经退行性疾病和发展其干预措施的基础。这也增强了大脑机器接口的开发,以帮助神经系统受损的人和康复。这项研究旨在解码与自愿运动活动及其即将出现的偏侧性,左侧或右侧视觉提示运动有关的深部大脑局部场电位(LFP)。使用小波包变换(WPT)通过时标域分解来自丘脑底核(STN)的局部场电势的频率相关分量。在每个频率分量中,事件相关的瞬时功率被认为是解码的特征。使用径向基函数神经网络(RBFNN)对运动(事件与静止)及其顺序的横向性(左与右)进行解码。区分运动与其他运动的平均分类准确度达到85.93%,而对横向性的区分,经过10倍交叉验证,准确度达到70.81%。 RBFNN分类器成功地实现了解码精度,优于移动过程中的机会水平及其对所有对象的侧向性。

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