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Single-trial analysis of post-movement MEG beta synchronization using independent component analysis (ICA)

机译:使用独立分量分析(ICA)的运动后egβ同步的单试分析

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The human brain ~20-Hz rhythm measured by electroencephalography (EEG) and magnetoencephalography (MEG) has been used as a clinical examinaion index of motor function which originates in the anterior bank of the central sulcus in human brain. In human voluntary movement, it is composed of three phases, planning, execution and recovery which has been suggested that localized event-related alpha desynchronization (ERD) upon movement can be viewed as an EEG/MEG correlate of an activated cortical motor network, servicing planning and execution, while beta event-related synchronization (ERS) may reflect deactivation/inhibition during the recovery phase in the underlying cortical network. The single-trial detection of ~20Hz rhythm is changlled because of its low signal amplitude and its signal-to-noise ration (SNR) in EEG/MEG measured neural activities. This present study proposes a method based on independent component analysis (ICA) for extraction of the sensorimotor rhythm from magnetoencephalographic (MEG) measurements of a right finger lifting task in a single trail. ICA decomposes a single trial recording into a set of temporal independent components (IC) and corresponding spatial maps in which the task-related components are selected by visual inspection. Pertinent ICs are then selected by visual inspection to reconstruct task-related beta oscillatory activity which is then subjected to beta rebound quantification and source estimation in further analyses. Since the event-related oscillatory activity of human brain is related to subject's performance and state, the ICA-based single trial method enables the possibility of studying in a single-trial, which in turn may shed light on the intricate dynamics of the brain.
机译:通过脑电图(EEG)和磁性脑图(MEG)测量的人脑〜20-Hz节律已被用作电机功能的临床检验指标,该临床检验指标起源于人脑中央沟的前岸。在人类自愿运动中,它由三个阶段,规划,执行和恢复组成,已经提出了在移动时,可以将局部事件相关的alpha去同步(ERD)视为激活的皮质电机网络,服务的EEG / MEG相关性规划和执行,虽然β事件相关的同步(ERS)可以反映在底层皮质网络中的恢复阶段期间反映停用/禁止。由于其低信号幅度及其在EEG / MEG测量神经活动中的信号幅度和信噪比(SNR)中的低信号幅度及其信噪比(SNR),单试检测是常规的。本研究提出了一种基于独立分量分析(ICA)的方法,用于从单个路径中从磁性垂直(MEG)测量的传感器节奏提取SensimoTOR节奏。 ICA将单个试验记录分解为一组时间独立组件(IC)和相应的空间地图,其中通过视觉检查选择任务相关的组件。然后通过视觉检查选择相关的IC以重建任务相关的β振荡活动,然后进行β反弹量化和进一步分析的源估计。由于人脑的事件相关振荡活动与受试者的性能和国家有关,因此基于ICA的单试方法可以在一次试验中进行学习的可能性,这反过来可能会在大脑的复杂动态上脱光。

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