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Source Detection and Functional Connectivity of the Sensorimotor Cortex during Actual and Imaginary Limb Movement: A Preliminary Study on the Implementation of eConnectome in Motor Imagery Protocols

机译:实际和虚假肢体运动过程中感觉运动皮层的来源检测和功能连接:在运动图像协议中实现eConnectome的初步研究

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摘要

Sensorimotor cortex is activated similarly during motor execution and motor imagery. The study of functional con-nectivity networks (FCNs) aims at successfully modeling the dynamics of information flow between cortical areas. Materials and Methods. Seven healthy subjects performed 4 motor tasks (real foot, imaginary foot, real hand, and imaginary hand movements), while electroencephalography was recorded over the sensorimotor cortex. Event-Related Desynchronization/Synchronization (ERD/ERS) of the mu-rhythm was used to evaluate MI performance. Source detection and FCNs were studied with eConnectome. Results and Discussion. Four subjects produced similar ERD/ERS patterns between motor execution and imagery during both hand and foot tasks, 2 subjects only during hand tasks, and 1 subject only during foot tasks. All subjects showed the expected brain activation in well-performed MI tasks, facilitating cortical source estimation. Preliminary functional connectivity analysis shows formation of networks on the sensorimotor cortex during motor imagery and execution. Conclusions. Cortex activation maps depict sensorimotor cortex activation, while similar functional connectivity networks are formed in the sensorimotor cortex both during actual and imaginary movements. eConnectome is demonstrated as an effective tool for the study of cortex activation and FCN. The implementation of FCN in motor imagery could induce promising advancements in Brain Computer Interfaces.
机译:感觉运动皮层在运动执行和运动成像期间被类似地激活。功能连接网络(FCN)的研究旨在成功地建模皮质区域之间的信息流动的动力学。材料和方法。七个健康受试者执行了4个运动任务(真足,假脚,真手和假想手的动作),而脑电图记录在感觉运动皮层上。 mu节奏的事件相关的不同步/同步(ERD / ERS)用于评估MI性能。使用eConnectome研究了源检测和FCN。结果与讨论。在手部和脚部任务期间,四名受试者在运动执行和成像之间产生相似的ERD / ERS模式,仅在手部任务中产生2名受试者,仅在脚部任务期间产生1名受试者。所有受试者在执行良好的MI任务中均显示出预期的大脑激活,从而有助于皮层来源估计。初步的功能连接分析显示,在运动成像和执行过程中,在感觉运动皮层上形成了网络。结论。皮质激活图描绘了感觉运动皮层的激活,而在实际运动和虚构运动中,在感觉运动皮层中都形成了类似的功能连接网络。 eConnectome被证明是研究皮质激活和FCN的有效工具。在运动图像中实施FCN可能会在脑计算机接口中引发令人鼓舞的进步。

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  • 来源
    《Advances in human-computer interaction》 |2012年第2012期|35.1-35.10|共10页
  • 作者单位

    Lab of Medical Informatics, Medical School, Aristotle University of Thessaloniki (AUTH), 54124 Thessaloniki, Greece;

    Lab of Medical Informatics, Medical School, Aristotle University of Thessaloniki (AUTH), 54124 Thessaloniki, Greece;

    Lab of Medical Informatics, Medical School, Aristotle University of Thessaloniki (AUTH), 54124 Thessaloniki, Greece;

    Lab of Medical Informatics, Medical School, Aristotle University of Thessaloniki (AUTH), 54124 Thessaloniki, Greece;

    Lab of Medical Informatics, Medical School, Aristotle University of Thessaloniki (AUTH), 54124 Thessaloniki, Greece;

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