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首页> 外文期刊>Journal of neural engineering >Learning in brain-computer interface control evidenced by joint decomposition of brain and behavior
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Learning in brain-computer interface control evidenced by joint decomposition of brain and behavior

机译:学习脑电脑界面控制通过联合分解大脑和行为证明了

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摘要

Objective. Motor imagery-based brain-computer interfaces (BCIs) use an individual’s ability to volitionally modulate localized brain activity, often as a therapy for motor dysfunction or to probe causal relations between brain activity and behavior. However, many individuals cannot learn to successfully modulate their brain activity, greatly limiting the efficacy of BCI for therapy and for basic scientific inquiry. Formal experiments designed to probe the nature of BCI learning have offered initial evidence that coherent activity across spatially distributed and functionally diverse cognitive systems is a hallmark of individuals who can successfully learn to control the BCI. However, little is known about how these distributed networks interact through time to support learning. Approach. Here, we address this gap in knowledge by constructing and applying a multimodal network approach to decipher brain-behavior relations in motor imagery-based brain-computer interface learning using magnetoencephalography. Specifically, we employ a minimally constrained matrix decomposition method - non-negative matrix factorization - to simultaneously identify regularized, covarying subgraphs of functional connectivity, to assess their similarity to task performance, and to detect their time-varying expression. Main results. We find that learning is marked by diffuse brain-behavior relations: good learners displayed many subgraphs whose temporal expression tracked performance. Individuals also displayed marked variation in the spatial properties of subgraphs such as the connectivity between the frontal lobe and the rest of the brain, and in the temporal properties of subgraphs such as the stage of learning at which they reached maximum expression. From these observations, we posit a conceptual model in which certain subgraphs support learning by modulating brain activity in sensors near regions important for sustaining attention. To test this model, we use tools that stipulate regional dynamics on a networked system (network control theory), and find that good learners display a single subgraph whose temporal expression tracked performance and whose architecture supports easy modulation of sensors located near brain regions important for attention. Significance. The nature of our contribution to the neuroscience of BCI learning is therefore both computational and theoretical; we first use a minimally-constrained, individual specific method of identifying mesoscale structure in dynamic brain activity to show how global connectivity and interactions between distributed networks supports BCI learning, and then we use a formal network model of control to lend theoretical support to the hypothesis that these identified subgraphs are well suited to modulate attention.
机译:客观的。基于电动机的脑电脑界面(BCIS)使用个人的能力,使能力调节局部大脑活动,通常是运动功能障碍的治疗或探讨大脑活动和行为之间的因果关系。然而,许多人无法学习成功调节他们的大脑活动,大大限制了BCI对治疗和基本科学探究的疗效。旨在探讨BCI学习性质的正式实验提供了初步证据,即空间分布和功能多样的认知系统跨空间分布和功能多样的认知系统的相干活动是能够成功学习控制BCI的个人的标志。但是,对于这些分布式网络如何通过时间互动以支持学习而众所周知。方法。在这里,我们通过构建和应用多峰网络方法来解决这种跨越式脑电计算机界面学习中的脑行为关系来解决知识的这种差距。具体而言,我们采用了最小约束的矩阵分解方法 - 非负矩阵分解 - 以同时识别正则化的功能连通性,以评估它们与任务性能的相似性,并检测它们的时变表达。主要结果。我们发现学习被漫反射脑行为关系标志:好的学习者展示了许多时级表达式跟踪性能的子图。个体也显示出诸如额叶和剩余脑部之间的连接性的空间特性的标记变化,以及在诸如它们达到最大表达的学习阶段的子图的时间特性。从这些观察中,我们通过调节在持续关注的区域附近的传感器中的大脑活动来分发一个概念模型,其中某些子图通过调节传感器的大脑活动。要测试此模型,我们使用规定在网络系统(网络控制理论)上区域动态的工具(网络控制理论),并发现好学习者显示一个单个子图,其时间表达式跟踪性能,其架构支持易于调制位于大脑区域附近的传感器注意力。意义。因此,我们对BCI学习的神经科学的贡献的性质是计算和理论的;我们首先使用最小受约束的个体特定方法来识别动态大脑活动中的Mescleale结构,以显示分布式网络之间的全球连接和交互如何支持BCI学习,然后我们使用正式的网络模型来借鉴假设的理论支持这些所识别的子图非常适合调节关注。

著录项

  • 来源
    《Journal of neural engineering》 |2020年第4期|046018.1-046018.21|共21页
  • 作者单位

    Neuroscience Graduate Group Perelman School of Medicine University of Pennsylvania Philadelphia PA 19104 United States of America Department of Bioengineering School of Engineering & Applied Science University of Pennsylvania Philadelphia PA 19104 United States of America;

    Inria Paris Aramis project-team F-75013 Paris France Institut du Cerveau et de la Moelle Epiniere ICM Inserm U 1127 CNRS UMR 7225 Sorbonne Universite F-75013 Paris France;

    Department of Bioengineering School of Engineering & Applied Science University of Pennsylvania Philadelphia PA 19104 United States of America Human Research & Engineering Directorate US CCDC Army Research Laboratory Aberdeen MD United States of America Department of Psychological & Brain Sciences University of California Santa Barbara CA United States of America;

    Department of Bioengineering School of Engineering & Applied Science University of Pennsylvania Philadelphia PA 19104 United States of America Human Research & Engineering Directorate US CCDC Army Research Laboratory Aberdeen MD United States of America;

    Department of Mechanical Engineering University of California Riverside CA 92521 United States of America;

    Inria Paris Aramis project-team F-75013 Paris France Institut du Cerveau et de la Moelle Epiniere ICM Inserm U 1127 CNRS UMR 7225 Sorbonne Universite F-75013 Paris France;

    Department of Electrical & Systems Engineering School of Engineering & Applied Science University of Pennsylvania Philadelphia PA 19104 United States of America;

    Department of Bioengineering School of Engineering & Applied Science University of Pennsylvania Philadelphia PA 19104 United States of America Department of Electrical & Systems Engineering School of Engineering & Applied Science University of Pennsylvania Philadelphia PA 19104 United States of America Department of Neurology Perelman School of Medicine University of Pennsylvania Philadelphia PA 19104 United States of America Department of Psychiatry Perelman School of Medicine University of Pennsylvania Philadelphia PA 19104 United States of America Department of Physics & Astronomy College of Arts & Sciences University of Pennsylvania Philadelphia PA 19104 United States of America The Santa Fe Institute Santa Fe NM 87501 United States of America;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    brain-computer interface; magnetoencephalography; control theory; network neuroscience; learning;

    机译:脑电脑界面;磁性脑图;控制理论;网络神经科学;学习;

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