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Extendable supervised dictionary learning for exploring diverse and concurrent brain activities in task-based fMRI

机译:可扩展的监督字典学习,用于探索基于任务的FMRI中的不同和并发大脑活动

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摘要

Recently, a growing body of studies have demonstrated the simultaneous existence of diverse brain activities, e.g., task-evoked dominant response activities, delayed response activities and intrinsic brain activities, under specific task conditions. However, current dominant task-based functional magnetic resonance imaging (tfMRI) analysis approach, i.e., the general linear model (GLM), might have difficulty in discovering those diverse and concurrent brain responses sufficiently. This subtraction-based model-driven approach focuses on the brain activities evoked directly from the task paradigm, thus likely overlooks other possible concurrent brain activities evoked during the information processing. To deal with this problem, in this paper, we propose a novel hybrid framework, called extendable supervised dictionary learning (E-SDL), to explore diverse and concurrent brain activities under task conditions. A critical difference between E-SDL framework and previous methods is that we systematically extend the basic task paradigm regressor into meaningful regressor groups to account for possible regressor variation during the information processing procedure in the brain. Applications of the proposed framework on five independent and publicly available tfMRI datasets from human connectome project (HCP) simultaneously revealed more meaningful group-wise consistent task-evoked networks and common intrinsic connectivity networks (ICNs). These results demonstrate the advantage of the proposed framework in identifying the diversity of concurrent brain activities in tfMRI datasets.
机译:最近,越来越多的研究已经证明了在特定任务条件下同时存在多样化的大脑活动,例如任务诱发的主导反应活动,延迟响应活动和内在大脑活动。然而,基于主导的基于任务的功能磁共振成像(TFMRI)分析方法,即一般线性模型(GLM),可能困难地发现那些多样化的和并发脑响应。这种基于减法的模型驱动方法侧重于直接从任务范例诱捕的大脑活动,因此可能忽略了在信息处理期间唤起的其他可能的并发大脑活动。要处理这个问题,请在本文中,我们提出了一种新颖的混合框架,称为可扩展的监督字典学习(E-SDL),以探索任务条件下的多样化和并发大脑活动。 E-SDL框架和以前的方法之间的临界差异是,我们系统地将基本任务范例回归到有意义的回归组扩展到有意义的回归组,以考虑大脑中信息处理过程中的可能的回归变化。拟议框架在人类连接项目(HCP)上的五个独立和公开的TFMRI数据集中的应用同时显示了更有意义的群体一致的任务诱发网络和常见的内在连接网络(ICN)。这些结果表明了拟议框架在识别TFMRI数据集中的并发大脑活动的多样性方面的优势。

著录项

  • 来源
    《Brain imaging and behavior》 |2018年第3期|共15页
  • 作者单位

    Northwestern Polytech Univ Sch Automat Xian Shaanxi Peoples R China;

    Northwestern Polytech Univ Sch Automat Xian Shaanxi Peoples R China;

    Northwestern Polytech Univ Sch Automat Xian Shaanxi Peoples R China;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

    Northwestern Polytech Univ Sch Automat Xian Shaanxi Peoples R China;

    Northwestern Polytech Univ Sch Automat Xian Shaanxi Peoples R China;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

    Northwestern Polytech Univ Sch Automat Xian Shaanxi Peoples R China;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 神经病学与精神病学;
  • 关键词

    Task fMRI; Hybrid framework; Dictionary learning; Sparse representation;

    机译:任务FMRI;混合框架;字典学习;稀疏表示;

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