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首页> 外文期刊>NeuroImage >Multiple neural networks supporting a semantic task: an fMRI study using independent component analysis.
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Multiple neural networks supporting a semantic task: an fMRI study using independent component analysis.

机译:支持语义任务的多个神经网络:使用独立成分分析的功能磁共振成像研究。

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摘要

A visual task for semantic access involves a number of brain regions. However, previous studies either examined the role of each region separately using univariate approach, or analyzed a single brain network using covariance connectivity analysis. We hypothesize that these brain regions construct several functional networks underpinning a word semantic access task, these networks being engaged in different cognitive components with distinct temporal characters. In this paper, multivariate independent component analysis (ICA) was used to reveal these networks based on functional magnetic resonance imaging (fMRI) data acquired during a visual and an auditory word semantic judgment task. Our results demonstrated that there were three task-related independent components (ICs), corresponding to various cognitive components involved in the visual task. Furthermore, ICA separation on the auditory task showed consistency of the results with our hypothesis, regardless of the input modalities.
机译:用于语义访问的视觉任务涉及多个大脑区域。但是,以前的研究要么使用单变量方法分别检查了每个区域的作用,要么使用协方差连通性分析来分析单个大脑网络。我们假设这些大脑区域构建了几个支持单词语义访问任务的功能网络,这些网络参与了具有不同时间特征的不同认知组件。在本文中,多变量独立成分分析(ICA)用于基于视觉和听觉单词语义判断任务期间获得的功能性磁共振成像(fMRI)数据来揭示这些网络。我们的结果表明,存在三个与任务相关的独立组件(IC),分别对应于视觉任务中涉及的各种认知组件。此外,无论输入方式如何,在听觉任务上的ICA分离都表明结果与我们的假设一致。

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