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首页> 外文期刊>NeuroImage >Fusing concurrent EEG-fMRI with dynamic causal modeling: Application to effective connectivity during face perception
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Fusing concurrent EEG-fMRI with dynamic causal modeling: Application to effective connectivity during face perception

机译:用动态因果建模融合并发EEG-FMRI:在面对感知期间应用于有效连接的应用

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摘要

Despite the wealth of research on face perception, the interactions between core regions in the face-sensitive network of the visual cortex are not well understood. In particular, the link between neural activity in face-sensitive brain regions measured by fMRI and EEG markers of face-selective processing in the N170 component is not well established. In this study, we used dynamic causal modeling (DCM) as a data fusion approach to integrate concurrently acquired EEG and fMRI data during the perception of upright compared with inverted faces. Data features derived from single-trial EEG variability were used as contextual modulators on fMRI-derived estimates of effective connectivity between key regions of the face perception network. The overall construction of our model space was highly constrained by the effects of task and ERP parameters on our fMRI data. Bayesian model selection suggested that the occipital face area (OFA) acted as a central gatekeeper directing visual information to the superior temporal sulcus (STS), the fusiform face area (FFA), and to a medial region of the fusiform gyrus (mFG). The connection from the OFA to the STS was strengthened on trials in which N170 amplitudes to upright faces were large. In contrast, the connection from the OFA to the mFG, an area known to be involved in object processing, was enhanced for inverted faces particularly on trials in which N170 amplitudes were small. Our results suggest that trial-by-trial variation in neural activity at around 170 ms, reflected in the N170 component, reflects the relative engagement of the OFA to STS/FFA network over the OFA to mFG object processing network for face perception. Importantly, the DCMs predicted the observed data significantly better by including the modulators derived from the N170, highlighting the value of incorporating EEG-derived information to explain interactions between regions as a multi-modal data fusion method for combined EEG-fMRI. (C) 2013 Elsevier Inc. All rights reserved.
机译:尽管对脸部感知有丰富的研究,但视觉皮层的面部敏感网络中的核心区之间的相互作用并不了解。特别地,在N170组分中由FMRI和面部选择性处理的FMRI和EEG标记测量的面部敏感脑区域中的神经活性之间的链接不是很好的。在本研究中,我们使用动态因果模型(DCM)作为数据融合方法,以在与倒置面相比直立的感知期间集成同伴获取的脑电图和FMRI数据。数据从单审EEG变化导出的特征被用作面部知觉网络的关键区域之间的有效连接的功能磁共振成像衍生估计语境调节剂。我们模型空间的整体构建受到FMRI数据上任务和ERP参数的影响受到高度约束。贝叶斯模型选择表明,枕骨面积(OFA)作为中央门守,将视觉信息引导到上颞沟(STS),梭形面积区域(FFA)和梭形转丝(MFG)的内侧区域。在The OFA到STS的连接得到了对直立面的N170振幅大的试验。相反,从OFA到MFG的连接,已知有涉及物体处理的区域,用于倒置面,特别是在N170振幅小的试验中。我们的结果表明在大约170毫秒的神经活动该试验按试验变化,反映在N170成分,反映了光放大器的光纤,以STS / FFA网络在OFA到MFG对象处理网络用于面部知觉的相对接合。重要的是,DCMS通过包括从N170导出的调制器来显着更好地预测观察到的数据,突出了结合EEG推导信息来解释区域之间的相互作用作为组合EEG-FMRI的多模态数据融合方法。 (c)2013 Elsevier Inc.保留所有权利。

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