Youssofzadeh Vahab, Prasad Girijesh, Fagan Andrew J, Reilly Richard B, Martens Sven, Meaney James F, Wong-Lin KongFatt
Intelligent Systems Research Centre, Ulster University, Derry-Londonderry, BT48 7JL, United Kingdom,
Intelligent Systems Research Centre, Ulster University, Derry-Londonderry, BT48 7JL, United Kingdom.
J Neurosci. 2015 Sep 30;35(39):13501-10. doi: 10.1523/JNEUROSCI.2269-15.2015.
Although the visual system has been extensively investigated, an integrated account of the spatiotemporal dynamics of long-range signal propagation along the human visual pathways is not completely known or validated. In this work, we used dynamic causal modeling approach to provide insights into the underlying neural circuit dynamics of pattern reversal visual-evoked potentials extracted from concurrent EEG-fMRI data. A recurrent forward-backward connectivity model, consisting of multiple interacting brain regions identified by EEG source localization aided by fMRI spatial priors, best accounted for the data dynamics. Sources were first identified in the thalamic area, primary visual cortex, as well as higher cortical areas along the ventral and dorsal visual processing streams. Consistent with hierarchical early visual processing, the model disclosed and quantified the neural temporal dynamics across the identified activity sources. This signal propagation is dominated by a feedforward process, but we also found weaker effective feedback connectivity. Using effective connectivity analysis, the optimal dynamic causal modeling revealed enhanced connectivity along the dorsal pathway but slightly suppressed connectivity along the ventral pathway. A bias was also found in favor of the right hemisphere consistent with functional attentional asymmetry. This study validates, for the first time, the long-range signal propagation timing in the human visual pathways. A similar modeling approach can potentially be used to understand other cognitive processes and dysfunctions in signal propagation in neurological and neuropsychiatric disorders. Significance statement: An integrated account of long-range visual signal propagation in the human brain is currently incomplete. Using computational neural modeling on our acquired concurrent EEG-fMRI data under a visual evoked task, we found not only a substantial forward propagation toward "higher-order" brain regions but also a weaker backward propagation. Asymmetry in our model's long-range connectivity accounted for the various observed activity biases. Importantly, the model disclosed the timing of signal propagation across these connectivity pathways and validates, for the first time, long-range signal propagation in the human visual system. A similar modeling approach could be used to identify neural pathways for other cognitive processes and their dysfunctions in brain disorders.
尽管视觉系统已得到广泛研究,但对于沿人类视觉通路的长程信号传播的时空动态的综合描述仍不完全清楚或未得到验证。在这项工作中,我们使用动态因果模型方法来深入了解从同步脑电图-功能磁共振成像数据中提取的模式反转视觉诱发电位的潜在神经回路动态。一个由多个相互作用的脑区组成的循环前向-后向连接模型,由功能磁共振成像空间先验辅助的脑电图源定位确定,最能解释数据动态。首先在丘脑区域、初级视觉皮层以及沿腹侧和背侧视觉处理流的更高皮层区域识别出源。与分层早期视觉处理一致,该模型揭示并量化了跨已识别活动源的神经时间动态。这种信号传播以前馈过程为主,但我们也发现了较弱的有效反馈连接。使用有效连接分析,最优动态因果模型揭示了沿背侧通路的连接增强,但沿腹侧通路的连接略有抑制。还发现存在有利于右半球的偏向,这与功能注意力不对称一致。这项研究首次验证了人类视觉通路中的长程信号传播时间。类似的建模方法可能潜在地用于理解神经和神经精神疾病中信号传播的其他认知过程和功能障碍。意义声明:目前对人类大脑中长程视觉信号传播的综合描述尚不完整。通过对我们在视觉诱发任务下获取的同步脑电图-功能磁共振成像数据进行计算神经建模,我们不仅发现了向“高阶”脑区的大量前向传播,还发现了较弱的后向传播。我们模型中长程连接的不对称解释了各种观察到的活动偏向。重要的是,该模型揭示了信号在这些连接通路中传播的时间,并首次验证了人类视觉系统中的长程信号传播。类似的建模方法可用于识别其他认知过程的神经通路及其在脑部疾病中的功能障碍。