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DECOMPOSITION OF NEURAL CIRCUITS OF HUMAN ATTENTION USING A MODEL-BASED ANALYSIS: sSoTS MODEL APPLICATION TO fMRI DATA

机译:使用基于模型的分析分解人类的神经电路:SSTIS模型应用于FMRI数据

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The complex neural circuits found in fMRI studies of human attention were decomposed using a model of spiking neurons. The model for visual search over time and space (sSoTS) incorporates different synaptic components (NMDA, AMPA, GABA) and a frequency adaptation mechanism based on I_(AHP) current. This frequency adaptation current can act as a mechanism that suppresses the previously attended items. It has been shown [1] that when the passive process (frequency adaptation) is coupled with a process of active inhibition, new items can be successfully prioritized over time periods matching those found in psychological studies. In this study we use the model to decompose the neural regions mediating the processes of active attentional guidance, and the inhibition of distractors, in search. Activity related to excitatory guidance and inhibitory suppression was extracted from the model and related to different brain regions by using the synaptic activation from sSoTS's maps as regressors for brain activity derived from standard imaging analysis techniques (FSL). The results show that sSoTS pulls-apart discrete brain areas mediating excitatory attentional guidance and active distractor inhibition.
机译:在FMRI中发现的人类注意的复杂神经电路使用尖刺神经元模型分解。随着时间的推移和空间(SSSIS)的视觉搜索模型包括基于I_(AHP)电流的不同突触分量(NMDA,AMPA,GABA)和频率适应机制。该频率适应电流可以充当抑制先前参加的项目的机制。已经示出了[1]当被动过程(频率适应)与主动抑制过程耦合时,可以通过在心理学研究中匹配的时间段地成功优先考虑新项目。在这项研究中,我们使用模型来分解介导活动注意力引导过程的神经区域,以及在搜索中抑制分散的人。与兴奋性引导和抑制性抑制相关的活性从模型中提取,并通过使用SSSots的地图的突触激活作为来自标准成像分析技术(FSL)的脑活动的突触激活相关的脑区域。结果表明,SSOTS拉开 - 介导兴奋性注意力指导和主动分散抑制的离散脑区域。

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