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Inhibitory Behavioral Control: A Stochastic Dynamic Causal Modeling Study Using Network Discovery Analysis

机译:抑制性行为控制:使用网络发现分析的随机动态因果建模研究

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摘要

This study employed functional magnetic resonance imaging (fMRI)-based dynamic causal modeling (DCM) to study the effective (directional) neuronal connectivity underlying inhibitory behavioral control. fMRI data were acquired from 15 healthy subjects while they performed a Go/NoGo task with two levels of NoGo difficulty (Easy and Hard NoGo conditions) in distinguishing spatial patterns of lines. Based on the previous inhibitory control literature and the present fMRI activation results, 10 brain regions were postulated as nodes in the effective connectivity model. Due to the large number of potential interconnections among these nodes, the number of models for final analysis was reduced to a manageable level for the whole group by conducting DCM Network Discovery, which is a recently developed option within the Statistical Parametric Mapping software package. Given the optimum network model, the DCM Network Discovery analysis found that the locations of the driving input into the model from all the experimental stimuli in the Go/NoGo task were the amygdala and the hippocampus. The strengths of several cortico-subcortical connections were modulated (influenced) by the two NoGo conditions. Specifically, connectivity from the middle frontal gyrus (MFG) to hippocampus was enhanced by the Easy condition and further enhanced by the Hard NoGo condition, possibly suggesting that compared with the Easy NoGo condition, stronger control from MFG was needed for the hippocampus to discriminate/learn the spatial pattern in order to respond correctly (inhibit), during the Hard NoGo condition.
机译:这项研究采用了基于功能磁共振成像(fMRI)的动态因果模型(DCM),以研究抑制行为控制背后的有效(定向)神经元连通性。 fMRI数据是从15位健康受试者中获得的,他们在执行Go / NoGo任务时有两种级别的NoGo难度(轻松和困难NoGo条件)以区分线条的空间模式。根据先前的抑制性对照文献和当前的fMRI激活结果,在有效连通性模型中假定10个大脑区域为结节。由于这些节点之间潜在的大量互连,通过进行DCM网络发现(最终是统计参数映射软件包中最近开发的选项),将最终分析的模型数量减少到整个组的可管理水平。给定最佳网络模型后,DCM网络发现分析发现,Go / NoGo任务中所有实验刺激向模型输入的驾驶输入的位置是杏仁核和海马体。两种NoGo条件调节(影响)了几个皮质-皮质下连接的强度。具体而言,Easy条件增强了中额回(MFG)与海马的连接性,而Hard NoGo条件进一步增强了海马的连通性,这可能表明与Easy NoGo条件相比,MFG需要更强的控制能力来区分/了解在Hard NoGo条件下正确响应(抑制)的空间模式。

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