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Intrinsic functional connectivity predicts individual differences in distractibility

机译:内在的功能连通性可预测个人的分散性差异

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Distractor suppression, the ability to filter and ignore task-irrelevant information, is critical for efficient task performance. While successful distractor suppression relies on a balance of activity in neural networks responsible for attention maintenance (dorsal attention network; DAN), reorientation (ventral attention network; VAN), and internal thought (default mode network, DMN), the degree to which intrinsic connectivity within and between these networks contributes to individual differences in distractor suppression ability is not well-characterized. For the purposes of understanding these interactions, the current study collected resting-state fMRI data from 32 Veterans and, several months later (7 5 months apart), performance on the additional singleton paradigm, a measure of distractor suppression. Using multivariate support vector regression models composed of resting state connectivity between regions of the DAN, VAN, and DMN, and a leave-one-subject-out cross-validation procedure, we were able to predict an individual's task performance, yielding a significant correlation between the actual and predicted distractor suppression (r=0.48, p=0.0053). Network-level analyses revealed that greater within-network DMN connectivity was predictive of better distractor suppression, while greater connectivity between the DMN and attention networks was predictive of poorer distractor suppression. The strongest connection hubs were determined to be the right frontal eye field and temporoparietal junction of the DAN and VAN, respectively, and medial (ventromedial prefrontal and posterior cingulate cortices) and bilateral prefrontal regions of the DMN. These results are amongst a small but growing number of studies demonstrating that resting state connectivity is related to stable individual differences in cognitive ability, and suggest that greater integrity and independence of the DMN is related to better attentional ability. Published by Elsevier Ltd.
机译:干扰抑制是过滤和忽略与任务无关的信息的能力,对于有效执行任务至关重要。成功的干扰物抑制依赖于负责注意力维持的神经网络(背侧注意力网络; DAN),重新定向(腹侧注意力网络; VAN)和内部思想(默认模式网络,DMN)的活动平衡,内在程度这些网络内部和网络之间的连通性导致人们对牵引力抑制能力的个体差异认识不足。为了理解这些相互作用,本研究收集了32位退伍军人的静息状态fMRI数据,并在数月后(相隔7个5个月)收集了其他单例范例的性能,这是对干扰物抑制的一种度量。使用由DAN,VAN和DMN区域之间的静止状态连接以及留一对象交叉验证程序组成的多元支持向量回归模型,我们能够预测一个人的任务绩效,产生显着的相关性在实际和预期的干扰物抑制之间(r = 0.48,p = 0.0053)。网络级别的分析表明,网络内DMN的连通性越高,预示干扰物抑制效果越好,而DMN与注意力网络之间的连通性越高,则预示干扰物抑制效果越差。确定最强的连接集线器分别是DAN和VAN的右额眼视野和颞顶交界,以及DMN的内侧(前额叶前扣带和后扣带皮层)和双侧额叶前区。这些结果是一小部分,但数量不断增加的研究表明,静止状态的连通性与认知能力的稳定个体差异有关,并且表明DMN的更高完整性和独立性与更好的注意力能力有关。由Elsevier Ltd.发布

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