...
首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >Reconfiguration of Brain Network Architectures between Resting-State and Complexity-Dependent Cognitive Reasoning
【24h】

Reconfiguration of Brain Network Architectures between Resting-State and Complexity-Dependent Cognitive Reasoning

机译:休息状态与复杂性认知推理的脑网络架构重新配置

获取原文
获取原文并翻译 | 示例
           

摘要

Our capacity for higher cognitive reasoning has a measurable limit. This limit is thought to arise from the brain's capacity to flexibly reconfigure interactions between spatially distributed networks. Recent work, however, has suggested that reconfigurations of task-related networks are modest when compared with intrinsic "resting-state" network architecture. Here we combined resting-state and task-driven functional magnetic resonance imaging to examine how flexible, task-specific reconfigurations associated with increasing reasoning demands are integrated within a stable intrinsic brain topology. Human participants (21 males and 28 females) underwent an initial resting-state scan, followed by a cognitive reasoning task involving different levels of complexity, followed by a second resting-state scan. The reasoning task required participants to deduce the identity of a missing element in a 4 x 4 matrix, and item difficulty was scaled parametrically as determined by relational complexity theory. Analyses revealed that external task engagement was characterized by a significant change in functional brain modules. Specifically, resting-state and null-task demand conditions were associated with more segregated brain-network topology, whereas increases in reasoning complexity resulted in merging of resting-state modules. Further increments in task complexity did not change the established modular architecture, but affected selective patterns of connectivity between frontoparietal, subcortical, cingulo-opercular, and default-mode networks. Larger increases in network efficiency within the newly established task modules were associated with higher reasoning accuracy. Our results shed light on the network architectures that underlie external task engagement, and highlight selective changes in brain connectivity supporting increases in task complexity.
机译:我们对更高认知推理的能力具有可测量的极限。认为这一限制来自大脑的能力灵活地重新配置空间分布式网络之间的相互作用。然而,最近的工作表明,与内在“休息状态”网络架构相比,任务相关网络的重新配置是适度的。在这里,我们组合休息状态和任务驱动的功能磁共振成像,以检查与提高推理需求相关的特定任务特异性重新配置如何集成在稳定的内在脑拓扑中。人体参与者(21个男性和28名女性)经历了初始休息状态扫描,其次是一种认知推理任务,涉及不同水平的复杂性,其次是第二休息状态扫描。所需任务所需的任务将参与者推断出4×4矩阵中缺失元素的标识,并且通过关系复杂性理论确定的参数来缩放项目难度。分析显示,外部任务接合的特征在于功能性脑模块的显着变化。具体而言,休息状态和无效任务需求条件与更加隔离的脑网拓扑相关联,而推理复杂性的增加导致休息状态模块的合并。任务复杂性的进一步增量没有改变建立的模块化架构,而是影响了前部,下迁移,CINGULO-ORECHOM和默认模式网络之间的连接的选择性模式。新建立的任务模块内的网络效率的增加越大越来越大于推理准确性。我们的结果在网络架构上阐明了外部任务参与的网络架构,并且突出了脑连接的选择性变化,支持任务复杂性的增加。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号