Laird Angela R, Eickhoff Simon B, Li Karl, Robin Donald A, Glahn David C, Fox Peter T
Research Imaging Center, University of Texas Health Science Center, San Antonio, Texas 78229-3900, USA.
J Neurosci. 2009 Nov 18;29(46):14496-505. doi: 10.1523/JNEUROSCI.4004-09.2009.
The default mode network (DMN) comprises a set of regions that exhibit ongoing, intrinsic activity in the resting state and task-related decreases in activity across a range of paradigms. However, DMN regions have also been reported as task-related increases, either independently or coactivated with other regions in the network. Cognitive subtractions and the use of low-level baseline conditions have generally masked the functional nature of these regions. Using a combination of activation likelihood estimation, which assesses statistically significant convergence of neuroimaging results, and tools distributed with the BrainMap database, we identified core regions in the DMN and examined their functional heterogeneity. Meta-analytic coactivation maps of task-related increases were independently generated for each region, which included both within-DMN and non-DMN connections. Their functional properties were assessed using behavioral domain metadata in BrainMap. These results were integrated to determine a DMN connectivity model that represents the patterns of interactions observed in task-related increases in activity across diverse tasks. Subnetwork components of this model were identified, and behavioral domain analysis of these cliques yielded discrete functional properties, demonstrating that components of the DMN are differentially specialized. Affective and perceptual cliques of the DMN were identified, as well as the cliques associated with a reduced preference for motor processing. In summary, we used advanced coordinate-based meta-analysis techniques to explicate behavior and connectivity in the default mode network; future work will involve applying this analysis strategy to other modes of brain function, such as executive function or sensorimotor systems.
默认模式网络(DMN)由一组在静息状态下呈现持续内在活动且在一系列范式中与任务相关的活动减少的区域组成。然而,DMN区域也被报道为与任务相关的活动增加,无论是独立增加还是与网络中的其他区域共同激活。认知减法和低水平基线条件的使用通常掩盖了这些区域的功能本质。我们结合使用激活似然估计(该方法评估神经成像结果的统计学显著收敛性)和BrainMap数据库附带的工具,确定了DMN中的核心区域,并检查了它们的功能异质性。针对每个区域独立生成与任务相关增加的元分析共激活图,其中包括DMN内部和非DMN的连接。使用BrainMap中的行为领域元数据评估它们的功能特性。整合这些结果以确定一个DMN连接模型,该模型代表在各种任务中与任务相关的活动增加中观察到的相互作用模式。确定了该模型的子网组件,对这些集群进行行为领域分析产生了离散的功能特性,表明DMN的组件具有不同的专门化。识别出了DMN的情感和感知集群,以及与对运动处理偏好降低相关的集群。总之,我们使用先进的基于坐标的元分析技术来阐明默认模式网络中的行为和连接性;未来的工作将涉及将这种分析策略应用于其他脑功能模式,如执行功能或感觉运动系统。