Max Planck Institute for Neurological Research, Neuromodulation & Neurorehabilitation, Cologne, Germany.
Neuroimage. 2013 Feb 15;67:237-46. doi: 10.1016/j.neuroimage.2012.11.027. Epub 2012 Nov 29.
Neural processing is based on interactions between functionally specialized areas that can be described in terms of functional or effective connectivity. Functional connectivity is often assessed by task-free, resting-state functional magnetic resonance imaging (fMRI), whereas effective connectivity is usually estimated from task-based fMRI time-series. To investigate whether different connectivity approaches assess similar network topologies in the same subjects, we scanned 36 right-handed volunteers with resting-state fMRI followed by active-state fMRI involving a hand movement task. Time-series information was extracted from identical locations defined from individual activation maxima derived from the motor task. Dynamic causal modeling (DCM) was applied to the motor task time-series to estimate endogenous and context-dependent effective connectivity. In addition, functional connectivity was computed for both the rest and the motor task condition by means of inter-regional time-series correlations. At the group-level, we found strong interactions between the motor areas of interest in all three connectivity analyses. However, although the sample size warranted 90% power to detect correlations of medium effect size, resting-state functional connectivity was only weakly correlated with both task-based functional and task-based effective connectivity estimates for corresponding region-pairs. By contrast, task-based functional connectivity showed strong positive correlations with DCM effective connectivity parameters. In conclusion, resting-state and task-based connectivity reflect different components of functional integration that particularly depend on the functional state in which the subject is being scanned. Therefore, resting-state fMRI and DCM should be used as complementary measures when assessing functional brain networks.
神经处理是基于功能特化区域之间的相互作用,可以用功能或有效连接来描述。功能连接通常通过无任务的静息态功能磁共振成像 (fMRI) 来评估,而有效连接通常是从基于任务的 fMRI 时间序列中估计出来的。为了研究不同的连接方法是否在相同的被试中评估相似的网络拓扑结构,我们对 36 名右利手志愿者进行了静息态 fMRI 扫描,然后进行了涉及手部运动任务的激活态 fMRI 扫描。时间序列信息是从个体运动任务激活最大值衍生的相同位置提取的。动力因果建模 (DCM) 被应用于运动任务的时间序列,以估计内源性和上下文相关的有效连接。此外,通过区域间时间序列相关性,计算了静息和运动任务条件下的功能连接。在组水平上,我们在所有三种连接分析中都发现了运动感兴趣区之间的强烈相互作用。然而,尽管样本量足以检测到中等效应大小的相关性,但静息态功能连接仅与对应区域对的基于任务的功能和基于任务的有效连接估计呈弱相关。相比之下,基于任务的功能连接与 DCM 有效连接参数呈强烈正相关。总之,静息态和基于任务的连接反映了功能整合的不同组成部分,这些组成部分特别依赖于被扫描的受试者的功能状态。因此,在评估功能大脑网络时,静息态 fMRI 和 DCM 应作为互补的测量手段。