Gardner Tom, Goulden Nia, Cross Emily S
School of Psychology, Bangor University, Bangor, Gwynedd, LL57 2AS, United Kingdom, and.
School of Psychology, Bangor University, Bangor, Gwynedd, LL57 2AS, United Kingdom, and Department of Social and Cultural Psychology, Donders Institute for Brain, Cognition and Behaviour, Radboud University Nijmegen, Nijmegen, 6500HE, The Netherlands
J Neurosci. 2015 Jan 28;35(4):1561-72. doi: 10.1523/JNEUROSCI.2942-14.2015.
When watching another person's actions, a network of sensorimotor brain regions, collectively termed the action observation network (AON), is engaged. Previous research suggests that the AON is more responsive when watching familiar compared with unfamiliar actions. However, most research into AON function is premised on comparisons of AON engagement during different types of task using univariate, magnitude-based approaches. To better understand the relationship between action familiarity and AON engagement, here we examine how observed movement familiarity modulates AON activity in humans using dynamic causal modeling, a type of effective connectivity analysis. Twenty-one subjects underwent fMRI scanning while viewing whole-body dance movements that varied in terms of their familiarity. Participants' task was to either predict the next posture the dancer's body would assume or to respond to a non-action-related attentional control question. To assess individuals' familiarity with each movement, participants rated each video on a measure of visual familiarity after being scanned. Parametric analyses showed more activity in left middle temporal gyrus, inferior parietal lobule, and inferior frontal gyrus as videos were rated as increasingly familiar. These clusters of activity formed the regions of interest for dynamic causal modeling analyses, which revealed attenuation of effective connectivity bidirectionally between parietal and temporal AON nodes when participants observed videos they rated as increasingly familiar. As such, the findings provide partial support for a predictive coding model of the AON, as well as illuminate how action familiarity manipulations can be used to explore simulation-based accounts of action understanding.
在观察他人的动作时,大脑中一个由感觉运动脑区组成的网络会被激活,这个网络统称为动作观察网络(AON)。先前的研究表明,与不熟悉的动作相比,观察熟悉的动作时AON的反应更强烈。然而,大多数关于AON功能的研究都是基于使用单变量、基于幅度的方法对不同类型任务中AON参与情况的比较。为了更好地理解动作熟悉度与AON参与之间的关系,我们在这里使用动态因果模型(一种有效连接性分析类型)来研究观察到的动作熟悉度如何调节人类的AON活动。21名受试者在观看全身舞蹈动作时接受功能磁共振成像扫描,这些动作在熟悉程度上有所不同。参与者的任务是预测舞者身体接下来会呈现的姿势,或者回答一个与动作无关的注意力控制问题。为了评估个体对每个动作的熟悉程度,参与者在扫描后根据视觉熟悉度对每个视频进行评分。参数分析表明,随着视频被评为越来越熟悉,左侧颞中回、顶下小叶和额下回的活动增加更多。这些活动簇构成了动态因果模型分析的感兴趣区域,分析结果显示,当参与者观察他们评为越来越熟悉的视频时,顶叶和颞叶AON节点之间的有效连接性双向减弱。因此,这些发现为AON的预测编码模型提供了部分支持,同时也阐明了如何利用动作熟悉度操作来探索基于模拟的动作理解理论。