Department of Psychology, Sungkyunkwan University, Seoul 03063, South Korea.
Center for Neuroscience Imaging Research, Institute for Basic Science, Suwon 16419, South Korea, and.
Soc Cogn Affect Neurosci. 2022 Sep 1;17(9):777-787. doi: 10.1093/scan/nsac010.
Meta-analysis of functional magnetic resonance imaging (fMRI) data is an effective method for capturing the distributed patterns of brain activity supporting discrete cognitive and affective processes. One opportunity presented by the resulting meta-analysis maps (MAMs) is as a reference for better understanding the nature of individual contrast maps (ICMs) derived from specific task fMRI data. Here, we compared MAMs from 148 neuroimaging studies representing emotion categories of fear, anger, disgust, happiness and sadness with ICMs from fearful > neutral and angry > neutral faces from an independent dataset of task fMRI (n = 1263). Analyses revealed that both fear and anger ICMs exhibited the greatest pattern similarity to fear MAMs. As the number of voxels included for the computation of pattern similarity became more selective, the specificity of MAM-ICM correspondence decreased. Notably, amygdala activity long considered critical for processing threat-related facial expressions was neither sufficient nor necessary for detecting MAM-ICM pattern similarity effects. Our analyses suggest that both fearful and angry facial expressions are best captured by distributed patterns of brain activity, a putative neural correlate of threat. More generally, our analyses demonstrate how MAMs can be leveraged to better understand affective processes captured by ICMs in task fMRI data.
功能磁共振成像(fMRI)数据的元分析是捕捉支持离散认知和情感过程的大脑活动分布模式的有效方法。由此产生的元分析图谱(MAM)提供了一个机会,可以作为参考,更好地理解从特定任务 fMRI 数据得出的个体对比图谱(ICM)的性质。在这里,我们将 148 项神经影像学研究的 MAMs 与来自独立任务 fMRI 数据集的恐惧>中性和愤怒>中性面孔的 ICMs 进行了比较(n=1263)。分析表明,恐惧和愤怒的 ICM 与恐惧的 MAM 表现出最大的模式相似性。随着用于计算模式相似性的体素数量变得更具选择性,MAM-ICM 对应关系的特异性降低。值得注意的是,杏仁核活动长期以来被认为是处理与威胁相关的面部表情的关键,但对于检测 MAM-ICM 模式相似性效应既不是充分的也不是必要的。我们的分析表明,无论是恐惧还是愤怒的面部表情,都可以通过大脑活动的分布式模式来最好地捕捉,这是威胁的潜在神经关联。更一般地说,我们的分析表明了如何利用 MAM 来更好地理解任务 fMRI 数据中 ICM 捕获的情感过程。