Center for Brain Disorders and Cognitive Science, Shenzhen Key Laboratory of Affective and Social Neuroscience, Shenzhen University, Shenzhen, China; Center for Emotion and Brain, Shenzhen Institute of Neuroscience, Shenzhen, China; Guangdong-Hong Kong-Macao Greater Bay Area Research Institute for Neuroscience and Neurotechnologies, Kwun Tong, Hong Kong, China.
State Key Laboratory of Cognitive Neuroscience and Learning & IDG/McGovern Institute for Brain Research, Beijing Normal University, Beijing, China.
Neurosci Biobehav Rev. 2021 Aug;127:820-836. doi: 10.1016/j.neubiorev.2021.05.023. Epub 2021 May 28.
Discrimination of facial expressions is an elementary function of the human brain. While the way emotions are represented in the brain has long been debated, common and specific neural representations in recognition of facial expressions are also complicated. To examine brain organizations and asymmetry on discrete and dimensional facial emotions, we conducted an activation likelihood estimation meta-analysis and meta-analytic connectivity modelling on 141 studies with a total of 3138 participants. We found consistent engagement of the amygdala and a common set of brain networks across discrete and dimensional emotions. The left-hemisphere dominance of the amygdala and AI across categories of facial expression, but category-specific lateralization of the vmPFC, suggesting a flexibly asymmetrical neural representations of facial expression recognition. These results converge to characteristic activation and connectivity patterns across discrete and dimensional emotion categories in recognition of facial expressions. Our findings provide the first quantitatively meta-analytic brain network-based evidence supportive of the psychological constructionist hypothesis in facial expression recognition.
面部表情的辨别是人类大脑的基本功能。虽然大脑中情感的表现方式长期以来一直存在争议,但在识别面部表情时,共同和特定的神经表现也很复杂。为了研究离散和维度面部表情的大脑组织和不对称性,我们对 141 项研究进行了激活似然估计荟萃分析和荟萃分析连接建模,这些研究共有 3138 名参与者。我们发现杏仁核和一系列共同的大脑网络在离散和维度情感中一致参与。杏仁核和 AI 在面部表情类别的左侧半球优势,但 vmPFC 的类别特异性偏侧化,表明对面部表情识别的神经表现具有灵活的不对称性。这些结果与识别面部表情时离散和维度情绪类别中的特征激活和连接模式收敛。我们的研究结果为面部表情识别中支持心理建构主义假设的基于大脑网络的定量荟萃分析提供了第一个证据。