State Key Laboratory of Cognitive Neuroscience and Learning & IDG/McGovern Institute for Brain Research, Beijing Normal University, Beijing 100875, China.
State Key Laboratory of Cognitive Neuroscience and Learning & IDG/McGovern Institute for Brain Research, Beijing Normal University, Beijing 100875, China.
Neuroimage. 2018 Apr 1;169:151-161. doi: 10.1016/j.neuroimage.2017.12.023. Epub 2017 Dec 11.
Face recognition is supported by collaborative work of multiple face-responsive regions in the brain. Based on findings from individuals with normal face recognition ability, a neural model has been proposed with the occipital face area (OFA), fusiform face area (FFA), and face-selective posterior superior temporal sulcus (pSTS) as the core face network (CFN) and the rest of the face-responsive regions as the extended face network (EFN). However, little is known about how these regions work collaboratively for face recognition in our daily life. Here we focused on individuals suffering developmental prosopagnosia (DP), a neurodevelopmental disorder specifically impairing face recognition, to shed light on the infrastructure of the neural model of face recognition. Specifically, we used a variant of global brain connectivity method to comprehensively explore resting-state functional connectivity (FC) among face-responsive regions in a large sample of DPs (N = 64). We found that both the FCs within the CFN and those between the CFN and EFN were largely reduced in DP. Importantly, the right OFA and FFA served as the dysconnectivity hubs within the CFN, i.e., FCs concerning these two regions within the CFN were largely disrupted. In addition, DPs' right FFA also showed reduced FCs with the EFN. Moreover, these disrupted FCs were related to DP's behavioral deficit in face recognition, with the FCs from the FFA to the anterior temporal lobe (ATL) and pSTS the most predictive. Based on these findings, we proposed a revised neural model of face recognition demonstrating the relatedness of interactions among face-responsive regions to face recognition.
人脸识别是由大脑中多个对脸有反应的区域协同工作支持的。基于具有正常人脸识别能力的个体的发现,已经提出了一种神经模型,其中包括枕部面孔区(OFA)、梭状回面孔区(FFA)和面孔选择性后颞上沟(pSTS)作为核心面孔网络(CFN),其余对脸有反应的区域作为扩展面孔网络(EFN)。然而,对于我们日常生活中这些区域如何协同工作以进行人脸识别,我们知之甚少。在这里,我们专注于患有发展性面孔失认症(DP)的个体,这是一种专门损害人脸识别的神经发育障碍,以揭示人脸识别神经模型的基础结构。具体来说,我们使用一种变体的全局脑连接方法,在一个大的 DP 样本(N=64)中全面探索对脸有反应的区域之间的静息状态功能连接(FC)。我们发现,CFN 内的 FC 和 CFN 与 EFN 之间的 FC 都在 DP 中大大减少。重要的是,右侧 OFA 和 FFA 作为 CFN 内的不连续连接枢纽,即 CFN 内这两个区域的 FC 受到了很大的破坏。此外,DP 的右侧 FFA 与 EFN 的 FC 也减少了。此外,这些中断的 FC 与 DP 在人脸识别方面的行为缺陷有关,其中来自 FFA 到前颞叶(ATL)和 pSTS 的 FC 最具预测性。基于这些发现,我们提出了一个修订后的人脸识别神经模型,展示了对脸有反应的区域之间相互作用的相关性与人脸识别。