Australian Centre for Child Neuropsychological Studies, Murdoch Childrens Research Institute, Parkville, VIC, Australia.
Department of Psychology, Royal Children's Hospital, Parkville, VIC, Australia.
Soc Cogn Affect Neurosci. 2017 Sep 1;12(9):1414-1427. doi: 10.1093/scan/nsx066.
Deficits in theory of mind (ToM) are common after neurological insult acquired in the first and second decade of life, however the contribution of large-scale neural networks to ToM deficits in children with brain injury is unclear. Using paediatric traumatic brain injury (TBI) as a model, this study investigated the sub-acute effect of paediatric traumatic brain injury on grey-matter volume of three large-scale, domain-general brain networks (the Default Mode Network, DMN; the Central Executive Network, CEN; and the Salience Network, SN), as well as two domain-specific neural networks implicated in social-affective processes (the Cerebro-Cerebellar Mentalizing Network, CCMN and the Mirror Neuron/Empathy Network, MNEN). We also evaluated prospective structure-function relationships between these large-scale neural networks and cognitive, affective and conative ToM. 3D T1- weighted magnetic resonance imaging sequences were acquired sub-acutely in 137 children [TBI: n = 103; typically developing (TD) children: n = 34]. All children were assessed on measures of ToM at 24-months post-injury. Children with severe TBI showed sub-acute volumetric reductions in the CCMN, SN, MNEN, CEN and DMN, as well as reduced grey-matter volumes of several hub regions of these neural networks. Volumetric reductions in the CCMN and several of its hub regions, including the cerebellum, predicted poorer cognitive ToM. In contrast, poorer affective and conative ToM were predicted by volumetric reductions in the SN and MNEN, respectively. Overall, results suggest that cognitive, affective and conative ToM may be prospectively predicted by individual differences in structure of different neural systems-the CCMN, SN and MNEN, respectively. The prospective relationship between cerebellar volume and cognitive ToM outcomes is a novel finding in our paediatric brain injury sample and suggests that the cerebellum may play a role in the neural networks important for ToM. These findings are discussed in relation to neurocognitive models of ToM. We conclude that detection of sub-acute volumetric abnormalities of large-scale neural networks and their hub regions may aid in the early identification of children at risk for chronic social-cognitive impairment.
心理理论(ToM)缺陷在儿童神经损伤后较为常见,尤其是在生命的头十年和第二个十年获得的神经损伤后。然而,大脑损伤儿童的大规模神经网络对 ToM 缺陷的贡献尚不清楚。本研究使用儿科创伤性脑损伤(TBI)作为模型,研究了儿科创伤性脑损伤对三个大规模、领域通用的大脑网络(默认模式网络(DMN)、中央执行网络(CEN)和突显网络(SN))以及两个涉及社会情感过程的领域特定神经网络(脑-小脑心理化网络(CCMN)和镜像神经元/同理心网络(MNEN))的亚急性灰质体积的影响。我们还评估了这些大规模神经网络与认知、情感和能动性 ToM 之间的前瞻性结构-功能关系。在 137 名儿童中(TBI:n=103;典型发育(TD)儿童:n=34)获得了亚急性 3D T1 加权磁共振成像序列。所有儿童在受伤后 24 个月时均接受了 ToM 测试。严重 TBI 儿童的 CCMN、SN、MNEN、CEN 和 DMN 出现亚急性体积缩小,这些神经网络的几个枢纽区域的灰质体积也减少。CCMN 及其几个枢纽区域(包括小脑)的体积缩小与较差的认知 ToM 相关。相反,SN 和 MNEN 的体积缩小分别预测了较差的情感和能动性 ToM。总的来说,结果表明,认知、情感和能动性 ToM 可能分别由不同神经系统(CCMN、SN 和 MNEN)的结构个体差异来前瞻性预测。小脑体积与认知 ToM 结果之间的前瞻性关系是我们儿科脑损伤样本中的一个新发现,表明小脑可能在与 ToM 相关的神经网络中发挥作用。这些发现与 ToM 的神经认知模型有关。我们的结论是,检测大规模神经网络及其枢纽区域的亚急性体积异常可能有助于早期识别有慢性社会认知障碍风险的儿童。