Takahashi Yuta, Murata Shingo, Ueki Masao, Tomita Hiroaki, Yamashita Yuichi
Department of Psychiatry, Tohoku University Hospital, Japan.
Department of Psychiatry, Graduate School of Medicine, Tohoku University, Japan.
Comput Psychiatr. 2023 Jan 20;7(1):14-29. doi: 10.5334/cpsy.93. eCollection 2023.
Functional connectivity (FC) and neural excitability may interact to affect symptoms of autism spectrum disorder (ASD). We tested this hypothesis with neural network simulations, and applied it with functional magnetic resonance imaging (fMRI). A hierarchical recurrent neural network embodying predictive processing theory was subjected to a facial emotion recognition task. Neural network simulations examined the effects of FC and neural excitability on changes in neural representations by developmental learning, and eventually on ASD-like performance. Next, by mapping each neural network condition to subject subgroups on the basis of fMRI parameters, the association between ASD-like performance in the simulation and ASD diagnosis in the corresponding subject subgroup was examined. In the neural network simulation, the more homogeneous the neural excitability of the lower-level network, the more ASD-like the performance (reduced generalization and emotion recognition capability). In addition, in homogeneous networks, the higher the FC, the more ASD-like performance, while in heterogeneous networks, the higher the FC, the less ASD-like performance, demonstrating that FC and neural excitability interact. As an underlying mechanism, neural excitability determines the generalization capability of top-down prediction, and FC determines whether the model's information processing will be top-down prediction-dependent or bottom-up sensory-input dependent. In fMRI datasets, ASD was actually more prevalent in subject subgroups corresponding to the network condition showing ASD-like performance. The current study suggests an interaction between FC and neural excitability, and presents a novel framework for computational modeling and biological application of a developmental learning process underlying cognitive alterations in ASD.
功能连接性(FC)和神经兴奋性可能相互作用,影响自闭症谱系障碍(ASD)的症状。我们通过神经网络模拟对这一假设进行了测试,并将其应用于功能磁共振成像(fMRI)。一个体现预测处理理论的分层递归神经网络被用于面部表情识别任务。神经网络模拟研究了FC和神经兴奋性对发育学习过程中神经表征变化的影响,最终对类似ASD的表现的影响。接下来,通过根据fMRI参数将每个神经网络条件映射到受试者亚组,研究了模拟中类似ASD的表现与相应受试者亚组中ASD诊断之间的关联。在神经网络模拟中,较低层次网络的神经兴奋性越均匀,表现就越类似ASD(泛化和情绪识别能力降低)。此外,在均匀网络中,FC越高,表现越类似ASD,而在异质网络中,FC越高,表现越不类似ASD,这表明FC和神经兴奋性相互作用。作为一种潜在机制,神经兴奋性决定了自上而下预测的泛化能力,而FC决定了模型的信息处理将依赖于自上而下的预测还是自下而上的感觉输入。在fMRI数据集中,ASD实际上在与表现出类似ASD的网络条件相对应的受试者亚组中更为普遍。当前的研究表明了FC和神经兴奋性之间的相互作用,并为ASD认知改变背后的发育学习过程的计算建模和生物学应用提出了一个新的框架。