Artificial Intelligence Convergence Research Center, Inha University, Incheon, Republic of Korea.
Department of Electrical and Computer Engineering, Sungkyunkwan University, Suwon, Republic of Korea.
Behav Brain Funct. 2024 Jan 24;20(1):2. doi: 10.1186/s12993-024-00228-z.
Autism spectrum disorder is one of the most common neurodevelopmental conditions associated with sensory and social communication impairments. Previous neuroimaging studies reported that atypical nodal- or network-level functional brain organization in individuals with autism was associated with autistic behaviors. Although dimensionality reduction techniques have the potential to uncover new biomarkers, the analysis of whole-brain structural connectome abnormalities in a low-dimensional latent space is underinvestigated. In this study, we utilized autoencoder-based feature representation learning for diffusion magnetic resonance imaging-based structural connectivity in 80 individuals with autism and 61 neurotypical controls that passed strict quality controls. We generated low-dimensional latent features using the autoencoder model for each group and adopted an integrated gradient approach to assess the contribution of the input data for predicting latent features during the encoding process. Subsequently, we compared the integrated gradient values between individuals with autism and neurotypical controls and observed differences within the transmodal regions and between the sensory and limbic systems. Finally, we identified significant associations between integrated gradient values and communication abilities in individuals with autism. Our findings provide insights into the whole-brain structural connectome in autism and may help identify potential biomarkers for autistic connectopathy.
自闭症谱系障碍是一种最常见的神经发育障碍,与感觉和社交沟通障碍有关。先前的神经影像学研究报告称,自闭症个体的节点或网络水平的功能大脑组织异常与自闭症行为有关。尽管降维技术有可能发现新的生物标志物,但在低维潜在空间中分析全脑结构连接体异常的研究还不够深入。在这项研究中,我们利用基于自动编码器的特征表示学习方法,对 80 名自闭症患者和 61 名通过严格质量控制的神经典型对照者的基于扩散磁共振成像的结构连接进行了分析。我们使用自动编码器模型为每个组生成低维潜在特征,并采用集成梯度方法来评估输入数据在编码过程中预测潜在特征的贡献。随后,我们比较了自闭症患者和神经典型对照组之间的集成梯度值,并观察到跨模态区域以及感觉和边缘系统之间的差异。最后,我们确定了自闭症患者的集成梯度值与沟通能力之间的显著关联。我们的研究结果为自闭症的全脑结构连接组学提供了深入的见解,并可能有助于识别自闭症连接病变的潜在生物标志物。