谱脑图神经网络对自闭症谱系障碍儿童焦虑的预测。

Peiyu Duan, Nicha C Dvornek, Jiyao Wang, Jeffrey Eilbott, Yuexi Du, Denis G Sukhodolsky, James S Duncan
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引用次数: 0

摘要

患有自闭症谱系障碍(ASD)的儿童经常表现出共病性焦虑,这有助于损害并需要治疗。因此,使用功能成像工具来研究自闭症和焦虑共存的大脑机制是至关重要的。儿童多维焦虑量表第2版(MASC-2)评分是评估自闭症儿童日常焦虑水平的常用工具。用功能磁共振成像(fMRI)数据预测MASC-2评分将有助于更多地了解ASD合并焦虑儿童的大脑功能网络。然而,目前大多数利用功能磁共振成像(fMRI)对图神经网络(GNN)的研究只关注图运算,而忽略了谱特征。本文探讨了利用谱特征预测MASC-2总分的可行性。我们提出了一种基于图的网络spectrbgnn,它利用光谱特征并集成图谱滤波层来提取隐藏信息。我们实验了多种频谱分析算法,并在由26名正常发育和70名ASD儿童组成的数据集上,将spectrbgnn模型与CPM、GAT和BrainGNN的性能进行了5次交叉验证。我们发现,在所有测试的频谱分析算法中,使用快速傅里叶变换(FFT)或韦尔奇功率谱密度(PSD)作为节点特征的性能明显优于相关特征,并且添加图谱滤波层显著提高了网络的性能。
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SPECTRAL BRAIN GRAPH NEURAL NETWORK FOR PREDICTION OF ANXIETY IN CHILDREN WITH AUTISM SPECTRUM DISORDER.

Children with Autism Spectrum Disorder (ASD) frequently exhibit comorbid anxiety, which contributes to impairment and requires treatment. Therefore, it is critical to investigate co-occurring autism and anxiety with functional imaging tools to understand the brain mechanisms of this comorbidity. Multidimensional Anxiety Scale for Children, 2nd edition (MASC-2) score is a common tool to evaluate the daily anxiety level in autistic children. Predicting MASC-2 score with Functional Magnetic Resonance Imaging (fMRI) data will help gain more insights into the brain functional networks of children with ASD complicated by anxiety. However, most of the current graph neural network (GNN) studies using fMRI only focus on graph operations but ignore the spectral features. In this paper, we explored the feasibility of using spectral features to predict the MASC-2 total scores. We proposed SpectBGNN, a graph-based network, which uses spectral features and integrates graph spectral filtering layers to extract hidden information. We experimented with multiple spectral analysis algorithms and compared the performance of the SpectBGNN model with CPM, GAT, and BrainGNN on a dataset consisting of 26 typically developing and 70 ASD children with 5-fold cross-validation. We showed that among all spectral analysis algorithms tested, using the Fast Fourier Transform (FFT) or Welch's Power Spectrum Density (PSD) as node features performs significantly better than correlation features, and adding the graph spectral filtering layer significantly increases the network's performance.

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