基于多图谱多核图卷积网络的创伤后应激障碍分类研究

Lijun Zhou, Hongru Zhu, Yunfei Liu, Xian Mo, Jun Yuan, Changyu Luo, Junran Zhang
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引用次数: 0

摘要

创伤后应激障碍(PTSD)具有复杂多样的临床表现,单纯依靠临床评估对其进行准确、客观的诊断具有挑战性。因此,迫切需要建立可靠、客观的辅助诊断模型,为PTSD患者提供有效的诊断。目前,图神经网络在创伤后应激障碍表征中的应用受限于现有模型的表达能力,分类结果并不理想。为了解决这个问题,我们提出了一个多图多核图卷积网络(MK-GCN)模型来分类PTSD数据。首先,我们使用不同的地图集对同一主题构建了不同尺度的功能连通性矩阵,然后采用k近邻算法构建图。其次,引入MK-GCN方法,增强对同一被试不同尺度脑结构的特征提取能力。最后,我们从多个尺度上对提取的特征进行分类,并利用图类激活映射来识别对分类贡献最大的10个脑区。对地震诱发PTSD数据的实验结果表明,我们的模型在区分PTSD患者和非创伤后应激障碍患者的分类任务中准确率为84.75%,特异性为84.02%,AUC为85%。这些发现为地震后PTSD的辅助诊断提供了有力的证据,并有望在其他PTSD诊断背景下可靠地识别特定的大脑区域,为临床医生提供有价值的参考。
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[A study on post-traumatic stress disorder classification based on multi-atlas multi-kernel graph convolutional network].

Post-traumatic stress disorder (PTSD) presents with complex and diverse clinical manifestations, making accurate and objective diagnosis challenging when relying solely on clinical assessments. Therefore, there is an urgent need to develop reliable and objective auxiliary diagnostic models to provide effective diagnosis for PTSD patients. Currently, the application of graph neural networks for representing PTSD is limited by the expressiveness of existing models, which does not yield optimal classification results. To address this, we proposed a multi-graph multi-kernel graph convolutional network (MK-GCN) model for classifying PTSD data. First, we constructed functional connectivity matrices at different scales for the same subjects using different atlases, followed by employing the k-nearest neighbors algorithm to build the graphs. Second, we introduced the MK-GCN methodology to enhance the feature extraction capability of brain structures at different scales for the same subjects. Finally, we classified the extracted features from multiple scales and utilized graph class activation mapping to identify the top 10 brain regions contributing to classification. Experimental results on seismic-induced PTSD data demonstrated that our model achieved an accuracy of 84.75%, a specificity of 84.02%, and an AUC of 85% in the classification task distinguishing between PTSD patients and non-affected subjects. The findings provide robust evidence for the auxiliary diagnosis of PTSD following earthquakes and hold promise for reliably identifying specific brain regions in other PTSD diagnostic contexts, offering valuable references for clinicians.

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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
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