Wang Xinlei, Xin Junchang, Wang Zhongyang, Li Chuangang, Wang Zhiqiong
School of Computer Science and Engineering, Northeastern University, Shenyang 110169, China.
Key Laboratory of Big Data Management and Analytics, Northeastern University, Shenyang 110169, China.
Diagnostics (Basel). 2022 Oct 30;12(11):2632. doi: 10.3390/diagnostics12112632.
In the diagnosis of Alzheimer's Disease (AD), the brain network analysis method is often used. The traditional network can only reflect the pairwise association between two brain regions, but ignore the higher-order relationship between them. Therefore, a brain network construction method based on hypergraph, called hyperbrain network, is adopted. The brain network constructed by the conventional static hyperbrain network cannot reflect the dynamic changes in brain activity. Based on this, the construction of a dynamic hyperbrain network is proposed. In addition, graph convolutional networks also play a huge role in AD diagnosis. Therefore, an evolving hypergraph convolutional network for the dynamic hyperbrain network is proposed, and the attention mechanism is added to further enhance the ability of representation learning, and then it is used for the aided diagnosis of AD. The experimental results show that the proposed method can effectively improve the accuracy of AD diagnosis up to 99.09%, which is a 0.3 percent improvement over the best existing methods.
在阿尔茨海默病(AD)的诊断中,经常使用脑网络分析方法。传统网络只能反映两个脑区之间的成对关联,但忽略了它们之间的高阶关系。因此,采用了一种基于超图的脑网络构建方法,称为超脑网络。传统的静态超脑网络构建的脑网络无法反映大脑活动的动态变化。基于此,提出了动态超脑网络的构建方法。此外,图卷积网络在AD诊断中也发挥着巨大作用。因此,针对动态超脑网络提出了一种演化超图卷积网络,并添加了注意力机制以进一步增强表征学习能力,然后将其用于AD的辅助诊断。实验结果表明,所提方法能有效提高AD诊断的准确率,高达99.09%,比现有最佳方法提高了0.3个百分点。