School of Communications and Information Engineering, Chongqing University of Posts and Telecommunications, Chongqing, 400065, China; Advanced Network and Intelligent Connection Technology Key Laboratory of Chongqing Education Commission of China, Chongqing, 400065, China; Chongqing Key Laboratory of Ubiquitous Sensing and Networking, Chongqing, 400065, China.
School of Communications and Information Engineering, Chongqing University of Posts and Telecommunications, Chongqing, 400065, China; Advanced Network and Intelligent Connection Technology Key Laboratory of Chongqing Education Commission of China, Chongqing, 400065, China; Chongqing Key Laboratory of Ubiquitous Sensing and Networking, Chongqing, 400065, China.
Comput Biol Med. 2024 Aug;178:108762. doi: 10.1016/j.compbiomed.2024.108762. Epub 2024 Jun 21.
Alzheimer's disease (AD) is a neurodegenerative disease accompanied by cognitive impairment. Early diagnosis is crucial for the timely treatment and intervention of AD. Resting-state functional magnetic resonance imaging (rs-fMRI) records the temporal dynamics and spatial dependency in the brain, which have been utilized for automatically diagnosis of AD in the community. Existing approaches of AD diagnosis using rs-fMRI only assess functional connectivity, ignoring the spatiotemporal dependency mining of rs-fMRI. In addition, it is difficult to increase diagnosis accuracy due to the shortage of rs-fMRI sample and the poor anti-noise ability of model. To deal with these problems, this paper proposes a novel approach for the automatic diagnosis of AD, namely spatiotemporal graph transformer network (STGTN). The proposed STGTN can effectively extract spatiotemporal features of rs-fMRI. Furthermore, to solve the sample-limited problem and to improve the anti-noise ability of the proposed model, an adversarial training strategy is adopted for the proposed STGTN to generate adversarial examples (AEs) and augment training samples with AEs. Experimental results indicate that the proposed model achieves the classification accuracy of 92.58%, and 85.27% with the adversarial training strategy for AD vs. normal control (NC), early mild cognitive impairment (eMCI) vs. late mild cognitive impairment (lMCI) respectively, outperforming the state-of-the-art methods. Besides, the spatial attention coefficients reflected from the designed model reveal the importance of brain connections under different classification tasks.
阿尔茨海默病(AD)是一种伴随认知障碍的神经退行性疾病。早期诊断对于 AD 的及时治疗和干预至关重要。静息态功能磁共振成像(rs-fMRI)记录大脑中的时间动态和空间依赖性,已被用于社区中 AD 的自动诊断。现有的使用 rs-fMRI 进行 AD 诊断的方法仅评估功能连接,而忽略了 rs-fMRI 的时空依赖性挖掘。此外,由于 rs-fMRI 样本的短缺和模型的抗噪能力差,很难提高诊断准确性。为了解决这些问题,本文提出了一种用于 AD 自动诊断的新方法,即时空图变换网络(STGTN)。所提出的 STGTN 可以有效地提取 rs-fMRI 的时空特征。此外,为了解决样本有限的问题并提高所提出模型的抗噪能力,采用对抗训练策略为所提出的 STGTN 生成对抗样本(AEs)并使用 AEs 扩充训练样本。实验结果表明,所提出的模型在 AD 与正常对照(NC)、早期轻度认知障碍(eMCI)与晚期轻度认知障碍(lMCI)的分类准确率分别为 92.58%和 85.27%,优于最先进的方法。此外,从设计的模型中反映出的空间注意力系数揭示了在不同分类任务下脑连接的重要性。