Zhang Jianjia, Wu Xiaotong, Tang Xiang, Zhou Luping, Wang Lei, Wu Weiwen, Shen Dinggang
IEEE Trans Med Imaging. 2025 Mar;44(3):1168-1180. doi: 10.1109/TMI.2024.3486086. Epub 2025 Mar 17.
Construction and analysis of functional brain networks (FBNs) with resting-state functional magnetic resonance imaging (rs-fMRI) is a promising method to diagnose functional brain diseases. Nevertheless, the existing methods suffer from several limitations. First, the functional connectivities (FCs) of the FBN are usually measured by the temporal co-activation level between rs-fMRI time series from regions of interest (ROIs). While enjoying simplicity, the existing approach implicitly assumes simultaneous co-activation of all the ROIs, and models only their synchronous dependencies. However, the FCs are not necessarily always synchronous due to the time lag of information flow and cross-time interactions between ROIs. Therefore, it is desirable to model asynchronous FCs. Second, the traditional methods usually construct FBNs at individual level, leading to large variability and degraded diagnosis accuracy when modeling asynchronous FBN. Third, the FBN construction and analysis are conducted in two independent steps without joint alignment for the target diagnosis task. To address the first limitation, this paper proposes an effective sliding-window-based method to model spatiotemporal FCs in Transformer. Regarding the second limitation, we propose to learn common and individual FBNs adaptively with the common FBN as prior knowledge, thus alleviating the variability and enabling the network to focus on the individual disease-specific asynchronous FCs. To address the third limitation, the common and individual asynchronous FBNs are built and analyzed by an integrated network, enabling end-to-end training and improving the flexibility and discriminability. The effectiveness of the proposed method is consistently demonstrated on three data sets for mild cognitive impairment (MCI) diagnosis.
利用静息态功能磁共振成像(rs-fMRI)构建和分析功能性脑网络(FBNs)是诊断功能性脑疾病的一种很有前景的方法。然而,现有方法存在一些局限性。首先,FBN的功能连接性(FCs)通常通过感兴趣区域(ROIs)的rs-fMRI时间序列之间的时间共激活水平来测量。尽管现有方法简单,但它隐含地假设所有ROIs同时共激活,并且仅对它们的同步依赖性进行建模。然而,由于信息流的时间滞后和ROIs之间的跨时间相互作用,FCs不一定总是同步的。因此,对异步FCs进行建模是很有必要的。其次,传统方法通常在个体层面构建FBNs,在对异步FBN进行建模时会导致很大的变异性并降低诊断准确性。第三,FBN的构建和分析是在两个独立的步骤中进行的,没有针对目标诊断任务进行联合对齐。为了解决第一个局限性,本文提出了一种基于滑动窗口的有效方法,用于在Transformer中对时空FCs进行建模。针对第二个局限性,我们建议以公共FBN为先验知识,自适应地学习公共和个体FBNs,从而减少变异性,并使网络能够专注于个体疾病特异性的异步FCs。为了解决第三个局限性,通过一个集成网络构建和分析公共和个体异步FBNs,实现端到端训练,并提高灵活性和可辨别性。所提出方法的有效性在用于轻度认知障碍(MCI)诊断的三个数据集上得到了一致验证。