Fan Liangwei, Su Jianpo, Qin Jian, Hu Dewen, Shen Hui
College of Intelligence Science and Technology, National University of Defense Technology, Changsha, China.
Front Neurosci. 2020 Aug 18;14:881. doi: 10.3389/fnins.2020.00881. eCollection 2020.
Increasing evidence has suggested that the dynamic properties of functional brain networks are related to individual behaviors and cognition traits. However, current fMRI-based approaches mostly focus on statistical characteristics of the windowed correlation time course, potentially overlooking subtle time-varying patterns in dynamic functional connectivity (dFC). Here, we proposed the use of an end-to-end deep learning model that combines the convolutional neural network (CNN) and long short-term memory (LSTM) network to capture temporal and spatial features of functional connectivity sequences simultaneously. The results on a large cohort (Human Connectome Project, = 1,050) demonstrated that our model could achieve a high classification accuracy of about 93% in a gender classification task and prediction accuracies of 0.31 and 0.49 (Pearson's correlation coefficient) in fluid and crystallized intelligence prediction tasks, significantly outperforming previously reported models. Furthermore, we demonstrated that our model could effectively learn spatiotemporal dynamics underlying dFC with high statistical significance based on the null hypothesis estimated using surrogate data. Overall, this study suggests the advantages of a deep learning model in making full use of dynamic information in resting-state functional connectivity, and highlights the potential of time-varying connectivity patterns in improving the prediction of individualized characterization of demographics and cognition traits.
越来越多的证据表明,功能性脑网络的动态特性与个体行为和认知特征相关。然而,当前基于功能磁共振成像(fMRI)的方法大多集中在窗口化相关时间进程的统计特征上,可能会忽略动态功能连接(dFC)中微妙的时变模式。在此,我们提出使用一种端到端的深度学习模型,该模型结合了卷积神经网络(CNN)和长短期记忆(LSTM)网络,以同时捕捉功能连接序列的时间和空间特征。在一个大型队列(人类连接体项目,n = 1,050)上的结果表明,我们的模型在性别分类任务中可以达到约93%的高分类准确率,在流体智力和晶体智力预测任务中的预测准确率分别为0.31和0.49(皮尔逊相关系数),显著优于先前报道的模型。此外,我们证明,基于使用替代数据估计的零假设,我们的模型可以有效地学习dFC潜在的时空动态,具有很高的统计显著性。总体而言,本研究表明深度学习模型在充分利用静息态功能连接中的动态信息方面的优势,并突出了时变连接模式在改善人口统计学和认知特征个体化表征预测方面的潜力。