School of Automation, Northwestern Polytechnical University, Xi'an, China.
Cortical Architecture Imaging and Discovery Lab, Department of Computer Science and Bioimaging Research Center, The University of Georgia, Athens, Georgia.
Hum Brain Mapp. 2018 Jun;39(6):2368-2380. doi: 10.1002/hbm.24005. Epub 2018 Feb 18.
Blind source separation (BSS) is commonly used in functional magnetic resonance imaging (fMRI) data analysis. Recently, BSS models based on restricted Boltzmann machine (RBM), one of the building blocks of deep learning models, have been shown to improve brain network identification compared to conventional single matrix factorization models such as independent component analysis (ICA). These models, however, trained RBM on fMRI volumes, and are hence challenged by model complexity and limited training set. In this article, we propose to apply RBM to fMRI time courses instead of volumes for BSS. The proposed method not only interprets fMRI time courses explicitly to take advantages of deep learning models in latent feature learning but also substantially reduces model complexity and increases the scale of training set to improve training efficiency. Our experimental results based on Human Connectome Project (HCP) datasets demonstrated the superiority of the proposed method over ICA and the one that applied RBM to fMRI volumes in identifying task-related components, resulted in more accurate and specific representations of task-related activations. Moreover, our method separated out components representing intermixed effects between task events, which could reflect inherent interactions among functionally connected brain regions. Our study demonstrates the value of RBM in mining complex structures embedded in large-scale fMRI data and its potential as a building block for deeper models in fMRI data analysis.
盲源分离(BSS)在功能磁共振成像(fMRI)数据分析中得到了广泛应用。最近,基于受限玻尔兹曼机(RBM)的 BSS 模型已被证明可以提高脑网络识别能力,与传统的单矩阵分解模型(如独立成分分析(ICA))相比。然而,这些模型是在 fMRI 体素上训练 RBM 的,因此受到模型复杂性和有限训练集的挑战。在本文中,我们建议将 RBM 应用于 fMRI 时间序列而不是体积进行 BSS。该方法不仅可以显式地解释 fMRI 时间序列,以利用深度学习模型在潜在特征学习方面的优势,而且还可以大大降低模型复杂度并增加训练集的规模,从而提高训练效率。我们基于人类连接组计划(HCP)数据集的实验结果表明,该方法在识别任务相关成分方面优于 ICA 和在 fMRI 体素上应用 RBM 的方法,从而实现了对任务相关激活的更准确和更具体的表示。此外,我们的方法分离出了代表任务事件之间混合效应的成分,这可以反映功能连接的脑区之间固有的相互作用。我们的研究证明了 RBM 在挖掘大规模 fMRI 数据中嵌入的复杂结构方面的价值及其在 fMRI 数据分析中作为更深层次模型的构建块的潜力。