Department of Computer Science and Engineering, The University of Texas at Arlington, Arlington, TX 76019 USA.
Department of Computer Science and Engineering, The University of Texas at Arlington, Arlington, TX 76019 USA; Department of Mathematics, The University of Texas at Arlington, Arlington, TX 76019 USA.
Med Image Anal. 2021 Aug;72:102082. doi: 10.1016/j.media.2021.102082. Epub 2021 Apr 23.
Multimodal fusion of different types of neural image data provides an irreplaceable opportunity to take advantages of complementary cross-modal information that may only partially be contained in single modality. To jointly analyze multimodal data, deep neural networks can be especially useful because many studies have suggested that deep learning strategy is very efficient to reveal complex and non-linear relations buried in the data. However, most deep models, e.g., convolutional neural network and its numerous extensions, can only operate on regular Euclidean data like voxels in 3D MRI. The interrelated and hidden structures that beyond the grid neighbors, such as brain connectivity, may be overlooked. Moreover, how to effectively incorporate neuroscience knowledge into multimodal data fusion with a single deep framework is understudied. In this work, we developed a graph-based deep neural network to simultaneously model brain structure and function in Mild Cognitive Impairment (MCI): the topology of the graph is initialized using structural network (from diffusion MRI) and iteratively updated by incorporating functional information (from functional MRI) to maximize the capability of differentiating MCI patients from elderly normal controls. This resulted in a new connectome by exploring "deep relations" between brain structure and function in MCI patients and we named it as Deep Brain Connectome. Though deep brain connectome is learned individually, it shows consistent patterns of alteration comparing to structural network at group level. With deep brain connectome, our developed deep model can achieve 92.7% classification accuracy on ADNI dataset.
多模态融合不同类型的神经影像数据为利用互补的跨模态信息提供了一个不可替代的机会,这些信息可能仅部分包含在单一模态中。为了联合分析多模态数据,深度神经网络特别有用,因为许多研究表明,深度学习策略非常有效地揭示隐藏在数据中的复杂和非线性关系。然而,大多数深度模型,例如卷积神经网络及其众多扩展,只能在常规的欧几里得数据上进行操作,例如 3D MRI 中的体素。超出网格邻居的相关和隐藏结构,例如大脑连接,可能会被忽略。此外,如何用单个深度框架将神经科学知识有效地融入多模态数据融合中,这方面的研究还很少。在这项工作中,我们开发了一种基于图的深度神经网络,用于同时对轻度认知障碍(MCI)中的大脑结构和功能进行建模:图的拓扑结构使用结构网络(来自扩散 MRI)初始化,并通过合并功能信息(来自功能 MRI)进行迭代更新,以最大限度地提高区分 MCI 患者和老年正常对照的能力。这通过探索 MCI 患者大脑结构和功能之间的“深层关系”,得到了一个新的连接组,我们称之为深度大脑连接组。尽管深度大脑连接组是单独学习的,但与结构网络相比,它在组水平上显示出一致的变化模式。通过深度大脑连接组,我们开发的深度模型可以在 ADNI 数据集上实现 92.7%的分类准确率。