Smooth Principal Component Analysis over two-dimensional manifolds with an application to Neuroimaging

E. Lila, J. Aston, L. Sangalli
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引用次数: 57

Abstract

Motivated by the analysis of high-dimensional neuroimaging signals located over the cortical surface, we introduce a novel Principal Component Analysis technique that can handle functional data located over a two-dimensional manifold. For this purpose a regularization approach is adopted, introducing a smoothing penalty coherent with the geodesic distance over the manifold. The model introduced can be applied to any manifold topology, can naturally handle missing data and functional samples evaluated in different grids of points. We approach the discretization task by means of finite element analysis and propose an efficient iterative algorithm for its resolution. We compare the performances of the proposed algorithm with other approaches classically adopted in literature. We finally apply the proposed method to resting state functional magnetic resonance imaging data from the Human Connectome Project, where the method shows substantial differential variations between brain regions that were not apparent with other approaches.
二维流形的平滑主成分分析及其在神经成像中的应用
基于对位于皮层表面的高维神经成像信号的分析,我们引入了一种新的主成分分析技术,该技术可以处理位于二维流形上的功能数据。为此,采用正则化方法,引入与流形上测地线距离一致的平滑惩罚。所引入的模型可以应用于任何流形拓扑,可以自然地处理缺失数据和在不同网格点上评估的功能样本。我们用有限元分析的方法来解决离散化问题,并提出了一种有效的迭代算法来解决离散化问题。我们将提出的算法与文献中经典采用的其他方法的性能进行了比较。我们最后将提出的方法应用于来自人类连接组计划的静息状态功能磁共振成像数据,其中该方法显示了与其他方法不明显的大脑区域之间的实质性差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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