IEEE Trans Med Imaging. 2017 Sep;36(9):1796-1807. doi: 10.1109/TMI.2017.2699225. Epub 2017 Apr 28.
Sequential dictionary learning algorithms have been successfully applied to functional magnetic resonance imaging (fMRI) data analysis. fMRI data sets are, however, structured data matrices with the notions of temporal smoothness in the column direction. This prior information, which can be converted into a constraint of smoothness on the learned dictionary atoms, has seldomly been included in classical dictionary learning algorithms when applied to fMRI data analysis. In this paper, we tackle this problem by proposing two new sequential dictionary learning algorithms dedicated to fMRI data analysis by accounting for this prior information. These algorithms differ from the existing ones in their dictionary update stage. The steps of this stage are derived as a variant of the power method for computing the SVD. The proposed algorithms generate regularized dictionary atoms via the solution of a left regularized rank-one matrix approximation problem where temporal smoothness is enforced via regularization through basis expansion and sparse basis expansion in the dictionary update stage. Applications on synthetic data experiments and real fMRI data sets illustrating the performance of the proposed algorithms are provided.
序贯字典学习算法已成功应用于功能磁共振成像 (fMRI) 数据分析。然而,fMRI 数据集是具有列方向时间平滑性概念的结构化数据矩阵。当应用于 fMRI 数据分析时,这种先验信息很少被包含在经典字典学习算法中。在本文中,我们通过提出两种新的序贯字典学习算法来解决这个问题,这些算法专门用于 fMRI 数据分析,并考虑了这种先验信息。这些算法在字典更新阶段与现有算法不同。该阶段的步骤是通过计算 SVD 的幂法的变体导出的。所提出的算法通过求解正则化的秩一矩阵逼近问题来生成正则化的字典原子,其中通过在字典更新阶段的基扩展和稀疏基扩展来对时间平滑性进行正则化。提供了在合成数据实验和真实 fMRI 数据集上应用的结果,以说明所提出算法的性能。