Computer Science and Engineering, Northeastern University, Shenyang, China.
Key Laboratory of Medical Image Computing of Ministry of Education, Northeastern University, Shenyang, China.
Neuroinformatics. 2019 Apr;17(2):271-294. doi: 10.1007/s12021-018-9398-5.
Alzheimer's disease (AD) is characterized by gradual neurodegeneration and loss of brain function, especially for memory during early stages. Regression analysis has been widely applied to AD research to relate clinical and biomarker data such as predicting cognitive outcomes from MRI measures. Recently, multi-task based feature learning (MTFL) methods with sparsity-inducing [Formula: see text]-norm have been widely studied to select a discriminative feature subset from MRI features by incorporating inherent correlations among multiple clinical cognitive measures. However, existing MTFL assumes the correlation among all tasks is uniform, and the task relatedness is modeled by encouraging a common subset of features via sparsity-inducing regularizations that neglect the inherent structure of tasks and MRI features. To address this issue, we proposed a fused group lasso regularization to model the underlying structures, involving 1) a graph structure within tasks and 2) a group structure among the image features. To this end, we present a multi-task feature learning framework with a mixed norm of fused group lasso and [Formula: see text]-norm to model these more flexible structures. For optimization, we employed the alternating direction method of multipliers (ADMM) to efficiently solve the proposed non-smooth formulation. We evaluated the performance of the proposed method using the Alzheimer's Disease Neuroimaging Initiative (ADNI) datasets. The experimental results demonstrate that incorporating the two prior structures with fused group lasso norm into the multi-task feature learning can improve prediction performance over several competing methods, with estimated correlations of cognitive functions and identification of cognition-relevant imaging markers that are clinically and biologically meaningful.
阿尔茨海默病(AD)的特征是逐渐的神经退行性变和脑功能丧失,尤其是在早期阶段的记忆。回归分析已广泛应用于 AD 研究,以将临床和生物标志物数据(如从 MRI 测量预测认知结果)相关联。最近,基于多任务的特征学习(MTFL)方法已经广泛研究,通过引入固有相关性,从 MRI 特征中选择一个有区别的特征子集,包括多个临床认知措施。然而,现有的 MTFL 假设所有任务之间的相关性是均匀的,通过稀疏诱导正则化来鼓励常见的特征子集来对任务相关性进行建模,而忽略了任务和 MRI 特征的固有结构。为了解决这个问题,我们提出了一种融合组套索正则化来建模潜在结构,包括 1)任务内的图结构和 2)图像特征之间的组结构。为此,我们提出了一个具有融合组套索和[Formula: see text]-范数的多任务特征学习框架,以建模这些更灵活的结构。为了优化,我们采用交替方向法(ADMM)来有效地解决提出的非光滑公式。我们使用阿尔茨海默病神经影像倡议(ADNI)数据集来评估所提出方法的性能。实验结果表明,将融合组套索范数的两种先验结构纳入多任务特征学习中,可以提高几种竞争方法的预测性能,同时估计认知功能的相关性和识别与认知相关的影像学标志物,这些标志物具有临床和生物学意义。