Sparse Multi-Task Regression and Feature Selection to Identify Brain Imaging Predictors for Memory Performance.

Hua Wang, Feiping Nie, Heng Huang, Shannon Risacher, Chris Ding, Andrew J Saykin, Li Shen
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引用次数: 139

Abstract

Alzheimer's disease (AD) is a neurodegenerative disorder characterized by progressive impairment of memory and other cognitive functions, which makes regression analysis a suitable model to study whether neuroimaging measures can help predict memory performance and track the progression of AD. Existing memory performance prediction methods via regression, however, do not take into account either the interconnected structures within imaging data or those among memory scores, which inevitably restricts their predictive capabilities. To bridge this gap, we propose a novel Sparse Multi-tAsk Regression and feaTure selection (SMART) method to jointly analyze all the imaging and clinical data under a single regression framework and with shared underlying sparse representations. Two convex regularizations are combined and used in the model to enable sparsity as well as facilitate multi-task learning. The effectiveness of the proposed method is demonstrated by both clearly improved prediction performances in all empirical test cases and a compact set of selected RAVLT-relevant MRI predictors that accord with prior studies.

稀疏多任务回归和特征选择识别记忆性能的脑成像预测因子。
阿尔茨海默病(Alzheimer's disease, AD)是一种以记忆和其他认知功能进行性损害为特征的神经退行性疾病,因此回归分析是研究神经影像学措施是否有助于预测记忆表现和跟踪AD进展的合适模型。然而,现有的基于回归的记忆性能预测方法既没有考虑成像数据内部的互连结构,也没有考虑记忆评分之间的互连结构,这必然会限制其预测能力。为了弥补这一差距,我们提出了一种新的稀疏多任务回归和特征选择(SMART)方法,在单一回归框架下联合分析所有成像和临床数据,并共享底层稀疏表示。两个凸正则化相结合并在模型中使用,以实现稀疏性并促进多任务学习。通过在所有实证测试案例中明显提高的预测性能以及与先前研究一致的选定的ravlt相关MRI预测器的紧凑集,证明了所提出方法的有效性。
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