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Structural Brain Network Constrained Neuroimaging Marker Identification for Predicting Cognitive Functions

机译:结构脑网络约束的神经影像标记识别,以预测认知功能。

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Neuroimaging markers have been widely used to predict the cognitive functions relevant to the progression of Alzheimer's disease (AD). Most previous studies identify the imaging markers without considering the brain structural correlations between neuroimaging measures. However, many neuroimaging markers interrelate and work together to reveal the cognitive functions, such that these relevant markers should be selected together as the phenotypic markers. To solve this problem, in this paper, we propose a novel network constrained feature selection (NCFS) model to identify the neuroimaging markers guided by the structural brain network, which is constructed by the sparse representation method such that the interrelations between neuroimaging features are encoded into probabilities. Our new methods are evaluated by the MRI and AV45-PET data from ADNI-GO and ADNI-2 (Alzheimer's Disease Neuroimaging Initiative). In all cognitive function prediction tasks, our new NCFS method outperforms other state-of-the-art regression approaches. Meanwhile, we show that the new method can select the correlated imaging markers, which are ignored by the competing approaches.
机译:神经影像标记已被广泛用于预测与阿尔茨海默氏病(AD)进展相关的认知功能。以前的大多数研究都在不考虑神经影像测量之间的大脑结构相关性的情况下识别了影像标记。但是,许多神经影像标记物相互关联并共同发挥其认知功能,因此应将这些相关标记物一起选作表型标记物。为了解决这个问题,本文提出了一种新的网络约束特征选择模型,用于识别由结构脑网络引导的神经影像标记,该模型是通过稀疏表示方法构造的,从而可以对神经影像特征之间的相互关系进行编码转化为概率。我们的新方法通过ADNI-GO和ADNI-2(阿尔茨海默氏病神经影像学计划)的MRI和AV45-PET数据进行了评估。在所有认知功能预测任务中,我们的新NCFS方法均优于其他最新的回归方法。同时,我们证明了该新方法可以选择相关的成像标记,而这些标记被竞争方法所忽略。

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