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Manifold Regularized Multitask Feature Learning for Multimodality Disease Classification

机译:用于多模态疾病分类的流形正则化多任务特征学习

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Multimodality based methods have shown great advantages in classification of Alzheimer's disease (AD) and its prodromal stage, that is, mild cognitive impairment (MCI). Recently, multitask feature selection methods are typically used for joint selection of common features across multiple modalities. However, one disadvantage of existing multimodality based methods is that they ignore the useful data distribution information in each modality, which is essential for subsequent classification. Accordingly, in this paper we propose a manifold regularized multitask feature learning method to preserve both the intrinsic relatedness among multiple modalities of data and the data distribution information in each modality. Specifically, we denote the feature learning on each modality as a single task, and use group-sparsity regularizer to capture the intrinsic relatedness among multiple tasks (i.e., modalities) and jointly select the common features from multiple tasks. Furthermore, we introduce a new manifold-based Laplacian regularizer to preserve the data distribution information from each task. Finally, we use the multikernel support vector machine method to fuse multimodality data for eventual classification. Conversely, we also extend our method to the semisupervised setting, where only partial data are labeled. We evaluate our method using the baseline magnetic resonance imaging (MRI), fluorodeoxyglucose positron emission tomography (FDG-PET), and cerebrospinal fluid (CSF) data of subjects from AD neuroimaging initiative database. The experimental results demonstrate that our proposed method can not only achieve improved classification performance, but also help to discover the disease-related brain regions useful for disease diagnosis. Hum Brain Mapp 36:489-507, 2015. (c) 2014 Wiley Periodicals, Inc.
机译:基于多模式的方法在阿尔茨海默氏病(AD)及其前驱阶段即轻度认知障碍(MCI)的分类中显示出巨大的优势。近来,多任务特征选择方法通常用于跨多个模态的共同特征的联合选择。但是,现有基于多模态的方法的一个缺点是它们忽略了每种模态中有用的数据分发信息,这对于后续分类至关重要。因此,在本文中,我们提出了一种流形正则化多任务特征学习方法,以保留多种数据形式之间的内在关联性以及每种形式中的数据分布信息。具体而言,我们将每个模态上的特征学习表示为单个任务,并使用组稀疏正则化器捕获多个任务(即模态)之间的内在关联性,并从多个任务中共同选择共同特征。此外,我们引入了一个新的基于流形的Laplacian正则化器,以保留每个任务的数据分布信息。最后,我们使用多核支持向量机方法融合多模态数据以进行最终分类。相反,我们也将方法扩展到半监督设置,其中仅标记部分数据。我们使用来自AD神经影像主动数据库的受试者的基线磁共振成像(MRI),氟脱氧葡萄糖正电子发射断层扫描(FDG-PET)和脑脊液(CSF)数据评估了我们的方法。实验结果表明,我们提出的方法不仅可以实现改进的分类性能,而且还有助于发现对疾病诊断有用的与疾病相关的大脑区域。嗡嗡声大脑地图36:489-507,2015.(c)2014威利期刊公司

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