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Manifold Regularized Multi-Task Feature Selection for Multi-Modality Classification in Alzheimer's Disease

机译:用于阿尔茨海默病多模式分类的流形正规化多任务特征选择

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Accurate diagnosis of Alzheimer's disease (AD), as well as its pro dromal stage (i.e., mild cognitive impairment, MCI), is very important for possible delay and early treatment of the disease. Recently, multi-modality methods have been used for fusing information from multiple different and complementary imaging and non-imaging modalities. Although there are a number of existing multi-modality methods, few of them have addressed the problem of joinl identification of disease-related brain regions from multi-modality data for classification. In this paper, we proposed a manifold regularized multi-task learning framework to jointly select features from multi-modality data. Specifically, we formulate the multi-modality classification as a multi-task learning framework, where each task focuses on the classification based on each modality. In order to capture the intrinsic relatedness among multiple tasks (i.e., modalities), we adopted a group sparsity regularizer, which ensures only a small number of features to be selected jointly. In addition, we introduced a new manifold based Laplacian regularization term to preserve the geometric distribution of original data from each task, which can lead to the selection of more discriminative features. Furthermore, we extend our method to the semi-supervised setting, which is very important since the acquisition of a large set of labeled data (i.e., diagnosis of disease) is usually expensive and time-consuming, while the collection of unlabeled data is relatively much easier. To validate our method, we have performed extensive evaluations on the baseline Magnetic resonance imaging (MRI) and fluorodeoxyglucose positron emission tomography (FDG-PET) data of Alzheimer's Disease Neuroimaging Initiative (ADNI) database. Our experimental results demonstrate the effectiveness of the proposed method.
机译:准确诊断阿尔茨海默氏病(AD)以及其前驱阶段(即轻度认知障碍,MCI),对于疾病的延误和早期治疗非常重要。近来,多模态方法已被用于融合来自多个不同且互补的成像和非成像模态的信息。尽管存在许多现有的多模式方法,但是很少有方法解决从多模式数据进行分类的疾病相关脑区域的联合识别问题。在本文中,我们提出了一个多方面的正规化多任务学习框架,以从多模态数据中共同选择特征。具体来说,我们将多模式分类公式化为一个多任务学习框架,其中每个任务都将重点放在基于每个模式的分类上。为了捕获多个任务(即模态)之间的内在关联性,我们采用了组稀疏性正则化器,可确保仅选择少量特征。此外,我们引入了一个新的基于流形的Laplacian正则化术语,以保留每个任务的原始数据的几何分布,这可能导致选择更具区分性的特征。此外,我们将方法扩展到半监督环境,这非常重要,因为获取大量标记数据(即疾病的诊断)通常是昂贵且费时的,而未标记数据的收集相对来说是相对昂贵的容易得多。为了验证我们的方法,我们对阿尔茨海默氏病神经影像计划(ADNI)数据库的基线磁共振成像(MRI)和氟脱氧葡萄糖正电子发射断层扫描(FDG-PET)数据进行了广泛的评估。我们的实验结果证明了该方法的有效性。

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