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Joint Coupled-Feature Representation and Coupled Boosting for AD Diagnosis

机译:联合耦合特征表示和耦合增强用于AD诊断

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摘要

Recently, there has been a great interest in computer-aided Alzheimer’s Disease (AD) and Mild Cognitive Impairment (MCI) diagnosis. Previous learning based methods defined the diagnosis process as a classification task and directly used the low-level features extracted from neuroimaging data without considering relations among them. However, from a neuroscience point of view, it’s well known that a human brain is a complex system that multiple brain regions are anatomically connected and functionally interact with each other. Therefore, it is natural to hypothesize that the low-level features extracted from neuroimaging data are related to each other in some ways. To this end, in this paper, we first devise a coupled feature representation by utilizing intra-coupled and inter-coupled interaction relationship. Regarding multi-modal data fusion, we propose a novel coupled boosting algorithm that analyzes the pairwise coupled-diversity correlation between modalities. Specifically, we formulate a new weight updating function, which considers both incorrectly and inconsistently classified samples. In our experiments on the ADNI dataset, the proposed method presented the best performance with accuracies of 94.7% and 80.1% for AD vs. Normal Control (NC) and MCI vs. NC classifications, respectively, outperforming the competing methods and the state-of-the-art methods.
机译:最近,人们对计算机辅助的阿尔茨海默氏病(AD)和轻度认知障碍(MCI)诊断产生了浓厚的兴趣。基于先前学习的方法将诊断过程定义为分类任务,并且直接使用从神经影像数据中提取的低级特征,而无需考虑它们之间的关系。但是,从神经科学的角度来看,众所周知,人脑是一个复杂的系统,其中多个大脑区域在解剖学上相互连接并且在功能上相互影响。因此,很自然地假设从神经影像数据中提取的低级特征以某种方式相互关联。为此,在本文中,我们首先通过利用内部耦合和内部耦合的交互关系来设计耦合特征表示。关于多模态数据融合,我们提出了一种新颖的耦合提升算法,该算法分析了模态之间的成对耦合-多样性相关性。具体而言,我们制定了一个新的权重更新函数,该函数同时考虑了分类错误和分类不一致的样本。在我们针对ADNI数据集进行的实验中,提出的方法在AD与正常对照(NC)和MCI与NC分类中分别表现出94.7%和80.1%的最佳性能,优于竞争方法和状态最先进的方法。

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