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Discriminative Learning for Alzheimer's Disease Diagnosis via Canonical Correlation Analysis and Multimodal Fusion

机译:通过典范相关分析和多峰融合进行判别性学习,用于阿尔茨海默氏病的诊断

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To address the challenging task of diagnosing neurodegenerative brain disease, such as Alzheimer's disease (AD) and mild cognitive impairment (MCI), we propose a novel method using discriminative feature learning and canonical correlation analysis (CCA) in this paper. Specifically, multimodal features and their CCA projections are concatenated together to represent each subject, and hence both individual and shared information of AD disease are captured. A discriminative learning with multilayer feature hierarchy is designed to further improve performance. Also, hybrid representation is proposed to maximally explore data from multiple modalities. A novel normalization method is devised to tackle the intra- and inter-subject variations from the multimodal data. Based on our extensive experiments, our method achieves an accuracy of 96.93% [AD vs. normal control (NC)], 86.57 % (MCI vs. NC), and 82.75% [MCI converter (MCI-C) vs. MCI non-converter (MCI-NC)], respectively, which outperforms the state-of-the-art methods in the literature.
机译:为了解决诊断神经退行性脑疾病(例如阿尔茨海默氏病(AD)和轻度认知障碍(MCI))的艰巨任务,我们在本文中提出了一种使用判别特征学习和规范相关分析(CCA)的新方法。具体而言,多模式特征及其CCA预测被串联在一起以代表每个受试者,因此,AD疾病的个体信息和共享信息均被捕获。具有多层特征层次结构的判别式学习旨在进一步提高性能。另外,提出了混合表示以最大程度地探索来自多种模态的数据。设计了一种新颖的归一化方法来解决多模态数据的受试者内和受试者间变异。根据我们广泛的实验,我们的方法的准确度分别为96.93%(AD与正常对照(NC)),86.57%(MCI与NC)和82.75%(MCI转换器(MCI-C)与非MCI相比)。转换器(MCI-NC)],其性能优于文献中的最新方法。

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