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结构稀疏典型相关分析作为一种全脑多模态数据融合方法。

Structured and Sparse Canonical Correlation Analysis as a Brain-Wide Multi-Modal Data Fusion Approach.

出版信息

IEEE Trans Med Imaging. 2017 Jul;36(7):1438-1448. doi: 10.1109/TMI.2017.2681966. Epub 2017 Mar 14.

Abstract

Multi-modal data fusion has recently emerged as a comprehensive neuroimaging analysis approach, which usually uses canonical correlation analysis (CCA). However, the current CCA-based fusion approaches face problems like high-dimensionality, multi-collinearity, unimodal feature selection, asymmetry, and loss of spatial information in reshaping the imaging data into vectors. This paper proposes a structured and sparse CCA (ssCCA) technique as a novel CCA method to overcome the above problems. To investigate the performance of the proposed algorithm, we have compared three data fusion techniques: standard CCA, regularized CCA, and ssCCA, and evaluated their ability to detect multi-modal data associations. We have used simulations to compare the performance of these approaches and probe the effects of non-negativity constraint, the dimensionality of features, sample size, and noise power. The results demonstrate that ssCCA outperforms the existing standard and regularized CCA-based fusion approaches. We have also applied the methods to real functional magnetic resonance imaging (fMRI) and structural MRI data of Alzheimer's disease (AD) patients (n = 34) and healthy control (HC) subjects (n = 42) from the ADNI database. The results illustrate that the proposed unsupervised technique differentiates the transition pattern between the subject-course of AD patients and HC subjects with a p-value of less than 1×10 . Furthermore, we have depicted the brain mapping of functional areas that are most correlated with the anatomical changes in AD patients relative to HC subjects.

摘要

多模态数据融合最近已成为一种全面的神经影像学分析方法,通常使用典型相关分析(CCA)。然而,当前基于 CCA 的融合方法面临着一些问题,如高维性、多共线性、单模态特征选择、不对称性以及在将成像数据重塑为向量时空间信息的丢失。本文提出了一种结构稀疏 CCA(ssCCA)技术作为一种新的 CCA 方法来克服上述问题。为了研究所提出算法的性能,我们比较了三种数据融合技术:标准 CCA、正则化 CCA 和 ssCCA,并评估了它们检测多模态数据关联的能力。我们使用模拟来比较这些方法的性能,并探究非负约束、特征维度、样本量和噪声功率的影响。结果表明,ssCCA 优于现有的标准和正则化 CCA 融合方法。我们还将这些方法应用于来自 ADNI 数据库的阿尔茨海默病(AD)患者(n = 34)和健康对照(HC)受试者(n = 42)的真实功能磁共振成像(fMRI)和结构磁共振成像(sMRI)数据。结果表明,所提出的无监督技术可以区分 AD 患者和 HC 受试者的过渡模式,p 值小于 1×10。此外,我们还描绘了与 AD 患者相对于 HC 受试者的解剖变化最相关的功能区域的脑图。

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