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Mining High-order Multimodal Brain Image Associations via Sparse Tensor Canonical Correlation Analysis

机译:通过稀疏张量典型相关分析挖掘高阶多模脑图像关联

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Neuroimaging techniques have shown increasing power to understand the neuropathology of brain disorders. Multimodal brain imaging data carry distinct but complementary information and thus could depict brain disorders comprehensively. To deepen our understanding, it is essential to investigate the intrinsic associations among multiple modalities. To date, the pairwise correlations between imaging data captured by different imaging modalities have been well studied, leaving formidable challenges to identify high-order associations. In this paper, we first propose a new sparse tensor canonical correlation analysis (STCCA) with feature selection to analyze the complex high-order relationships among multimodal brain imaging data. In addition, we find that methods for identifying pairwise associations and high-order associations have complementary advantages, providing a sound reason to fuse them. Therefore, we further propose an improved STCCA (STCCA+) which integrates STCCA and sparse multiple CCA (SMCCA) to fully uncover associations among multiple imaging modalities. The proposed STCCA+ detects equivalent association levels among multimodal imaging data compared to SMCCA. Most importantly, both STCCA and STCCA+ yield modality-consistent imaging markers and modality-specific ones, assuring a better and meaningful feature selection capability. Finally, the identified imaging markers and their high-order correlations could form a comprehensive indication of brain disorders, showing their promise in high-order multimodal brain imaging analysis.
机译:神经影像学技术表明了了解脑疾病神经病理学的力量。多模式脑成像数据携带不同但互补的信息,因此可以全面描述脑疾病。为了深化我们的理解,必须调查多种方式之间的内在协会。迄今为止,已经很好地研究了由不同成像模型捕获的成像数据之间的成对相关性,从而留下强大的挑战来识别高阶关联。在本文中,我们首先提出了一种新的稀疏张量典型相关分析(STCCA),具有特征选择,分析多模脑成像数据之间的复杂高阶关系。此外,我们发现识别成对关联和高阶关联的方法具有互补优势,提供了熔化它们的声音原因。因此,我们进一步提出了一种改进的STCCA(STCCA + )将STCCA和稀疏多CCA(SMCCA)集成到多个成像模式之间的完全揭示关联。建议的stcca. + 与SMCCA相比,检测多模式成像数据之间的等效关联水平。最重要的是,STCCA和STCCA + 产生模态 - 一致的成像标记和模态特定的,确保更好和有意义的特征选择能力。最后,所确定的成像标记及其高阶相关性可以形成脑疾病的综合指示,展示了他们在高阶多峰脑成像分析中的承诺。

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