C-ICT for Discovery of Multiple Associations in Multimodal Imaging Data: Application to Fusion of fMRI and DTI Data

Chunying Jia, M. A. Akhonda, Qunfang Long, V. Calhoun, S. Waldstein, T. Adalı
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引用次数: 4

Abstract

Fusing datasets from different brain signal modalities improves accuracy in finding biomarkers of neuropsychiatric diseases. Several approaches, such as joint independent component analysis (ICA) and independent vector analysis (IVA), are useful but fall short of exploring multiple associations between different modalities, especially for the case where one underlying component in one modality might have multiple associations with others in another modality. This relationship is possible since one component in a given modality might have associations such as subject covariation with multiple components in another modality. We show that the consecutive independence and correlation transform (C-ICT) model, which successively performs ICA and canonical correlation analysis, is able to discover such multiple associations. C-ICT has been demonstrated to be useful for the fusion of functional magnetic resonance imaging (fMRI) and electroencephalography data but has not been tested for other data combinations. In this study, we apply the C-ICT to fuse fMRI and MRI-based diffusion tensor imaging (DTI) datasets collected from healthy controls and patients with schizophrenia. In addition to independent components that show significant differences between the two groups in the fMRI and DTI datasets separately, we find multiple associations between these components from the two modalities, which provide a unique potential biomarker for schizophrenia.
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C-ICT用于发现多模态成像数据中的多重关联:在fMRI和DTI数据融合中的应用
融合来自不同脑信号模式的数据集提高了发现神经精神疾病生物标志物的准确性。联合独立成分分析(ICA)和独立向量分析(IVA)等几种方法是有用的,但无法探索不同模态之间的多重关联,特别是在一种模态中的一个潜在成分可能与另一种模态中的其他成分有多重关联的情况下。这种关系是可能的,因为给定模态中的一个成分可能与另一个模态中的多个成分有关联,例如主体共变。我们证明了连续独立和相关变换(C-ICT)模型,它连续执行ICA和典型相关分析,能够发现这种多重关联。C-ICT已被证明可用于功能磁共振成像(fMRI)和脑电图数据的融合,但尚未对其他数据组合进行测试。在这项研究中,我们应用C-ICT融合从健康对照和精神分裂症患者收集的fMRI和基于mri的弥散张量成像(DTI)数据集。除了在fMRI和DTI数据集中分别显示两组之间显着差异的独立成分外,我们还发现两种模式中这些成分之间存在多种关联,这为精神分裂症提供了独特的潜在生物标志物。
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