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Multimodal Data Fusion Using Source Separation: Application to Medical Imaging

机译:使用源分离的多峰数据融合:在医学成像中的应用

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The joint independent component analysis (jICA) and the transposed independent vector analysis (tIVA) models are two effective solutions based on blind source separation (BSS) that enable fusion of data from multiple modalities in a symmetric and fully multivariate manner. The previous paper in this special issue discusses the properties and the main issues in the implementation of these two models. In this accompanying paper, we consider the application of these two models to fusion of multimodal medical imaging data—functional magnetic resonance imaging (fMRI), structural MRI (sMRI), and electroencephalography (EEG) data collected from a group of healthy controls and patients with schizophrenia performing an auditory oddball task. We show how both models can be used to identify a set of components that report on differences between the two groups, , for all the modalities used in the study. We discuss the importance of algorithm and order selection as well as tradeoffs involved in the selection of one model over another. We note that for the selected data set, especially given the limited number of subjects available for the study, jICA provides a more desirable solution, however the use of an ICA algorithm that uses flexible density matching provides advantages over the most widely used algorithm, Infomax, for the problem.
机译:联合独立成分分析(jICA)模型和转置独立向量分析(tIVA)模型是基于盲源分离(BSS)的两个有效解决方案,这些解决方案能够以对称且完全多变量的方式融合来自多个模态的数据。本期特刊的前一篇文章讨论了这两种模型的实现的属性和主要问题。在本随附的论文中,我们考虑将这两种模型应用于多模式医学影像数据的融合-功能磁共振成像(fMRI),结构MRI(sMRI)和脑电图(EEG)数据,这些数据是从一组健康对照组和患者那里收集的精神分裂症执行听觉怪异任务。对于该研究中使用的所有方法,我们将展示如何使用两种模型来识别一组报告两组差异的组件。我们讨论了算法和订单选择的重要性,以及在选择一种模型时要权衡取舍的问题。我们注意到,对于选定的数据集,特别是考虑到可供研究的学科数量有限,jICA提供了更理想的解决方案,但是使用ICA算法(使用灵活的密度匹配)相对于使用最广泛的算法Infomax更具优势,对于问题。

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