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Complex-valued analysis and visualization of fMRI data for event-related and block-design paradigms

机译:功能磁共振成像数据的复杂值分析和可视化,用于事件相关和模块设计范例

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Independent Component Analysis (ICA) has been noted to be promising for the study of functional magnetic resonance imaging (fMRI) data also in its native complex-valued form. In this paper, we demonstrate the first successful application of group ICA to complex-valued fMRI data of an event-related paradigm. We show that networks associated with event-related responses as well as intrinsic fluctuations of hemodymamic activity can be extracted for data collected during an auditory oddball paradigm. The intrinsic networks are of particular interest due to their potential to study cognitive function and mental illness, including schizophrenia. More importantly, we show that analysis of fMRI data in its complex form can increase the sensitivity and specificity in the detection of activated brain regions both for event-related and block design paradigms when compared to magnitude-only applications. In addition, we introduce a novel fMRI phase-based visualization (FPV) technique to identify activated voxels such that the complex nature of the data is fully taken into account.
机译:独立成分分析(ICA)已被证明对于以天然复数值形式存在的功能性磁共振成像(fMRI)数据的研究也很有前途。在本文中,我们演示了ICA组在事件相关范例的复数值fMRI数据中的首次成功应用。我们表明与事件相关的响应以及血液动力学活动的内在波动相关联的网络可以提取为听觉怪胎范式中收集的数据。内在网络因其研究认知功能和精神疾病(包括精神分裂症)的潜力而特别受关注。更重要的是,我们显示,与仅幅度的应用相比,对复杂形式的fMRI数据进行分析可以提高事件相关和模块设计范例的激活脑区域检测的灵敏度和特异性。此外,我们引入了一种新颖的基于fMRI阶段的可视化(FPV)技术来识别激活的体素,从而充分考虑了数据的复杂性。

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