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A feature-based approach to combine functional MRI, structural MRI and EEG brain imaging data

机译:基于功能的方法将功能性MRI,结构性MRI和EEG脑成像数据相结合

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The acquisition of multiple brain imaging types for a given study is a very common practice. However these data are typically examined in separate analyses, rather than in a combined model. We propose a novel methodology to perform joint independent component analysis across image modalities, including structural MRI data, functional MRI activation data and EEG data, and to visualize the results via a joint histogram visualization technique. Evaluation of which combination of fused data is most useful is determined by using the Kullback-Leibler divergence. We demonstrate our method on a data set composed of functional MRI data from two tasks, structural MRI data, and EEG data collected on patients with schizophrenia and healthy controls. We show that combining data types can improve our ability to distinguish differences between groups
机译:对于给定的研究,获取多种大脑成像类型是一种非常普遍的做法。但是,通常在单独的分析中而不是在组合模型中检查这些数据。我们提出一种新颖的方法来执行跨图像模态的联合独立成分分析,包括结构MRI数据,功能性MRI激活数据和EEG数据,并通过联合直方图可视化技术对结果进行可视化。通过使用Kullback-Leibler散度确定对哪种融合数据组合最有用。我们在由两个任务的功能性MRI数据,结构性MRI数据和对精神分裂症患者和健康对照者收集的EEG数据组成的数据集上证明了我们的方法。我们表明,组合数据类型可以提高我们区分组之间差异的能力

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