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Sample-poor estimation of order and common signal subspace with application to fusion of medical imaging data

机译:具有应用于医学成像数据的融合的顺序和公共信号子空间的样本差

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摘要

Due to their data-driven nature, multivariate methods such as canonical correlation analysis(CCA) have proven very useful for fusion of multimodal neurological data. However, being able to determine the degree of similarity between datasets and appropriate order selection are crucial to the success of such techniques. The standard methods for calculating the order of multimodal data focus only on sources with the greatest individual energy and ignore relations across datasets. Additionally, these techniques as well as the most widely-used methods for determining the degree of similarity between datasets assume sufficient sample support and are not effective in the sample-poor regime. In this paper, we propose to jointly estimate the degree of similarity between datasets and their order when few samples are present using principal component analysis and canonical correlation analysis(PCA-CCA). By considering these two problems simultaneously, we are able to minimize the assumptions placed on the data and achieve superior performance in the sample-poor regime compared to traditional techniques. We apply PCA-CCA to the pairwise combinations of functional magnetic resonance imaging(fMRI), structural magnetic resonance imaging(sMRI), and electroencephalogram(EEG) data drawn from patients with schizophrenia and healthy controls while performing an auditory oddball task. The PCA-CCA results indicate that the fMRI and sMRI datasets are the most similar, whereas the sMRI and EEG datasets share the least similarity. We also demonstrate that the degree of similarity obtained by PCA-CCA is highly predictive of the degree of significance found for components generated using CCA. (C) 2016 Elsevier Inc. All rights reserved.
机译:由于它们的数据驱动的性质,多元方法如典型相关分析(CCA)已被证明为多峰神经数据的融合非常有用的。然而,能够确定数据集和适当的顺序选择之间的相似程度是这种技术的成功是至关重要的。计算多模态数据的顺序的标准方法只注重以最大的个人能源和忽略整个数据集的关系。另外,这些技术以及用于确定数据集之间相似性程度的最广泛使用的方法假定足够的样品支持和不能有效地采样差制度。在本文中,我们提议联合估计的数据集,并且当几个样品存在采用主成分分析和典型相关分析(PCA-CCA)它们的顺序之间的相似程度。通过同时考虑这两个问题,我们能够最大限度地减少放置在数据的假设,实现样品穷人政权卓越的性能与传统技术相比。我们采用PCA-CCA,同时执行的听觉古怪的任务从精神分裂症患者和健康对照绘制功能磁共振成像(fMRI)技术,结构磁共振成像(SMRI)和脑电图(EEG)数据的配对组合。该PCA-CCA结果表明,功能磁共振成像和SMRI数据集是最相似的,而SMRI和脑电图数据集共享至少相似。我们还表明,通过PCA-CCA获得相似程度是高度预测意义的发现,使用CCA生成的组件度。 (c)2016 Elsevier Inc.保留所有权利。

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