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首页> 外文期刊>Frontiers in Neuroscience >Estimating multivariate similarity between neuroimaging datasets with sparse canonical correlation analysis: an application to perfusion imaging
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Estimating multivariate similarity between neuroimaging datasets with sparse canonical correlation analysis: an application to perfusion imaging

机译:用稀疏典范相关分析估计神经影像数据集之间的多元相似性:在灌注成像中的应用

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An increasing number of neuroimaging studies are based on either combining more than one data modality (inter-modal) or combining more than one measurement from the same modality (intra-modal). To date, most intra-modal studies using multivariate statistics have focused on differences between datasets, for instance relying on classifiers to differentiate between effects in the data. However, to fully characterize these effects, multivariate methods able to measure similarities between datasets are needed. One classical technique for estimating the relationship between two datasets is canonical correlation analysis (CCA). However, in the context of high-dimensional data the application of CCA is extremely challenging. A recent extension of CCA, sparse CCA (SCCA), overcomes this limitation, by regularizing the model parameters while yielding a sparse solution. In this work, we modify SCCA with the aim of facilitating its application to high-dimensional neuroimaging data and finding meaningful multivariate image-to-image correspondences in intra-modal studies. In particular, we show how the optimal subset of variables can be estimated independently and we look at the information encoded in more than one set of SCCA transformations. We illustrate our framework using Arterial Spin Labeling data to investigate multivariate similarities between the effects of two antipsychotic drugs on cerebral blood flow.
机译:越来越多的神经影像学研究是基于结合多个数据形式(模态)或组合来自同一形式的多个测量值(模态内)。迄今为止,大多数使用多元统计的模态内研究都集中在数据集之间的差异上,例如依靠分类器来区分数据中的影响。但是,要完全表征这些影响,需要能够测量数据集之间相似度的多元方法。用于估计两个数据集之间关系的一种经典技术是规范相关分析(CCA)。但是,在高维数据的背景下,CCA的应用极具挑战性。 CCA的最新扩展是稀疏CCA(SCCA),它通过对模型参数进行正则化同时生成稀疏解来克服了这一限制。在这项工作中,我们修改了SCCA,以促进其在高维神经影像数据中的应用并在模内研究中发现有意义的多元图像间对应关系。特别是,我们展示了如何可以独立地估计变量的最佳子集,并且我们研究了在一组以上SCCA转换中编码的信息。我们用动脉自旋标记数据说明了我们的框架,以研究两种抗精神病药对脑血流的影响之间的多元相似性。

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