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Multivariate Normalization with Symmetric Diffeomorphisms for Multivariate Studies

机译:对对称扩散术进行多元化研究的多变量归一化

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Current clinical and research neuroimaging protocols acquire images using multiple modalities, for instance, T1, T2, diffusion tensor and cerebral blood flow magnetic resonance images (MRI). These multivariate datasets provide unique and often complementary anatomical and physiological information about the subject of interest. We present a method that uses fused multiple modality (scalar and tensor) datasets to perform intersubject spatial normalization. Our multivariate approach has the potential to eliminate inconsistencies that occur when normalization is performed on each modality separately. Furthermore, the multivariate approach uses a much richer anatomical and physiological image signature to infer image correspondences and perform multivariate statistical tests. In this initial study, we develop the theory for Multivariate Symmetric Normalization (MVSyN), establish its feasibility and discuss preliminary results on a multivariate statistical study of 22q deletion syndrome.
机译:目前的临床和研究神经影像协议使用多种方式获取图像,例如T1,T2,扩散张量和脑血流磁共振图像(MRI)。这些多变量数据集提供了有关兴趣主题的独特且通常互补的解剖和生理信息。我们介绍了一种使用熔融多模态(标量和张量)数据集来执行Intersubject空间标准化的方法。我们的多变量方法有可能消除在分别对每个模态对每种模式执行归一化时发生的不一致。此外,多变量方法使用多重的解剖和生理图像签名来推断图像对应关系并执行多变量统计测试。在这个初步研究中,我们开发了多元对称标准化(MVSYN)的理论,建立其可行性并讨论了22Q缺失综合征的多元统计研究的初步结果。

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