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Spatio-temporal Regularization for Longitudinal Registration to an Unbiased 3D Individual Template

机译:纵向注册到无偏3D个人模板的时空正则化

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摘要

Neurodegenerative diseases such as Alzheimer's disease present subtle anatomical brain changes before the appearance of clinical symptoms. Large longitudinal brain imaging datasets are now accessible to investigate these structural changes over time. However, manual structure segmentation is long and tedious and although automatic methods exist, they are often performed in a cross-sectional manner where each visit is analysed independently. With such analysis methods, bias, error and longitudinal noise may be introduced. Noise due to MR scanners and other physiological effects may also introduce variability in the measurement. We propose to use 4D non-linear registration with spatio-temporal regularization to correct for longitudinal inconsistency in the context of structure segmentation. The major contribution of this article is the individual template creation with spatio-temporal regularization of the deformation fields for each subject. We validate our method with different sets of real MRI data and demonstrate that spatially local temporal regularization yields more consistent rates of change of global structures resulting in better statistical power for detecting significant changes occurring between populations.
机译:神经退行性疾病(例如阿尔茨海默氏病)在出现临床症状之前会表现出细微的脑部解剖变化。现在可以访问大型纵向脑成像数据集,以调查这些结构随时间的变化。但是,手动结构分割很长且乏味,并且尽管存在自动方法,但是它们通常以截面方式执行,其中每次访问都独立进行分析。使用这种分析方法,可能会引入偏差,误差和纵向噪声。由MR扫描仪引起的噪声和其他生理效应也可能会导致测量结果变化。我们建议使用时空正则化的4D非线性配准,以纠正结构分割情况下的纵向不一致。本文的主要贡献是通过对每个主题的变形场进行时空正则化来创建单独的模板。我们用不同的真实MRI数据集验证了我们的方法,并证明了空间局部时间正则化可产生更一致的全局结构变化率,从而获得更好的统计能力来检测种群之间发生的重大变化。

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