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Longitudinal High-Dimensional Principal Components Analysis with Application to Diffusion Tensor Imaging of Multiple Sclerosis

机译:纵向高维主成分分析及其在多发性硬化症弥散张量成像中的应用

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摘要

We develop a flexible framework for modeling high-dimensional imaging data observed longitudinally. The approach decomposes the observed variability of repeatedly measured high-dimensional observations into three additive components: a subject-specific imaging random intercept that quantifies the cross-sectional variability, a subject-specific imaging slope that quantifies the dynamic irreversible deformation over multiple realizations, and a subject-visit specific imaging deviation that quantifies exchangeable effects between visits. The proposed method is very fast, scalable to studies including ultra-high dimensional data, and can easily be adapted to and executed on modest computing infrastructures. The method is applied to the longitudinal analysis of diffusion tensor imaging (DTI) data of the corpus callosum of multiple sclerosis (MS) subjects. The study includes 176 subjects observed at 466 visits. For each subject and visit the study contains a registered DTI scan of the corpus callosum at roughly 30,000 voxels.
机译:我们开发了一个灵活的框架,用于对纵向观察到的高维成像数据进行建模。该方法将重复测量的高维观测值的观测变异性分解为三个附加成分:量化横截面变异性的特定于对象的成像随机拦截,量化多个实现中的动态不可逆变形的特定于对象的成像斜率,以及受试者访问的特定成像偏差可量化访问之间的可交换效果。所提出的方法非常快,可扩展到包括超高维数据的研究,并且可以轻松地适应适度的计算基础架构并在其上执行。该方法应用于多发性硬化(MS)受试者the体的扩散张量成像(DTI)数据的纵向分析。该研究包括在466次访问中观察到的176名受试者。对于每位受检者和访问者,研究都包含对at体约30,000个体素的注册DTI扫描。

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