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Learning Distributions of Shape Trajectories from Longitudinal Datasets: A Hierarchical Model on a Manifold of Diffeomorphisms

机译:从纵向数据集学习形状轨迹的分布:Diffeomorphisms流形的层次模型。

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We propose a method to learn a distribution of shape trajectories from longitudinal data, i.e. the collection of individual objects repeatedly observed at multiple time-points. The method allows to compute an average spatiotemporal trajectory of shape changes at the group level, and the individual variations of this trajectory both in terms of geometry and time dynamics. First, we formulate a non-linear mixed-effects statistical model as the combination of a generic statistical model for manifold-valued longitudinal data, a deformation model defining shape trajectories via the action of a finite-dimensional set of diffeomorphisms with a manifold structure, and an efficient numerical scheme to compute parallel transport on this manifold. Second, we introduce a MCMC-SAEM algorithm with a specific approach to shape sampling, an adaptive scheme for proposal variances, and a log-likelihood tempering strategy to estimate our model. Third, we validate our algorithm on 2D simulated data, and then estimate a scenario of alteration of the shape of the hippocampus 3D brain structure during the course of Alzheimer's disease. The method shows for instance that hippocampal atrophy progresses more quickly in female subjects, and occurs earlier in APOE4 mutation carriers. We finally illustrate the potential of our method for classifying pathological trajectories versus normal ageing.
机译:我们提出一种从纵向数据中学习形状轨迹分布的方法,即在多个时间点重复观察到的单个对象的集合。该方法允许计算组级别上形状变化的平均时空轨迹,以及该轨迹在几何形状和时间动力学方面的个体变化。首先,我们将非线性混合效应统计模型公式化为流形值纵向数据的通用统计模型,通过具有流形结构的有限维微分集的作用定义形状轨迹的变形模型的组合,一个有效的数值方案来计算该歧管上的平行传输。其次,我们介绍了一种MCMC-SAEM算法,该算法具有用于形状采样的特定方法,用于提案差异的自适应方案以及用于估计模型的对数似然回火策略。第三,我们在2D模拟数据上验证我们的算法,然后估计在阿尔茨海默氏病过程中海马3D脑结构形状发生改变的情况。例如,该方法表明,海马萎缩在女性受试者中进展更快,在APOE4突变携带者中更早发生。最后,我们说明了将病理轨迹与正常衰老进行分类的方法的潜力。

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