Riemannian Nonlinear Mixed Effects Models: Analyzing Longitudinal Deformations in Neuroimaging.

Hyunwoo J Kim, Nagesh Adluru, Heemanshu Suri, Baba C Vemuri, Sterling C Johnson, Vikas Singh
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Abstract

Statistical machine learning models that operate on manifold-valued data are being extensively studied in vision, motivated by applications in activity recognition, feature tracking and medical imaging. While non-parametric methods have been relatively well studied in the literature, efficient formulations for parametric models (which may offer benefits in small sample size regimes) have only emerged recently. So far, manifold-valued regression models (such as geodesic regression) are restricted to the analysis of cross-sectional data, i.e., the so-called "fixed effects" in statistics. But in most "longitudinal analysis" (e.g., when a participant provides multiple measurements, over time) the application of fixed effects models is problematic. In an effort to answer this need, this paper generalizes non-linear mixed effects model to the regime where the response variable is manifold-valued, i.e., f : Rd → ℳ. We derive the underlying model and estimation schemes and demonstrate the immediate benefits such a model can provide - both for group level and individual level analysis - on longitudinal brain imaging data. The direct consequence of our results is that longitudinal analysis of manifold-valued measurements (especially, the symmetric positive definite manifold) can be conducted in a computationally tractable manner.

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黎曼非线性混合效应模型:分析神经成像中的纵向形变。
基于流形值数据的统计机器学习模型在视觉领域得到了广泛的研究,其动机是在活动识别、特征跟踪和医学成像方面的应用。虽然非参数方法在文献中已经得到了相对较好的研究,但参数模型的有效公式(可能在小样本量制度中提供好处)最近才出现。到目前为止,流形值回归模型(如测地线回归)仅限于对横截面数据的分析,即统计学中所谓的“固定效应”。但在大多数“纵向分析”中(例如,当参与者随时间提供多个测量值时),固定效应模型的应用是有问题的。为了解决这一问题,本文将非线性混合效应模型推广到响应变量为流形值的区域,即f: Rd→z。我们推导了潜在的模型和估计方案,并证明了这种模型可以提供的直接好处-无论是群体水平还是个人水平的分析-对纵向脑成像数据。我们的结果的直接结果是流形值测量的纵向分析(特别是对称的正定流形)可以在计算上易于处理的方式进行。
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