Multivariate General Linear Models (MGLM) on Riemannian Manifolds with Applications to Statistical Analysis of Diffusion Weighted Images.

Hyunwoo J Kim, Nagesh Adluru, Maxwell D Collins, Moo K Chung, Barbara B Bendlin, Sterling C Johnson, Richard J Davidson, Vikas Singh
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引用次数: 49

Abstract

Linear regression is a parametric model which is ubiquitous in scientific analysis. The classical setup where the observations and responses, i.e., (xi , yi ) pairs, are Euclidean is well studied. The setting where yi is manifold valued is a topic of much interest, motivated by applications in shape analysis, topic modeling, and medical imaging. Recent work gives strategies for max-margin classifiers, principal components analysis, and dictionary learning on certain types of manifolds. For parametric regression specifically, results within the last year provide mechanisms to regress one real-valued parameter, xiR, against a manifold-valued variable, yi ∈ . We seek to substantially extend the operating range of such methods by deriving schemes for multivariate multiple linear regression -a manifold-valued dependent variable against multiple independent variables, i.e., f : Rn → . Our variational algorithm efficiently solves for multiple geodesic bases on the manifold concurrently via gradient updates. This allows us to answer questions such as: what is the relationship of the measurement at voxel y to disease when conditioned on age and gender. We show applications to statistical analysis of diffusion weighted images, which give rise to regression tasks on the manifold GL(n)/O(n) for diffusion tensor images (DTI) and the Hilbert unit sphere for orientation distribution functions (ODF) from high angular resolution acquisition. The companion open-source code is available on nitrc.org/projects/riem_mglm.

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黎曼流形上的多元一般线性模型及其在扩散加权图像统计分析中的应用。
线性回归是一种在科学分析中普遍存在的参数化模型。观察和响应的经典设置,即(xi, yi)对,是欧几里得的,得到了很好的研究。在形状分析、主题建模和医学成像的应用中,yi是一个非常有趣的话题。最近的工作给出了在某些类型的流形上的最大边际分类器、主成分分析和字典学习策略。具体来说,对于参数回归,去年的结果提供了将一个实值参数xi∈R与流形值变量yi∈进行回归的机制。我们试图通过推导多元多元线性回归(流形值因变量对多个自变量,即f: Rn→)的格式来大幅扩展这些方法的操作范围。该变分算法通过梯度更新,有效地求解了流形上的多个测地线。这使我们能够回答这样的问题:当以年龄和性别为条件时,体素y的测量与疾病的关系是什么?我们展示了扩散加权图像的统计分析应用,这导致了对扩散张量图像(DTI)的流形GL(n)/O(n)的回归任务和对高角分辨率采集的方向分布函数(ODF)的希尔伯特单位球的回归任务。配套的开源代码可在nitrc.org/projects/riem_mglm上获得。
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