Latent Variable Graphical Model Selection using Harmonic Analysis: Applications to the Human Connectome Project (HCP).

Won Hwa Kim, Hyunwoo J Kim, Nagesh Adluru, Vikas Singh
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Abstract

A major goal of imaging studies such as the (ongoing) Human Connectome Project (HCP) is to characterize the structural network map of the human brain and identify its associations with covariates such as genotype, risk factors, and so on that correspond to an individual. But the set of image derived measures and the set of covariates are both large, so we must first estimate a 'parsimonious' set of relations between the measurements. For instance, a Gaussian graphical model will show conditional independences between the random variables, which can then be used to setup specific downstream analyses. But most such data involve a large list of 'latent' variables that remain unobserved, yet affect the 'observed' variables sustantially. Accounting for such latent variables is not directly addressed by standard precision matrix estimation, and is tackled via highly specialized optimization methods. This paper offers a unique harmonic analysis view of this problem. By casting the estimation of the precision matrix in terms of a composition of low-frequency latent variables and high-frequency sparse terms, we show how the problem can be formulated using a new wavelet-type expansion in non-Euclidean spaces. Our formulation poses the estimation problem in the frequency space and shows how it can be solved by a simple sub-gradient scheme. We provide a set of scientific results on ~500 scans from the recently released HCP data where our algorithm recovers highly interpretable and sparse conditional dependencies between brain connectivity pathways and well-known covariates.

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使用谐波分析的潜在变量图形模型选择:人类连接组计划 (HCP) 的应用。
成像研究(如正在进行的人类连接组计划(HCP))的一个主要目标是描述人类大脑的结构网络图,并确定其与基因型、风险因素等共变量之间的关联。但图像衍生测量值和协变因素的集合都很大,因此我们必须首先估计测量值之间的 "拟然 "关系。例如,高斯图形模型将显示随机变量之间的条件独立性,然后可用于设置特定的下游分析。但是,大多数此类数据都涉及大量 "潜在 "变量,这些变量仍未被观测到,但会对 "观测 "变量产生持续影响。标准精确矩阵估算无法直接考虑这些潜变量,只能通过高度专业化的优化方法来解决。本文对这一问题提出了独特的谐波分析观点。通过用低频潜变量和高频稀疏项的组合来估算精度矩阵,我们展示了如何在非欧几里得空间中使用新的小波类型展开来表述这个问题。我们的表述提出了频率空间中的估计问题,并展示了如何通过简单的子梯度方案解决该问题。我们对最近发布的 HCP 数据中的约 500 个扫描结果进行了科学分析,在这些结果中,我们的算法恢复了大脑连接通路与众所周知的协变量之间高度可解释的稀疏条件依赖关系。
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