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SGPP: Spatial Gaussian Predictive Process Models for Neuroimaging Data

机译:SGPP:神经影像数据的空间高斯预测过程模型

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摘要

The aim of this paper is to develop a spatial Gaussian predictive process (SGPP) framework for accurately predicting neuroimaging data by using a set of covariates of interest, such as age and diagnostic status, and an existing neuroimaging data set. To achieve better prediction, we not only delineate spatial association between neuroimaging data and covariates, but also explicitly model spatial dependence in neuroimaging data. The SGPP model uses a functional principal component model to capture medium-to-long-range (or global) spatial dependence, while SGPP uses a multivariate simultaneous autoregressive model to capture short-range (or local) spatial dependence as well as cross-correlations of different imaging modalities. We propose a three-stage estimation procedure to simultaneously estimate varying regression coefficients across voxels and the global and local spatial dependence structures. Furthermore, we develop a predictive method to use the spatial correlations as well as the cross-correlations by employing a cokriging technique, which can be useful for the imputation of missing imaging data. Simulation studies and real data analysis are used to evaluate the prediction accuracy of SGPP and show that SGPP significantly outperforms several competing methods, such as voxel-wise linear model, in prediction. Although we focus on the morphometric variation of lateral ventricle surfaces in a clinical study of neurodevelopment, it is expected that SGPP is applicable to other imaging modalities and features.
机译:本文的目的是通过使用一组感兴趣的协变量(例如年龄和诊断状态)以及现有的神经影像数据集,开发一种空间高斯预测过程(SGPP)框架,以准确地预测神经影像数据。为了获得更好的预测,我们不仅描述了神经影像数据和协变量之间的空间关联,而且还明确地对神经影像数据中的空间依赖性进行建模。 SGPP模型使用功能主成分模型来捕获中到远程(或全局)空间相关性,而SGPP使用多元同时自回归模型来捕获短距离(或局部)空间相关性以及互相关性不同的成像方式。我们提出了一个三阶段的估计程序来同时估计整个体素以及全局和局部空间依赖结构的变化回归系数。此外,我们开发了一种预测方法,通过采用协同克里格技术来使用空间相关性和互相关性,这对于估算缺失的成像数据可能很有用。仿真研究和实际数据分析用于评估SGPP的预测准确性,并表明SGPP在预测方面明显优于几种竞争方法,例如体素线性模型。尽管在神经发育的临床研究中我们侧重于侧脑室表面的形态变化,但可以预期SGPP也适用于其他成像方式和功能。

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