SGPP: spatial Gaussian predictive process models for neuroimaging data

被引:17
|
作者
Hyun, Jung Won [1 ]
Li, Yimei [1 ]
Gilmore, John H. [2 ]
Lu, Zhaohua [4 ,5 ]
Styner, Martin [2 ,3 ]
Zhu, Hongtu [4 ,5 ]
机构
[1] St Jude Childrens Res Hosp, Dept Biostat, Memphis, TN 38105 USA
[2] Univ N Carolina, Dept Psychiat, Chapel Hill, NC 27599 USA
[3] Univ N Carolina, Dept Comp Sci, Chapel Hill, NC 27599 USA
[4] Univ N Carolina, Dept Biostat, Chapel Hill, NC 27599 USA
[5] Univ N Carolina, Biomed Res Imaging Ctr, Chapel Hill, NC 27599 USA
关键词
Cokriging; Functional principal component analysis; Missing data; Prediction; Simultaneous autoregressive model; Spatial Gaussian predictive process; REGRESSION; MRI; CLASSIFICATION; APPROXIMATION; LIKELIHOOD;
D O I
10.1016/j.neuroimage.2013.11.018
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
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 a 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 voxelwise 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. (C) 2013 Elsevier Inc. All rights reserved.
引用
收藏
页码:70 / 80
页数:11
相关论文
共 50 条
  • [21] Data from fitting Gaussian process models to various data sets using eight Gaussian process software packages
    Erickson, Collin B.
    Ankenman, Bruce E.
    Sanchez, Susan M.
    DATA IN BRIEF, 2018, 18 : 684 - 687
  • [22] A hierarchical approach to scalable Gaussian process regression for spatial data
    Jacob Dearmon
    Tony E. Smith
    Journal of Spatial Econometrics, 2021, 2 (1):
  • [23] A Fused Gaussian Process Model for Very Large Spatial Data
    Ma, Pulong
    Kang, Emily L.
    JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2020, 29 (03) : 479 - 489
  • [24] Data-driven model predictive control for ships with Gaussian process
    Xu, Peilong
    Qin, Hongde
    Ma, Jingran
    Deng, Zhongchao
    Xue, Yifan
    OCEAN ENGINEERING, 2023, 268
  • [25] Development of electromagnetic pollution maps utilizing Gaussian process spatial models
    Kiouvrekis, Yiannis
    Zikas, Sotiris
    Katis, Ilias
    Tsilikas, Ioannis
    Filippopoulos, Ioannis
    Science of the Total Environment, 2024, 955
  • [26] Spatial Estimation of Wafer Measurement Parameters Using Gaussian Process Models
    Kupp, Nathan
    Huang, Ke
    Carulli, John
    Makris, Yiorgos
    PROCEEDINGS INTERNATIONAL TEST CONFERENCE 2012, 2012,
  • [27] Cautious Nonlinear Covariance Steering using Variational Gaussian Process Predictive Models
    Tsolovikos, Alexandros
    Bakolas, Efstathios
    IFAC PAPERSONLINE, 2021, 54 (20): : 59 - 64
  • [28] Explicit stochastic predictive control of combustion plants based on Gaussian process models
    Grancharova, Alexandra
    Kocijan, Jus
    Johansen, Tor A.
    AUTOMATICA, 2008, 44 (06) : 1621 - 1631
  • [29] Addressing Confounding in Predictive Models with an Application to Neuroimaging
    Linn, Kristin A.
    Gaonkar, Bilwaj
    Doshi, Jimit
    Davatzikos, Christos
    Shinohara, Russell T.
    INTERNATIONAL JOURNAL OF BIOSTATISTICS, 2016, 12 (01): : 31 - 44
  • [30] Bayesian spatial predictive models for data-poor fisheries
    Rufener, Marie-Christine
    Kinas, Paul Gerhard
    Nobrega, Marcelo Francisco
    Lins Oliveira, Jorge Eduardo
    ECOLOGICAL MODELLING, 2017, 348 : 125 - 134