SPATIAL BAYESIAN VARIABLE SELECTION AND GROUPING FOR HIGH-DIMENSIONAL SCALAR-ON-IMAGE REGRESSION

被引:41
|
作者
Li, Fan [1 ]
Zhang, Tingting [2 ]
Wang, Quanli [1 ]
Gonzalez, Marlen Z. [3 ]
Maresh, Erin L. [3 ]
Coan, James A. [3 ]
机构
[1] Duke Univ, Dept Stat Sci, Durham, NC 27708 USA
[2] Univ Virginia, Dept Stat, Charlottesville, VA 22904 USA
[3] Univ Virginia, Dept Psychol, Charlottesville, VA 22904 USA
来源
ANNALS OF APPLIED STATISTICS | 2015年 / 9卷 / 02期
基金
美国国家科学基金会;
关键词
Bayesian; Dirichlet Process; fMRI; Ising model; phase transition; scalar-on-image regression; stochastic search; variable selection; FUNCTIONAL NEUROIMAGING DATA; SOCIAL REGULATION; DIRICHLET; MODEL; ATTACHMENT; INFERENCE; EMOTION; AROUSAL; SPACES;
D O I
10.1214/15-AOAS818
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Multi-subject functional magnetic resonance imaging (fMRI) data has been increasingly used to study the population-wide relationship between human brain activity and individual biological or behavioral traits. A common method is to regress the scalar individual response on imaging predictors, known as a scalar-on-image (SI) regression. Analysis and computation of such massive and noisy data with complex spatio-temporal correlation structure is challenging. In this article, motivated by a psychological study on human affective feelings using fMRI, we propose a joint Ising and Dirichlet Process (Ising-DP) prior within the framework of Bayesian stochastic search variable selection for selecting brain voxels in high-dimensional SI regressions. The Ising component of the prior makes use of the spatial information between voxels, and the DP component groups the coefficients of the large number of voxels to a small set of values and thus greatly reduces the posterior computational burden. To address the phase transition phenomenon of the Ising prior, we propose a new analytic approach to derive bounds for the hyperparameters, illustrated on 2- and 3-dimensional lattices. The proposed method is compared with several alternative methods via simulations, and is applied to the fMRI data collected from the KLIFF hand-holding experiment.
引用
收藏
页码:687 / 713
页数:27
相关论文
共 50 条
  • [21] Sparse Bayesian variable selection for classifying high-dimensional data
    Yang, Aijun
    Lian, Heng
    Jiang, Xuejun
    Liu, Pengfei
    [J]. STATISTICS AND ITS INTERFACE, 2018, 11 (02) : 385 - 395
  • [22] Bayesian scalar-on-image regression with application to association between intracranial DTI and cognitive outcomes
    Huang, Lei
    Goldsmith, Jeff
    Reiss, Philip T.
    Reich, Daniel S.
    Crainiceanu, Ciprian M.
    [J]. NEUROIMAGE, 2013, 83 : 210 - 223
  • [23] Consistent significance controlled variable selection in high-dimensional regression
    Zambom, Adriano Zanin
    Kim, Jongwook
    [J]. STAT, 2018, 7 (01):
  • [24] High-Dimensional Regression and Variable Selection Using CAR Scores
    Zuber, Verena
    Strimmer, Korbinian
    [J]. STATISTICAL APPLICATIONS IN GENETICS AND MOLECULAR BIOLOGY, 2011, 10 (01)
  • [25] FACTOR MODELS AND VARIABLE SELECTION IN HIGH-DIMENSIONAL REGRESSION ANALYSIS
    Kneip, Alois
    Sarda, Pascal
    [J]. ANNALS OF STATISTICS, 2011, 39 (05): : 2410 - 2447
  • [26] Combining Factor Models and Variable Selection in High-Dimensional Regression
    Kneip, Alois
    Sarda, Pascal
    [J]. RECENT ADVANCES IN FUNCTIONAL DATA ANALYSIS AND RELATED TOPICS, 2011, : 197 - 202
  • [27] High-dimensional variable selection in regression and classification with missing data
    Gao, Qi
    Lee, Thomas C. M.
    [J]. SIGNAL PROCESSING, 2017, 131 : 1 - 7
  • [28] Combining a relaxed EM algorithm with Occam's razor for Bayesian variable selection in high-dimensional regression
    Latouche, Pierre
    Mattei, Pierre-Alexandre
    Bouveyron, Charles
    Chiquet, Julien
    [J]. JOURNAL OF MULTIVARIATE ANALYSIS, 2016, 146 : 177 - 190
  • [29] Sparse Bayesian variable selection in multinomial probit regression model with application to high-dimensional data classification
    Yang Aijun
    Jiang Xuejun
    Xiang Liming
    Lin Jinguan
    [J]. COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 2017, 46 (12) : 6137 - 6150
  • [30] Bayesian Nonparametric Scalar-on-Image Regression via Potts-Gibbs Random Partition Models
    Teo, Mica Shu Xian
    Wade, Sara
    [J]. NEW FRONTIERS IN BAYESIAN STATISTICS, BAYSM 2021, 2022, 405 : 45 - 56