Literature DB >> 23981437

Incorporating spatial dependence into Bayesian multiple testing of statistical parametric maps in functional neuroimaging.

D Andrew Brown1, Nicole A Lazar, Gauri S Datta, Woncheol Jang, Jennifer E McDowell.   

Abstract

The analysis of functional neuroimaging data often involves the simultaneous testing for activation at thousands of voxels, leading to a massive multiple testing problem. This is true whether the data analyzed are time courses observed at each voxel or a collection of summary statistics such as statistical parametric maps (SPMs). It is known that classical multiplicity corrections become strongly conservative in the presence of a massive number of tests. Some more popular approaches for thresholding imaging data, such as the Benjamini-Hochberg step-up procedure for false discovery rate control, tend to lose precision or power when the assumption of independence of the data does not hold. Bayesian approaches to large scale simultaneous inference also often rely on the assumption of independence. We introduce a spatial dependence structure into a Bayesian testing model for the analysis of SPMs. By using SPMs rather than the voxel time courses, much of the computational burden of Bayesian analysis is mitigated. Increased power is demonstrated by using the dependence model to draw inference on a real dataset collected in a fMRI study of cognitive control. The model also is shown to lead to improved identification of neural activation patterns known to be associated with eye movement tasks.
© 2013.

Keywords:  Bayesian statistics; Conditional autoregressive model; False discovery rate; Multiple testing problem; Saccades; fMRI

Mesh:

Year:  2013        PMID: 23981437     DOI: 10.1016/j.neuroimage.2013.08.024

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  4 in total

1.  Portfolio Decisions and Brain Reactions via the CEAD method.

Authors:  Piotr Majer; Peter N C Mohr; Hauke R Heekeren; Wolfgang K Härdle
Journal:  Psychometrika       Date:  2015-02-11       Impact factor: 2.500

2.  Sampling Strategies for Fast Updating of Gaussian Markov Random Fields.

Authors:  D Andrew Brown; Christopher S McMahan; Stella Watson Self
Journal:  Am Stat       Date:  2019-05-31       Impact factor: 8.710

3.  A Bayesian Gene-Based Genome-Wide Association Study Analysis of Osteosarcoma Trio Data Using a Hierarchically Structured Prior.

Authors:  Yi Yang; Saonli Basu; Lisa Mirabello; Logan Spector; Lin Zhang
Journal:  Cancer Inform       Date:  2018-05-21

4.  Effect-Size Estimation Using Semiparametric Hierarchical Mixture Models in Disease-Association Studies with Neuroimaging Data.

Authors:  Ryo Emoto; Atsushi Kawaguchi; Kunihiko Takahashi; Shigeyuki Matsui
Journal:  Comput Math Methods Med       Date:  2020-12-09       Impact factor: 2.238

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.