Introduction to Random Fields

07/19/2020
by   Moo K. Chung, et al.
0

General linear models (GLM) are often constructed and used in statistical inference at the voxel level in brain imaging. In this paper, we explore the basics of random fields and the multiple comparisons on the random fields, which are necessary to properly threshold statistical maps for the whole image at specific statistical significance level. The multiple comparisons are crucial in determining overall statistical significance in correlated test statistics over the whole brain. In practice, t- or F-statistics in adjacent voxels are correlated. So there is the problem of multiple comparisons, which we have simply neglected up to now. For multiple comparisons that account for spatially correlated test statistics, various methods were proposed: Bonferroni correction, random field theory, false discovery rates and permutation tests. Among them, we will explore the random field approach.

READ FULL TEXT

page 9

page 13

page 16

page 17

research
02/07/2019

Cramér Type Moderate Deviations for Random Fields

We study the Cramér type moderate deviation for partial sums of random f...
research
05/01/2018

Intrinsic Complexity And Scaling Laws: From Random Fields to Random Vectors

Random fields are commonly used for modeling of spatially (or timely) de...
research
04/10/2013

Detecting Directionality in Random Fields Using the Monogenic Signal

Detecting and analyzing directional structures in images is important in...
research
08/28/2020

Introduction to logistic regression

For random field theory based multiple comparison corrections In brain i...
research
02/09/2022

A hypothesis-driven method based on machine learning for neuroimaging data analysis

There remains an open question about the usefulness and the interpretati...
research
07/25/2019

Bayesian Analysis of Spatial Generalized Linear Mixed Models with Laplace Random Fields

Gaussian random field (GRF) models are widely used in spatial statistics...
research
06/21/2022

Efficient Inference of Spatially-varying Gaussian Markov Random Fields with Applications in Gene Regulatory Networks

In this paper, we study the problem of inferring spatially-varying Gauss...

Please sign up or login with your details

Forgot password? Click here to reset