Nonparametric analysis of statistic images from functional mapping experiments
TL;DR: In this article, a nonparametric approach to significance testing for statistic images from activation studies is presented, which is based on a simple rest-activation study, and relies only on minimal assumptions about the design of the experiment, with Type I error (almost) exactly that specified, and hence is always valid.
read more
Abstract: The analysis of functional mapping experiments in positron emission tomography involves the formation of images displaying the values of a suitable statistic, summarising the evidence in the data for a particular effect at each voxel These statistic images must then be scrutinised to locate regions showing statistically significant effects The methods most commonly used are parametric, assuming a particular form of probability distribution for the voxel values in the statistic image Scientific hypotheses, formulated in terms of parameters describing these distributions, are then tested on the basis of the assumptions Images of statistics are usually considered as lattice representations of continuous random fields These are more amenable to statistical analysis There are various shortcomings associated with these methods of analysis The many assumptions and approximations involved may not be true The low numbers of subjects and scans, in typical experiments, lead to noisy statistic images with low degrees of freedom, which are not well approximated by continuous random fields Thus, the methods are only approximately valid at best and are most suspect in single-subject studies In contrast to the existing methods, we present a nonparametric approach to significance testing for statistic images from activation studies Formal assumptions are replaced by a computationally expensive approach In a simple rest-activation study, if there is really no activation effect, the labelling of the scans as “active” or “rest” is artificial, and a statistic image formed with some other labelling is as likely as the observed one Thus, considering all possible relabellings, a p value can be computed for any suitable statistic describing the statistic image Consideration of the maximal statistic leads to a simple nonparametric single-threshold test This randomisation test relies only on minimal assumptions about the design of the experiment, is (almost) exact, with Type I error (almost) exactly that specified, and hence is always valid The absence of distributional assumptions permits the consideration of a wide range of test statistics, for instance, “pseudo” t statistic images formed with smoothed variance images The approach presented extends easily to other paradigms, permitting nonparametric analysis of most functional mapping experiments When the assumptions of the parametric methods are true, these new nonparametric methods, at worst, provide for their validation When the assumptions of the parametric methods are dubious, the nonparametric methods provide the only analysis that can be guaranteed valid and exact
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
CHAPTER 74 – A Comparison of Four Pixel-Based Analyses for PET
Thomas J. Grabowski,R.J. Frank,C.K. Brown,Hanna Damasio,L. L. Boles Ponto,G. L. Watkins,Richard D. Hichwa +6 more
- 01 Jan 1996
TL;DR: In this paper, the performance of four pixel-based statistical methods for analyzing positron emission tomography activation images, using identically prepared data sets, is compared, and the results suggest that these pixel-Based methods are highly specific in localizing activation and are highly concordant with one another, but their power is modest in samples of conventional size.
Spatial Regression Analysis of Diffusion Tensor Imaging for Longitudinal Studies
Bilan Liu
- 01 Jan 2016
TL;DR: In Chapter 3, the effectiveness of three popular Quality Control (QC) tools including DTI studio, DTIprep and TORTOISE are quantitatively compared and an improved SPREAD (iSPREAD) method is proposed.
•Dissertation
Multimodal Neuroimaging of Emotion Regulation Strategies in Clinical and Healthy Control Samples
Maria Picó Pérez
- 11 Oct 2018
TL;DR: The authors caracterizar los correlatos neurobiologicos de diferent strategies of regulacion emocional a traves de diversas muestras clinicas and tambien en controles sanos, with the intencion of investigar si difdifferent trastornos psiquiatricos presentan un patron de afectaciones similar entre ellos, or si al contrario, cada uno tendria un patron especifico de alteraciones.
References
Statistical parametric maps in functional imaging: A general linear approach
Karl J. Friston,Andrew P. Holmes,Keith J. Worsley,J-B. Poline,Chris D. Frith,Richard S. J. Frackowiak +5 more
TL;DR: In this paper, the authors present a general approach that accommodates most forms of experimental layout and ensuing analysis (designed experiments with fixed effects for factors, covariates and interaction of factors).
A three-dimensional statistical analysis for CBF activation studies in human brain.
TL;DR: A simple method for determining an approximate p value for the global maximum based on the theory of Gaussian random fields is described, which focuses on the Euler characteristic of the set of voxels with a value larger than a given threshold.
2.1K
Assessing the significance of focal activations using their spatial extent
TL;DR: The results mean that detecting significant activations no longer depends on a fixed threshold, but can be effected at any (lower) threshold, in terms of the spatial extent of the activated region.
2K
The Geometry of Random Fields.
Lawrence F. Gray,Robert J. Adler +1 more
Abstract: Preface to the Classics edition Preface Corrections and comments 1. Random fields and excursion sets 2. Homogeneous fields and their spectra 3. Sample function regularity 4. Geometry and excursion characteristics 5. Some expectations 6. Local maxima and high-level excursions 7. Some non-Gaussian fields 8. Sample function erraticism and Hausdorff dimension Appendix. The Markov property for Gaussian fields References Author index Subject index.
1.9K
•Book
The Geometry of Random Fields
Robert J. Adler
- 28 Jan 2010
TL;DR: In this article, the authors present a survey of random fields and excursion sets and their spectral properties, including sample function regularity, sample function erraticism, and the Markov property for Gaussian fields.
1.4K