The Node-wise Pseudo-marginal Method
Denishrouf Thesingarajah, Adam M. Johansen

TL;DR
This paper introduces a novel node-wise pseudo-marginal method that incorporates spatial dependence into model selection problems, significantly improving analysis of neuroimaging data with minimal additional computational cost.
Contribution
It develops a Markov random field-based pseudo-marginal MCMC algorithm that efficiently models spatial dependence using existing unbiased marginal likelihood estimators.
Findings
Enhanced spatial structure detection in PET images
Comparable results between full and approximate methods
Improved analysis with negligible additional cost
Abstract
Motivated by problems from neuroimaging in which existing approaches make use of "mass univariate" analysis which neglects spatial structure entirely, but the full joint modelling of all quantities of interest is computationally infeasible, a novel method for incorporating spatial dependence within a (potentially large) family of model-selection problems is presented. Spatial dependence is encoded via a Markov random field model for which a variant of the pseudo-marginal Markov chain Monte Carlo algorithm is developed and extended by a further augmentation of the underlying state space. This approach allows the exploitation of existing unbiased marginal likelihood estimators used in settings in which spatial independence is normally assumed thereby facilitating the incorporation of spatial dependence using non-spatial estimates with minimal additional development effort. The proposed…
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Taxonomy
TopicsStatistical Methods and Inference · Markov Chains and Monte Carlo Methods · Medical Imaging Techniques and Applications
