Modeling Alzheimer's Disease: Bayesian Copula Graphical Model from Demographic, Cognitive, and Neuroimaging Data
Lucas Vogels, Reza Mohammadi, Marit Schoonhoven, S. Ilker, Birbil, Martin Dyrba

TL;DR
This paper introduces a Bayesian Gaussian copula graphical model that integrates diverse data types to uncover complex relationships in Alzheimer's disease, revealing pathways linking aging, brain changes, and cognition.
Contribution
It develops a novel Bayesian GCGM capable of handling mixed data types and quantifying uncertainty, applied here to AD data for the first time.
Findings
Aging affects cognition via hippocampal, PCC, and amyloid-beta pathways.
Women have a positive association with cognition, mitigated by specific brain and education factors.
Limited relation between glucose uptake and cognition, but strong links with hippocampal and PCC volumes.
Abstract
The early detection of Alzheimer's disease (AD) requires an understanding of the relationships between a wide range of features. Conditional independencies and partial correlations are suitable measures for these relationships, because they can identify the effects of confounding and mediating variables. This article presents a Bayesian approach to Gaussian copula graphical models (GCGMs) in order to estimate these conditional dependencies and partial correlations. This approach has two key advantages. First, it includes binary, discrete, and continuous variables. Second, it quantifies the uncertainty of the estimates. Despite these advantages, Bayesian GCGMs have not been applied to AD research yet. In this study, we design a GCGM to find the conditional dependencies and partial correlations among brain-region specific gray matter volume and glucose uptake, amyloid-beta levels,…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Artificial Intelligence in Healthcare · Statistical Methods and Inference
