Gaussian graphical models reveal inter-modal and inter-regional conditional dependencies of brain alterations in Alzheimer's disease
Martin Dyrba, Reza Mohammadi, Michel J. Grothe, Thomas Kirste, Stefan, J. Teipel

TL;DR
This study uses Gaussian graphical models to analyze multimodal brain data in Alzheimer's disease, revealing more precise conditional dependencies than traditional correlation methods and highlighting altered network properties across disease stages.
Contribution
The paper introduces the application of Bayesian Gaussian graphical models to multimodal neuroimaging data in AD, providing a more accurate depiction of brain region dependencies than Pearson correlations.
Findings
Conditional dependency networks are sparser than correlation networks.
Within modalities, networks cluster anatomically adjacent regions.
Network statistics show biphasic changes across disease progression.
Abstract
Alzheimer's disease (AD) is characterized by a sequence of pathological changes, which are commonly assessed in vivo using MRI and PET. Currently, the most approaches to analyze statistical associations between brain regions rely on Pearson correlation. However, these are prone to spurious correlations arising from uninformative shared variance. Notably, there are no appropriate multivariate statistical models available that can easily integrate dozens of variables derived from such data, being able to use the additional information provided from the combination of data sources. Gaussian graphical models (GGMs) can estimate the conditional dependency from given data, which is expected to reflect the underlying causal relationships. We applied GGMs to assess multimodal regional brain alterations in AD. We obtained data from N=972 subjects from the Alzheimer's Disease Neuroimaging…
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