Spatial Bayesian GLM on the cortical surface produces reliable task activations in individuals and groups
Daniel Spencer, Yu (Ryan) Yue, David Bolin, Sarah Ryan, Amanda F., Mejia

TL;DR
This study demonstrates that a cortical surface-based spatial Bayesian GLM improves the reliability and power of detecting task-related brain activations in individuals and groups, outperforming traditional methods.
Contribution
The paper introduces a spatial Bayesian GLM for cortical surface analysis that enhances activation detection and reliability in both individual and group fMRI studies.
Findings
Highly reliable activations in individual subjects.
Effective detection of trait-like functional topologies.
High power even with small sample sizes (n=10).
Abstract
The general linear model (GLM) is a widely popular and convenient tool for estimating the functional brain response and identifying areas of significant activation during a task or stimulus. However, the classical GLM is based on a massive univariate approach that does not explicitly leverage the similarity of activation patterns among neighboring brain locations. As a result, it tends to produce noisy estimates and be underpowered to detect significant activations, particularly in individual subjects and small groups. A recent alternative, a cortical surface-based spatial Bayesian GLM, leverages spatial dependencies among neighboring cortical vertices to produce more accurate estimates and areas of functional activation. The spatial Bayesian GLM can be applied to individual and group-level analysis. In this study, we assess the reliability and power of individual and group-average…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced Neuroimaging Techniques and Applications · Optical Imaging and Spectroscopy Techniques
