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Coordinate-based meta-analysis combines evidence from a collection of neuroimaging studies to estimate brain activation. In such analyses, a key practical challenge is to find a computationally efficient approach with good statistical interpretability to model the locations of activation foci. In this article, we propose a generative coordinate-based meta-regression (CBMR) framework to approximate a smooth activation intensity function and investigate the effect of study-level covariates (e.g. year of publication, sample size). We employ a spline parameterization to model the spatial structure of brain activation and consider four stochastic models for modeling the random variation in foci. To examine the validity of CBMR, we estimate brain activation on 20 meta-analytic datasets, conduct spatial homogeneity tests at the voxel level, and compare the results to those generated by existing kernel-based and model-based approaches. Keywords: generalized linear models; meta-analysis; spatial statistics; statistical modeling.

Original publication

DOI

10.1093/biostatistics/kxae024

Type

Journal article

Journal

Biostatistics (Oxford, England)

Publication Date

10/2024

Volume

25

Pages

1210 - 1232

Addresses

Oxford Big Data Institute, University of Oxford, Old road campus, Oxford, OX3 7LF, United Kingdom.

Keywords

Brain, Humans, Models, Statistical, Meta-Analysis as Topic, Neuroimaging, Spatial Analysis