Journal article

Image-based meta- and mega-analysis (IBMMA): A unified framework for large-scale, multi-site, neuroimaging data analysis

N Steele, AA Huggins, RA Morey, A Hussain, C Russell, B Suarez-Jimenez, E Pozzi, H Jameei, L Schmaal, IM Veer, L Waller, N Jahanshad, SI Thomopoulos, LE Salminen, M Olff, JL Frijling, DJ Veltman, SBJ Koch, L Nawijn, M van Zuiden Show all

Neuroimage | Published : 2025

Open access

Abstract

The increasing scale and complexity of neuroimaging datasets aggregated from multiple study sites present substantial analytic challenges, as existing statistical analysis tools struggle to handle missing voxel-data, suffer from limited computational speed and inefficient memory allocation, and are restricted in the types of statistical designs they are able to model. We introduce Image-Based Meta- & Mega-Analysis (IBMMA), a novel software package implemented in R and Python that provides a unified framework for analyzing diverse neuroimaging features, efficiently handles large-scale datasets through parallel processing, offers flexible statistical modeling options, and properly manages miss..

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University of Melbourne Researchers