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
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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