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Advancing Image-Based Meta-Analysis for Fmri: A Framework for Leveraging NeuroVault Data

Julio A. Peraza, James D. Kent, Ross W. Blair,Jean-Baptiste Poline,Thomas E. Nichols,Alejandro de la Vega,Angela R. Laird

biorxiv(2025)

Department of Physics | Department of Psychology | Department of Neurology and Neurosurgery

Cited 0|Views1
Abstract
Image-based meta-analysis (IBMA) is a powerful method for synthesizing results from various fMRI studies. However, challenges related to data accessibility and the lack of available tools and methods have limited its widespread use. This study examined the current state of the NeuroVault repository and developed a comprehensive framework for selecting and analyzing neuroimaging statistical maps within it. By systematically assessing the quality of NeuroVault's data and implementing novel selection and meta-analysis techniques, we demonstrated the repository's potential for IBMA. We created a multi-stage selection framework that includes preliminary, heuristic, and manual image selection methods. We conducted meta-analyses for three distinct domains: working memory, motor, and emotion processing. The results from the three manual IBMA approaches closely resembled reference maps from the Human Connectome Project. Importantly, we found that while manual selection provides the most precise results, heuristic methods can serve as robust alternatives, especially for domains that include a heterogeneous set of fMRI tasks and contrasts, such as emotion processing. Additionally, we evaluated five different meta-analytic estimator methods to assess their effectiveness in handling spurious images. For domains characterized by heterogeneous tasks, employing a robust estimator (e.g., median) is essential. This study is the first to present a systematic approach for implementing IBMA using the NeuroVault repository. We introduce an accessible and reproducible methodology that allows researchers to make the most of NeuroVault's extensive neuroimaging resources, potentially fostering greater interest in data sharing and future meta-analyses utilizing NeuroVault data. ### Competing Interest Statement The authors have declared no competing interest.
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要点】:本研究开发了一个基于NeuroVault数据仓库的图像元分析框架,提升了功能性磁共振成像(fMRI)研究的综合分析能力,特别是针对数据获取难度和工具方法缺乏的挑战。

方法】:研究通过评估NeuroVault数据质量,并采用新颖的选择和元分析方法,构建了一个多阶段的图像选择框架,包括初步、启发式和手动选择方法。

实验】:研究对工作记忆、运动和情感处理三个领域进行了元分析,使用的数据集为NeuroVault,结果与人类连接体项目的参考图高度相似,同时评估了五种元分析估计方法在处理伪迹图像上的有效性。