Department of General Psychology, University of Padova, Padova, Italy.
Social and Affective Neuroscience Group, MoMiLab, IMT School for Advanced Studies Lucca, Lucca, Italy.
Eur J Neurosci. 2021 Jan;53(2):357-361. doi: 10.1111/ejn.14954. Epub 2020 Sep 10.
In neuroimaging studies, small sample sizes and the resultant reduced statistical power to detect effects that are not large, combined with inadequate analytic choices, concur to produce inflated or false-positive findings. To mitigate these issues, researchers often restrict analyses to specific brain areas, using the region of interest (ROI) approach. Crucially, ROI analysis assumes the a priori justified definition of the target region. Nonetheless, reports often lack details about where in the timeline, ranging from study conception to the data analysis and interpretation of findings, were ROIs selected. Frequently, the rationale for ROI selection is vague or inadequately founded on the existing literature. These shortcomings have important implications for ROI-based studies, augmenting the risk that observed effects are inflated or even false positives. Tools like preregistration and registered reports could address this problem, ensuring the validity of ROI-based studies. The benefits could be enhanced by additional practices such as selection of ROIs using quantitative methods (i.e., meta-analysis) and the sharing of whole-brain unthresholded maps of effect size, as well as of binary ROIs, in publicly accessible repositories.
在神经影像学研究中,小样本量和由此导致的检测非大效应的统计效能降低,加上分析选择不当,共同导致了夸大或虚假阳性发现。为了减轻这些问题,研究人员通常使用感兴趣区域 (ROI) 方法将分析限制在特定的脑区。至关重要的是,ROI 分析假设目标区域有事先合理的定义。尽管如此,报告中通常缺乏关于 ROI 选择的时间线细节,从研究构思到数据分析和结果解释都有涉及。经常情况下,ROI 选择的理由是模糊的,或者没有充分基于现有文献。这些缺点对基于 ROI 的研究有重要影响,增加了观察到的效应被夸大甚至是虚假阳性的风险。预注册和注册报告等工具可以解决这个问题,确保基于 ROI 的研究的有效性。通过使用定量方法(即元分析)选择 ROI 以及在公共可访问存储库中共享效应大小的全脑未阈值映射和二进制 ROI 等额外实践,可以增强这些好处。