Radua Joaquim, Mataix-Cols David
Institute of Psychiatry, King's College London, De Crespigny Park, London, UK.
Biol Mood Anxiety Disord. 2012 Mar 8;2:6. doi: 10.1186/2045-5380-2-6.
The number of neuroimaging studies has grown exponentially in recent years and their results are not always consistent. Meta-analyses are helpful to summarize this vast literature and also offer insights that are not apparent from the individual studies. In this review, we describe the main methods used for meta-analyzing neuroimaging data, with special emphasis on their relative advantages and disadvantages. We describe and discuss meta-analytical methods for global brain volumes, methods based on regions of interest, label-based reviews, voxel-based meta-analytic methods and online databases. Regions of interest-based methods allow for optimal statistical analyses but are affected by a limited and potentially biased inclusion of brain regions, whilst voxel-based methods benefit from a more exhaustive and unbiased inclusion of studies but are statistically more limited. There are also relevant differences between the different available voxel-based meta-analytic methods, and the field is rapidly evolving to develop more accurate and robust methods. We suggest that in any meta-analysis of neuroimaging data, authors should aim to: only include studies exploring the whole brain; ensure that the same threshold throughout the whole brain is used within each included study; and explore the robustness of the findings via complementary analyses to minimize the risk of false positives.
近年来,神经影像学研究的数量呈指数级增长,但其结果并不总是一致的。荟萃分析有助于总结这一庞大的文献,并提供单个研究中不明显的见解。在本综述中,我们描述了用于对神经影像学数据进行荟萃分析的主要方法,特别强调了它们的相对优缺点。我们描述并讨论了全脑体积的荟萃分析方法、基于感兴趣区域的方法、基于标签的综述、基于体素的荟萃分析方法和在线数据库。基于感兴趣区域的方法允许进行最佳的统计分析,但受到脑区纳入有限且可能有偏差的影响,而基于体素的方法受益于更详尽且无偏差的研究纳入,但在统计上更有限。不同的可用基于体素的荟萃分析方法之间也存在相关差异,并且该领域正在迅速发展以开发更准确和稳健的方法。我们建议,在对神经影像学数据进行任何荟萃分析时,作者应旨在:仅纳入探索全脑的研究;确保在每个纳入研究中使用全脑相同的阈值;并通过补充分析探索结果的稳健性,以尽量减少假阳性的风险。