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Meta-analysis of neuroimaging data: a comparison of image-based and coordinate-based pooling of studies.

机译:神经影像数据的荟萃分析:比较基于图像和基于坐标的研究。

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With the rapid growth of neuroimaging research and accumulation of neuroinformatic databases the synthesis of consensus findings using meta-analysis is becoming increasingly important. Meta-analyses pool data across many studies to identify reliable experimental effects and characterize the degree of agreement across studies. Coordinate-based meta-analysis (CBMA) methods are the standard approach, where each study entered into the meta-analysis has been summarized using only the (x, y, z) locations of peak activations (with or without activation magnitude) reported in published reports. Image-based meta-analysis (IBMA) methods use the full statistic images, and allow the use of hierarchical mixed effects models that account for differing intra-study variance and modeling of random inter-study variation. The purpose of this work is to compare image-based and coordinate-based meta-analysis methods applied to the same dataset, a group of 15 fMRI studies of pain, and to quantify the information lost by working only with the coordinates of peak activations instead of the full statistic images. We apply a 3-level IBMA mixed model for a "mega-analysis", and highlight important considerations in the specification of each model and contrast. We compare the IBMA result to three CBMA methods: ALE (activation likelihood estimation), KDA (kernel density analysis) and MKDA (multi-level kernel density analysis), for various CBMA smoothing parameters. For the datasets considered, we find that ALE at sigma=15 mm, KDA at rho=25-30 mm and MKDA at rho=15 mm give the greatest similarity to the IBMA result, and that ALE was the most similar for this particular dataset, though only with a Dice similarity coefficient of 0.45 (Dice measure ranges from 0 to 1). Based on this poor similarity, and the greater modeling flexibility afforded by hierarchical mixed models, we suggest that IBMA is preferred over CBMA. To make IBMA analyses practical, however, the neuroimaging field needs to develop an effective mechanism for sharing image data, including whole-brain images of both effect estimates and their standard errors.
机译:随着神经影像学研究的迅速发展和神经信息数据库的积累,使用荟萃分析合成共识结果变得越来越重要。荟萃分析汇总了许多研究的数据,以鉴定可靠的实验效果并表征研究之间的一致性程度。基于坐标的荟萃分析(CBMA)方法是标准方法,每项进入荟萃分析的研究都仅使用报告中报告的峰激活(有或没有激活幅度)的(x,y,z)位置进行汇总。已发布的报告。基于图像的荟萃分析(IBMA)方法使用完整的统计图像,并允许使用分层混合效应模型,该模型考虑了不同的研究内部差异以及对研究之间的随机差异进行建模。这项工作的目的是比较应用于同一数据集的一组基于图像的基于图像和基于坐标的荟萃分析方法,这是一组针对疼痛的15项fMRI研究,并通过仅使用峰激活坐标来量化丢失的信息。完整的统计图像。我们将3级IBMA混合模型应用于“大型分析”,并着重强调每种模型的规范和对比中的重要考虑因素。对于各种CBMA平滑参数,我们将IBMA结果与三种CBMA方法进行比较:ALE(激活可能性估计),KDA(内核密度分析)和MKDA(多级内核密度分析)。对于所考虑的数据集,我们发现sigma = 15 mm时的ALE,rho = 25-30 mm时的KDA和rho = 15 mm时的MKDA与IBMA结果的相似度最大,而ALE与该特定数据集最相似,尽管Dice相似系数仅为0.45(Dice度量范围为0到1)。基于这种差的相似性以及分层混合模型提供的更大的建模灵活性,我们建议IBMA比CBMA更受青睐。为了使IBMA分析实用,神经影像领域需要开发一种有效的机制来共享图像数据,包括效果估计及其标准误差的全脑图像。

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