Department of Biomedical Engineering, New Jersey Institute of Technology, Newark, NJ 07102, USA; Department of Electrical Engineering, New Jersey Institute of Technology, Newark, NJ 07102, USA.
Scientific and Statistical Computing Core, National Institute of Mental Health, National Institutes of Health, Department of Health and Human Services, USA.
Neuroimage. 2017 Aug 15;157:716-732. doi: 10.1016/j.neuroimage.2017.06.032. Epub 2017 Jun 17.
Meta-analysis of neuroimaging results has proven to be a popular and valuable method to study human brain functions. A number of studies have used meta-analysis to parcellate distinct brain regions. A popular way to perform meta-analysis is typically based on the reported activation coordinates from a number of published papers. However, in addition to the coordinates associated with the different brain regions, the text itself contains considerably amount of additional information. This textual information has been largely ignored in meta-analyses where it may be useful for simultaneously parcellating brain regions and studying their characteristics. By leveraging recent advances in document clustering techniques, we introduce an approach to parcellate the brain into meaningful regions primarily based on the text features present in a document from a large number of studies. This new method is called MAPBOT (Meta-Analytic Parcellation Based On Text). Here, we first describe how the method works and then the application case of understanding the sub-divisions of the thalamus. The thalamus was chosen because of the substantial body of research that has been reported studying this functional and structural structure for both healthy and clinical populations. However, MAPBOT is a general-purpose method that is applicable to parcellating any region(s) of the brain. The present study demonstrates the powerful utility of using text information from neuroimaging studies to parcellate brain regions.
元分析已被证明是研究人类大脑功能的一种流行且有价值的方法。许多研究都使用元分析来划分不同的大脑区域。一种常用的元分析方法通常基于从许多已发表的论文中报告的激活坐标。然而,除了与不同大脑区域相关的坐标外,文本本身还包含相当数量的额外信息。在元分析中,这些文本信息在很大程度上被忽略了,尽管这些信息对于同时划分大脑区域并研究它们的特征可能很有用。通过利用文档聚类技术的最新进展,我们提出了一种主要基于大量研究中文档中存在的文本特征来划分大脑的方法。这种新方法称为 MAPBOT(基于文本的元分析划分)。在这里,我们首先描述了该方法的工作原理,然后介绍了应用案例,即理解丘脑的细分。选择丘脑是因为有大量的研究报告,这些研究针对健康和临床人群研究了这个功能和结构结构。然而,MAPBOT 是一种通用方法,适用于划分大脑的任何区域。本研究证明了使用神经影像学研究中的文本信息来划分大脑区域的强大效用。