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实验设计的脑图谱分类法:描述与评估

BrainMap taxonomy of experimental design: description and evaluation.

作者信息

Fox Peter T, Laird Angela R, Fox Sarabeth P, Fox P Mickle, Uecker Angela M, Crank Michelle, Koenig Sandra F, Lancaster Jack L

机构信息

Research Imaging Center, University of Texas Health Science Center at San Antonio, San Antonio, Texas 78284, USA.

出版信息

Hum Brain Mapp. 2005 May;25(1):185-98. doi: 10.1002/hbm.20141.

Abstract

Coordinate-based, voxel-wise meta-analysis is an exciting recent addition to the human functional brain mapping literature. In view of the critical importance of selection criteria for any valid meta-analysis, a taxonomy of experimental design should be an important tool for aiding in the design of rigorous meta-analyses. The coding scheme of experimental designs developed for and implemented within the BrainMap database provides a candidate taxonomy. In this study, the BrainMap experimental-design taxonomy is described and evaluated by comparing taxonomy fields to data-filtering choices made by subject-matter experts carrying out meta-analyses of the functional imaging literature. Fifteen publications reporting a total of 46 voxel-wise meta-analyses were included in this assessment. Collectively these 46 meta-analyses pooled data from 351 publications, selected for experimental similarity within each meta-analysis. Filter implementations within BrainMap were graded by ease-of-use (A-C) and by stage-of-use (1-3). Quality filters and content filters were tabulated separately. Quality filters required for data entry into BrainMap were classed as mandatory (five filters), being above the use grading system. All authors spontaneously adopted the five mandatory filters in constructing their meta-analysis, indicating excellent agreement on data quality among authors and between authors and the BrainMap development team. Two non-mandatory quality filters (group size and imaging modality) were applied by all authors; both were Stage 1, Grade A filters. Field-of-view filters were the least-accessible quality filters (Stage 3, Grade C); two field-of-view filters were applied by six and four authors, respectively. Authors made a total of 115 content-filter choices. Of these, 78 (68%) were Stage 1, Grade A filters; 16 (14%) were Stage 2, Grade A; and 21 (18%) were Stage 2, Grade C. No author-applied filter was absent from the taxonomy.

摘要

基于坐标的体素级元分析是人类功能性脑图谱文献中最近令人兴奋的新增内容。鉴于任何有效元分析的选择标准至关重要,实验设计的分类法应是有助于设计严格元分析的重要工具。为BrainMap数据库开发并在其中实施的实验设计编码方案提供了一种候选分类法。在本研究中,通过将分类法字段与对功能成像文献进行元分析的主题专家所做的数据过滤选择进行比较,对BrainMap实验设计分类法进行了描述和评估。本评估纳入了15篇报告总共46个体素级元分析的出版物。这46项元分析总共汇总了来自351篇出版物的数据,这些出版物是根据每项元分析中的实验相似性进行选择的。BrainMap中的过滤器实施情况根据易用性(A - C)和使用阶段(1 - 3)进行分级。质量过滤器和内容过滤器分别列表。进入BrainMap的数据输入所需的质量过滤器被列为强制性(五个过滤器),高于使用分级系统。所有作者在构建元分析时都自发采用了这五个强制性过滤器,表明作者之间以及作者与BrainMap开发团队之间在数据质量方面达成了高度一致。所有作者都应用了两个非强制性质量过滤器(组大小和成像模态);两者均为1级,A级过滤器。视野过滤器是最难使用的质量过滤器(3级,C级);分别有6位和4位作者应用了两个视野过滤器。作者总共做出了115项内容过滤器选择。其中,78项(68%)是1级,A级过滤器;16项(14%)是2级,A级;21项(18%)是2级,C级。分类法中没有作者未应用的过滤器。

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