图像分析中偏移集组合的空间置信区域

IF 3.1 1区 数学 Q1 STATISTICS & PROBABILITY
Thomas Maullin-Sapey, Armin Schwartzman, Thomas E Nichols
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引用次数: 2

摘要

成像数据中的偏移集分析对于神经影像学、气候学和宇宙学等广泛的科学学科至关重要。尽管文献越来越多,但很少有关于在同一空间区域取样但反映不同研究条件的过程的比较的出版物。给定一组渐近高斯随机场,每个随机场对应于为不同研究条件获得的样本,本工作旨在提供关于所有领域的偏移集的交集或并集的置信度陈述。这样的空间区域具有天然的趣味性,因为它们直接对应于“所有的随机区域在哪里超过预定的阈值?”或“至少一个随机场在哪里超过预定的阈值?”。为了评估存在的空间变异性程度,我们的方法以期望的置信度提供了由逻辑连接(即集合交叉点)或分离(即集合联合)定义的空间区域的子集和超集,而不需要对不同领域之间的依赖性进行任何假设。该方法通过大量的模拟验证,并使用任务-功能磁共振成像数据来识别工作记忆任务的四种变体共同激活的大脑区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial confidence regions for combinations of excursion sets in image analysis
Abstract The analysis of excursion sets in imaging data is essential to a wide range of scientific disciplines such as neuroimaging, climatology, and cosmology. Despite growing literature, there is little published concerning the comparison of processes that have been sampled across the same spatial region but which reflect different study conditions. Given a set of asymptotically Gaussian random fields, each corresponding to a sample acquired for a different study condition, this work aims to provide confidence statements about the intersection, or union, of the excursion sets across all fields. Such spatial regions are of natural interest as they directly correspond to the questions ‘Where do all random fields exceed a predetermined threshold?’, or ‘Where does at least one random field exceed a predetermined threshold?’. To assess the degree of spatial variability present, our method provides, with a desired confidence, subsets and supersets of spatial regions defined by logical conjunctions (i.e. set intersections) or disjunctions (i.e. set unions), without any assumption on the dependence between the different fields. The method is verified by extensive simulations and demonstrated using task-fMRI data to identify brain regions with activation common to four variants of a working memory task.
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来源期刊
CiteScore
8.80
自引率
0.00%
发文量
83
审稿时长
>12 weeks
期刊介绍: Series B (Statistical Methodology) aims to publish high quality papers on the methodological aspects of statistics and data science more broadly. The objective of papers should be to contribute to the understanding of statistical methodology and/or to develop and improve statistical methods; any mathematical theory should be directed towards these aims. The kinds of contribution considered include descriptions of new methods of collecting or analysing data, with the underlying theory, an indication of the scope of application and preferably a real example. Also considered are comparisons, critical evaluations and new applications of existing methods, contributions to probability theory which have a clear practical bearing (including the formulation and analysis of stochastic models), statistical computation or simulation where original methodology is involved and original contributions to the foundations of statistical science. Reviews of methodological techniques are also considered. A paper, even if correct and well presented, is likely to be rejected if it only presents straightforward special cases of previously published work, if it is of mathematical interest only, if it is too long in relation to the importance of the new material that it contains or if it is dominated by computations or simulations of a routine nature.
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