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On the brain structure heterogeneity of autism: Parsing out acquisition site effects with significance‐weighted principal component analysis

机译:关于自闭症的大脑结构异质性:用显着加权主成分分析法分析获取位点的影响

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摘要

Neuroimaging studies have reported structural and physiological differences that could help understand the causes and development of Autism Spectrum Disorder (ASD). Many of them rely on multisite designs, with the recruitment of larger samples increasing statistical power. However, recent large‐scale studies have put some findings into question, considering the results to be strongly dependent on the database used, and demonstrating the substantial heterogeneity within this clinically defined category. One major source of variance may be the acquisition of the data in multiple centres. In this work we analysed the differences found in the multisite, multi‐modal neuroimaging database from the UK Medical Research Council Autism Imaging Multicentre Study (MRC AIMS) in terms of both diagnosis and acquisition sites. Since the dissimilarities between sites were higher than between diagnostic groups, we developed a technique called Significance Weighted Principal Component Analysis (SWPCA) to reduce the undesired intensity variance due to acquisition site and to increase the statistical power in detecting group differences. After eliminating site‐related variance, statistically significant group differences were found, including Broca's area and the temporo‐parietal junction. However, discriminative power was not sufficient to classify diagnostic groups, yielding accuracies results close to random. Our work supports recent claims that ASD is a highly heterogeneous condition that is difficult to globally characterize by neuroimaging, and therefore different (and more homogenous) subgroups should be defined to obtain a deeper understanding of ASD. Hum Brain Mapp 38:1208–1223, 2017. © 2016 Wiley Periodicals, Inc.
机译:神经影像学研究报告了结构和生理上的差异,可以帮助了解自闭症谱系障碍(ASD)的原因和发展。他们中的许多人都依靠多站点设计,招募更大的样本可以提高统计能力。但是,考虑到结果在很大程度上取决于所使用的数据库,并证明了该临床定义类别中的实质异质性,最近的大规模研究使一些发现受到质疑。差异的主要来源之一可能是在多个中心获取数据。在这项工作中,我们分析了来自英国医学研究委员会自闭症影像多中心研究(MRC AIMS)的多部位,多模式神经影像数据库在诊断和采集部位方面的差异。由于站点之间的差异大于诊断组之间的差异,因此我们开发了一种称为显着加权主成分分析(SWPCA)的技术,以减少由于采集站点而导致的不希望的强度差异,并提高检测组差异的统计能力。消除与地点相关的差异后,发现统计学上显着的群体差异,包括Broca面积和颞顶交界处。但是,区分能力不足以对诊断组进行分类,产生的准确度结果几乎是随机的。我们的工作支持最近的说法,即ASD是一种高度异质的疾病,很难通过神经影像学对其进行全面表征,因此,应定义不同的(和更多同质的)亚组以获得对ASD的更深入的了解。嗡嗡声脑图38:1208–1223,2017.©2016 Wiley Periodicals,Inc.

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