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首页> 外文期刊>Journal of the royal statistical society >Multiscale null hypothesis testing for network- valued data: Analysis of brain networks of patients with autism
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Multiscale null hypothesis testing for network- valued data: Analysis of brain networks of patients with autism

机译:网络价值数据的MultiScale Null假设检测:自闭症患者脑网络分析

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摘要

Networks are a natural way of representing the human brain for studying its structure and function and, as such, have been extensively used. In this framework, case-control studies for understanding autism pertain to comparing samples of healthy and autistic brain networks. In order to understand the biological mechanisms involved in the pathology, it is key to localize the differences on the brain network. Motivated by this question, we hereby propose a general non-parametric finite-sample exact statistical framework that allows to test for differences in connectivity within and between prespecified areas inside the brain network, with strong control of the family-wise error rate. We demonstrate unprecedented ability to differentiate children with non-syndromic autism from children with both autism and tuberous sclerosis complex using electroen-cephalography data. The implementation of the method is available in the R package nevada.
机译:网络是代表人类脑的自然方式,用于研究其结构和功能,因此已被广泛使用。在本框架中,案例控制研究,以了解自闭症涉及比较健康和自闭症脑网络样本。为了了解病理学中涉及的生物学机制,它是本地化脑网络上差异的关键。通过这个问题的激励,我们在此提出了一般的非参数化有限样本精确统计框架,允许测试大脑网络内的预定区域内和之间的连接内部和之间的差异,具有强烈控制家庭明智的错误率。我们展示了使用型电磁体系数据的患有自闭症和结核硬化复合体的儿童与患有非综合征自闭症的儿童的前所未有的能力。该方法的实现是在R包内华达州提供的。

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