NBS-SNI, an extension of the Network-based statistic: Abnormal functional connections between important structural actors

IF 3.6 3区 医学 Q2 NEUROSCIENCES
Francis Normand, Mehul Gajwani, Daniel C. Côté, Antoine Allard
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Abstract

Abstract Elucidating the coupling between the structure and the function of the brain and its development across maturation has attracted a lot of interest in the field of network neuroscience in the last fifteen years. Mounting evidence support the hypothesis that the onset of certain brain disorders is linked with the interplay between the structural architecture of the brain and its functional processes, often accompanied with unusual connectivity features. This paper introduces a method called the Network-based statistic-simultaneous node investigation (NBS-SNI) that integrates both representations into a single framework, and identifies connectivity abnormalities in case-control studies. With this method, significance is given to the properties of the nodes, as well as to their connections. This approach builds on the well-established Network-based statistic (NBS) proposed in 2010. We uncover and identify the regimes in which NBS-SNI offers a gain in statistical resolution to identify a contrast of interest using synthetic data. We also apply our method on two real case-control studies, one consisting of individuals diagnosed with autism and the other consisting of individuals diagnosed with early-psychosis. Using NBS-SNI and node properties such as the closeness centrality and local information dimension, we found hypo and hyperconnected subnetworks and show that our method can offer a 9 percentage points gain in prediction power over the standard NBS.
NBS-SNI是基于网络的统计的扩展:重要结构参与者之间的异常功能连接
摘要在过去的15年中,阐明大脑结构与功能之间的耦合关系及其在成熟过程中的发展引起了网络神经科学领域的广泛关注。越来越多的证据支持这样一种假设,即某些脑部疾病的发病与大脑结构及其功能过程之间的相互作用有关,通常伴随着不寻常的连接特征。本文介绍了一种称为基于网络的统计同步节点调查(NBS-SNI)的方法,该方法将两种表示集成到一个框架中,并识别病例对照研究中的连接异常。用这种方法,重要的是节点的性质,以及它们的连接。这种方法建立在2010年提出的完善的基于网络的统计(NBS)基础上。我们发现并确定了NBS-SNI提供统计分辨率增益的机制,以便使用合成数据识别感兴趣的对比。我们还将我们的方法应用于两个真正的病例对照研究,一个由诊断为自闭症的个体组成,另一个由诊断为早期精神病的个体组成。使用NBS- sni和节点属性(如接近中心性和本地信息维度),我们发现了次连接和超连接的子网,并表明我们的方法可以提供比标准NBS提高9个百分点的预测能力。
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来源期刊
Network Neuroscience
Network Neuroscience NEUROSCIENCES-
CiteScore
6.40
自引率
6.40%
发文量
68
审稿时长
16 weeks
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