More than the sum of its parts: Merging network psychometrics and network neuroscience with application in autism.

IF 3.1
Joe Bathelt, Hilde M Geurts, Denny Borsboom
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Abstract

Network approaches that investigate the interaction between symptoms and behaviours have opened new ways of understanding psychological phenomena in health and disorder in recent years. In parallel, network approaches that characterise the interaction between brain regions have become the dominant approach in neuroimaging research. In this paper, we introduce a methodology for combining network psychometrics and network neuroscience. This approach utilises the information from the psychometric network to obtain neural correlates that are associated with each node in the psychometric network (network-based regression). Moreover, we combine the behavioural variables and their neural correlates in a joint network to characterise their interactions. We illustrate the approach by highlighting the interaction between the triad of autistic traits and their resting-state functional connectivity associations. To this end, we utilise data from 172 male autistic participants (10-21 years) from the autism brain data exchange (ABIDE, ABIDE-II) that completed resting-state fMRI and were assessed using the autism diagnostic interview (ADI-R). Our results indicate that the network-based regression approach can uncover both unique and shared neural correlates of behavioural measures. For instance, our example analysis indicates that the overlap between communication and social difficulties is not reflected in the overlap between their functional brain correlates.

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超过其部分的总和:将网络心理测量学和网络神经科学与自闭症的应用相结合。
近年来,研究症状和行为之间相互作用的网络方法开辟了理解健康和障碍心理现象的新途径。与此同时,表征大脑区域之间相互作用的网络方法已成为神经成像研究的主要方法。本文介绍了一种将网络心理测量学与网络神经科学相结合的方法。这种方法利用来自心理测量网络的信息来获得与心理测量网络中每个节点相关联的神经关联(基于网络的回归)。此外,我们将行为变量和它们的神经关联结合在一个联合网络中,以表征它们的相互作用。我们通过强调自闭症三联征与其静息状态功能连接关联之间的相互作用来说明这种方法。为此,我们利用来自自闭症大脑数据交换(ABIDE, ABIDE- ii)的172名男性自闭症参与者(10-21岁)的数据,他们完成了静息状态功能磁共振成像,并使用自闭症诊断访谈(ADI-R)进行了评估。我们的研究结果表明,基于网络的回归方法可以揭示行为测量的独特和共享的神经相关性。例如,我们的示例分析表明,沟通和社交困难之间的重叠并没有反映在它们的功能性大脑相关区域之间的重叠上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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