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使用传统和新颖的神经发育障碍分类方案研究功能脑网络完整性。

Investigating functional brain network integrity using a traditional and novel categorical scheme for neurodevelopmental disorders.

机构信息

Department of Psychology, University of Miami, Coral Gables, FL, United States.

Institute on Community Integration, University of Minnesota, Minneapolis, MN, United States.

出版信息

Neuroimage Clin. 2019;21:101678. doi: 10.1016/j.nicl.2019.101678. Epub 2019 Jan 17.

Abstract

BACKGROUND

Current diagnostic systems for neurodevelopmental disorders do not have clear links to underlying neurobiology, limiting their utility in identifying targeted treatments for individuals. Here, we aimed to investigate differences in functional brain network integrity between traditional diagnostic categories (autism spectrum disorder [ASD], attention-deficit/hyperactivity disorder [ADHD], typically developing [TD]) and carefully consider the impact of comorbid ASD and ADHD on functional brain network integrity in a sample adequately powered to detect large effects. We also assess the neurobiological separability of a novel, potential alternative categorical scheme based on behavioral measures of executive function.

METHOD

Five-minute resting-state fMRI data were obtained from 168 children (128 boys, 40 girls) with ASD, ADHD, comorbid ASD and ADHD, and TD children. Independent component analysis and dual regression were used to compute within- and between-network functional connectivity metrics at the individual level.

RESULTS

No significant group differences in within- or between-network functional connectivity were observed between traditional diagnostic categories (ASD, ADHD, TD) even when stratified by comorbidity (ASD + ADHD, ASD, ADHD, TD). Similarly, subgroups classified by executive functioning levels showed no group differences.

CONCLUSIONS

Using clinical diagnosis and behavioral measures of executive function, no differences in functional connectivity were observed among the categories examined. Despite our limited ability to detect small- to medium-sized differences between groups, this work contributes to a growing literature suggesting that traditional diagnostic categories do not define neurobiologically separable groups. Future work is necessary to ascertain the validity of the executive function-based nosology, but current results suggest that nosologies reliant on behavioral data alone may not lead to discovery of neurobiologically distinct categories.

摘要

背景

目前用于神经发育障碍的诊断系统与潜在神经生物学没有明确的联系,限制了其在为个体确定靶向治疗方法方面的应用。在这里,我们旨在研究传统诊断类别(自闭症谱系障碍[ASD]、注意力缺陷/多动障碍[ADHD]、典型发育[TD])之间功能脑网络完整性的差异,并仔细考虑 ASD 和 ADHD 共病对功能脑网络完整性的影响在一个有足够能力检测大效应的样本中。我们还评估了基于行为执行功能测量的新型潜在替代分类方案的神经生物学可分离性。

方法

从 168 名 ASD、ADHD、ASD 和 ADHD 共病以及 TD 儿童中获得了 5 分钟静息态 fMRI 数据。使用独立成分分析和双回归来计算个体水平的网络内和网络间功能连接度量。

结果

即使按共病(ASD+ADHD、ASD、ADHD、TD)分层,传统诊断类别(ASD、ADHD、TD)之间的网络内或网络间功能连接也没有显著的组间差异。同样,按执行功能水平分类的亚组也没有表现出组间差异。

结论

使用临床诊断和执行功能的行为测量,在所检查的类别中没有观察到功能连接的差异。尽管我们检测组间小至中等差异的能力有限,但这项工作有助于越来越多的文献表明,传统的诊断类别并不能定义神经生物学可分离的群体。需要进一步的工作来确定基于执行功能的分类学的有效性,但目前的结果表明,仅依赖行为数据的分类学可能不会发现神经生物学上不同的类别。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9344/6356009/12eba856f792/gr1.jpg

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