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自闭症或注意力缺陷多动障碍儿童的结构协变网络。

Structural Covariance Networks in Children with Autism or ADHD.

机构信息

Autism Research Centre, Department of Psychiatry, University of Cambridge, Cambridge CB2 8AH, UK.

Department of Psychiatry, University of Cambridge, Cambridge CB2 0SZ, UK.

出版信息

Cereb Cortex. 2017 Aug 1;27(8):4267-4276. doi: 10.1093/cercor/bhx135.

Abstract

BACKGROUND

While autism and attention-deficit/hyperactivity disorder (ADHD) are considered distinct conditions from a diagnostic perspective, clinically they share some phenotypic features and have high comorbidity. Regardless, most studies have focused on only one condition, with considerable heterogeneity in their results. Taking a dual-condition approach might help elucidate shared and distinct neural characteristics.

METHOD

Graph theory was used to analyse topological properties of structural covariance networks across both conditions and relative to a neurotypical (NT; n = 87) group using data from the ABIDE (autism; n = 62) and ADHD-200 datasets (ADHD; n = 69). Regional cortical thickness was used to construct the structural covariance networks. This was analysed in a theoretical framework examining potential differences in long and short-range connectivity, with a specific focus on relation between central graph measures and cortical thickness.

RESULTS

We found convergence between autism and ADHD, where both conditions show an overall decrease in CT covariance with increased Euclidean distance between centroids compared with a NT population. The 2 conditions also show divergence. Namely, there is less modular overlap between the 2 conditions than there is between each condition and the NT group. The ADHD group also showed reduced cortical thickness and lower degree in hub regions than the autism group. Lastly, the ADHD group also showed reduced wiring costs compared with the autism groups.

CONCLUSIONS

Our results indicate a need for taking an integrated approach when considering highly comorbid conditions such as autism and ADHD. Furthermore, autism and ADHD both showed alterations in the relation between inter-regional covariance and centroid distance, where both groups show a steeper decline in covariance as a function of distance. The 2 groups also diverge on modular organization, cortical thickness of hub regions and wiring cost of the covariance network. Thus, on some network features the groups are distinct, yet on others there is convergence.

摘要

背景

自闭症和注意缺陷多动障碍(ADHD)从诊断的角度来看被认为是不同的病症,但临床上它们具有一些表型特征,且共病率较高。尽管如此,大多数研究都只关注一种病症,其结果存在较大的异质性。采用双病症的方法可能有助于阐明共享和独特的神经特征。

方法

使用来自 ABIDE(自闭症;n=62)和 ADHD-200 数据集(ADHD;n=69)的数据,通过图论分析了两种病症的结构协变网络的拓扑性质,并与神经典型(NT;n=87)组进行了比较。使用区域皮质厚度构建了结构协变网络。在一个理论框架中分析了这一点,该框架考察了长程和短程连接的潜在差异,特别关注中心图测度与皮质厚度之间的关系。

结果

我们发现自闭症和 ADHD 之间存在趋同,与 NT 人群相比,这两种病症的皮质厚度协变随质心之间的欧几里得距离增加而总体减少。这两种病症也存在分歧。具体来说,与 NT 组相比,两种病症之间的模块重叠程度较低。与自闭症组相比,ADHD 组的皮质厚度和枢纽区域的度数也较低。最后,与自闭症组相比,ADHD 组的布线成本也较低。

结论

我们的结果表明,在考虑自闭症和 ADHD 等高度共病的病症时,需要采用综合方法。此外,自闭症和 ADHD 都显示了区域间协变与质心距离之间的关系发生了改变,两组的协变随距离的增加而呈陡峭下降。这两个组在模块组织、枢纽区域的皮质厚度和协变网络的布线成本方面也存在分歧。因此,在一些网络特征上,这些组是不同的,但在其他方面则存在趋同。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/80dd/5903412/e0935907c748/bhx135f01.jpg

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