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利用大数据衍生脑图谱洞察注意力缺陷多动障碍(ADHD)及其共病的结构偏差:一项横断面研究。

Insights into structural deviations in attention deficit hyperactivity disorder (ADHD) and comorbidities using big data-derived brain charts: a cross-sectional study.

作者信息

Chen Min, Liu Dong, Feng Jun, Tian Tian

机构信息

Department of Pediatric Health Care, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.

Department of Radiology, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.

出版信息

Quant Imaging Med Surg. 2025 Sep 1;15(9):8320-8332. doi: 10.21037/qims-2024-2707. Epub 2025 Aug 15.

Abstract

BACKGROUND

Attention deficit hyperactivity disorder (ADHD) is a common neurodevelopmental disorder that often coexists with other neurodevelopmental disorders. The intricate comorbidity of ADHD with depression, Tourette syndrome (TS), and autism spectrum disorder (ASD) presents substantial challenges in the screening, diagnosis, and management of these conditions. The aim of this study was to utilize big data-derived brain charts as an objective standard to assess brain development, comparing regional brain development differences between children with pure ADHD and those with comorbidities, and to explore the presumed correlation between specific structural deviations and the severity of ADHD symptoms.

METHODS

This is a large, population-based cross-sectional study with an observational design that prospectively enrolled 459 children with ADHD, using big data-derived brain charts as an objective standard for assessing brain development. Through normative brain chart modeling, we investigated regional brain development disparities between children with pure ADHD and those with comorbidities, exploring the associations between structural deviations and clinical symptoms.

RESULTS

Significant intergroup differences were observed in cortical thickness in the left cuneus gyrus (=6.50, P =0.03) and medial occipito-temporal gyrus (=5.75, P =0.04). The ADHD + TS group had the highest number of brain regions with extreme deviations compared to the other groups. Especially, the study found that the ADHD + TS group had a significantly higher proportion of negative deviations in the left middle frontal sulcus than the ADHD + Depression group (P <0.01). Principal component 1 of structural deviations showed significant negative correlations with inattention (r=-0.17, P<0.001) and oppositional defiant disorder (r=-0.10, P=0.04). Deviation scores across multiple cortical brain regions exhibited significant correlations with the inattention score (P <0.05).

CONCLUSIONS

Brain charts effectively unveil structural variations in ADHD and comorbid groups, aiding in the prediction of inattention severity. These insights advance our understanding of ADHD's neurobiology and pave the way for personalized diagnostics and therapies.

摘要

背景

注意力缺陷多动障碍(ADHD)是一种常见的神经发育障碍,常与其他神经发育障碍共存。ADHD与抑郁症、抽动秽语综合征(TS)和自闭症谱系障碍(ASD)之间复杂的共病关系,给这些疾病的筛查、诊断和管理带来了巨大挑战。本研究的目的是利用大数据衍生的脑图谱作为评估脑发育的客观标准,比较单纯ADHD儿童与合并其他疾病儿童的脑区发育差异,并探讨特定结构偏差与ADHD症状严重程度之间的假定相关性。

方法

这是一项基于人群的大型横断面观察性研究,前瞻性纳入了459名ADHD儿童,使用大数据衍生的脑图谱作为评估脑发育的客观标准。通过规范脑图谱建模,我们研究了单纯ADHD儿童与合并其他疾病儿童之间的脑区发育差异,探讨结构偏差与临床症状之间的关联。

结果

在左侧楔叶(=6.50,P =0.03)和枕颞内侧回(=5.75,P =0.04)的皮质厚度上观察到显著的组间差异。与其他组相比,ADHD+TS组脑区极端偏差的数量最多。特别是,研究发现ADHD+TS组左侧额中沟负偏差的比例显著高于ADHD+抑郁症组(P <0.01)。结构偏差的主成分1与注意力不集中(r=-0.17,P<0.001)和对立违抗障碍(r=-0.10,P=0.04)呈显著负相关。多个皮质脑区的偏差分数与注意力不集中分数呈显著相关(P <0.05)。

结论

脑图谱有效地揭示了ADHD及共病组的结构变异,有助于预测注意力不集中的严重程度。这些见解增进了我们对ADHD神经生物学的理解,并为个性化诊断和治疗铺平了道路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9b93/12397625/0b55626d3a05/qims-15-09-8320-f1.jpg

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