识别自闭症大脑复杂性的独特发展模式:使用自闭症脑成像数据交换的横断面队列分析。

IF 5 3区 医学 Q1 CLINICAL NEUROLOGY Psychiatry and Clinical Neurosciences Pub Date : 2025-01-11 DOI:10.1111/pcn.13780
I-Jou Chi, Shih-Jen Tsai, Chun-Houh Chen, Albert C Yang
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引用次数: 0

摘要

目的:自闭症特征表现出神经多样性,不同发育阶段的行为各不相同。大脑复杂性理论说明了神经活动的动态变化,可以阐明自闭症特征随时间的演变。我们的研究探讨了自闭症患者从童年到成年的大脑复杂性模式:我们分析了 ABIDE I(自闭症脑成像数据交换)数据集中 1087 名自闭症患者和神经畸形对照者的功能磁共振成像数据,他们的年龄在 6 至 30 岁之间。利用自动解剖标记模板进行体素划分,计算样本熵以衡量 90 个脑区的大脑复杂性。使用部分重叠的滑动年龄窗对参与者进行分组。我们评估了两个组别不同年龄段的整个大脑和大脑区域的平均大脑复杂度。我们使用广义关联图进行聚类分析,以确定具有相似发育复杂性轨迹的脑区。最后,研究了脑区复杂性与自闭症特征之间的关系:结果:自闭症患者在青春期可能倾向于较高的全脑复杂性,而在儿童期和成年期则倾向于较低的复杂性,这表明可能存在不同的发育轨迹。然而,经过 Bonferroni 校正后,这些结果并没有保留下来。研究发现了两个脑区集群,每个集群都有独特的复杂性随时间变化的模式。研究还发现了脑区复杂性、年龄和自闭症特征之间的相关性:该研究揭示了自闭症患者大脑复杂性的变化轨迹,为了解自闭症的神经多样性提供了线索,并表明与年龄相关的大脑复杂性变化可能是自闭症动态性质的潜在神经发育标志。
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Identifying Distinct Developmental Patterns of Brain Complexity in Autism: A Cross-Sectional Cohort Analysis Using the Autism Brain Imaging Data Exchange.

Aim: Autistic traits exhibit neurodiversity with varying behaviors across developmental stages. Brain complexity theory, illustrating the dynamics of neural activity, may elucidate the evolution of autistic traits over time. Our study explored the patterns of brain complexity in autistic individuals from childhood to adulthood.

Methods: We analyzed functional magnetic resonance imaging data from 1087 autistic participants and neurotypical controls aged 6 to 30 years within the ABIDE I (Autism Brain Imaging Data Exchange) data set. Sample entropy was calculated to measure brain complexity among 90 brain regions, utilizing an automated anatomical labeling template for voxel parcellation. Participants were grouped using sliding age windows with partial overlaps. We assessed the average brain complexity of the entire brain and brain regions for both groups across age categories. Cluster analysis was conducted using generalized association plots to identify brain regions with similar developmental complexity trajectories. Finally, the relationship between brain region complexity and autistic traits was examined.

Results: Autistic individuals may tend toward higher whole-brain complexity during adolescence and lower complexity during childhood and adulthood, indicating possible distinct developmental trajectories. However, these results do not remain after Bonferroni correction. Two clusters of brain regions were identified, each with unique patterns of complexity changes over time. Correlations between brain region complexity, age, and autistic traits were also identified.

Conclusion: The study revealed brain complexity trajectories in autistic individuals, providing insight into the neurodiversity of autism and suggesting that age-related changes in brain complexity could be a potential neurodevelopmental marker for the dynamic nature of autism.

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来源期刊
CiteScore
7.40
自引率
4.20%
发文量
181
审稿时长
6-12 weeks
期刊介绍: PCN (Psychiatry and Clinical Neurosciences) Publication Frequency: Published 12 online issues a year by JSPN Content Categories: Review Articles Regular Articles Letters to the Editor Peer Review Process: All manuscripts undergo peer review by anonymous reviewers, an Editorial Board Member, and the Editor Publication Criteria: Manuscripts are accepted based on quality, originality, and significance to the readership Authors must confirm that the manuscript has not been published or submitted elsewhere and has been approved by each author
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