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样本外研究:青少年精神疾病的稳健且可推广的多变量神经解剖学模式

Beyond out-of-sample: robust and generalizable multivariate neuroanatomical patterns of psychiatric problems in youth.

作者信息

Xu Bing, Wang Hao, Dall'Aglio Lorenza, Luo Mannan, Zhang Yingzhe, Muetzel Ryan, Tiemeier Henning

机构信息

Department of Child and Adolescent Psychology and Psychiatry, Erasmus MC University Medical Center Rotterdam-Sophia Children's Hospital, Rotterdam, The Netherlands.

The Generation R Study Group, Erasmus MC University Medical Center Rotterdam, Rotterdam, The Netherlands.

出版信息

Mol Psychiatry. 2025 Jun;30(6):2525-2536. doi: 10.1038/s41380-024-02855-4. Epub 2024 Nov 30.

Abstract

Mapping differential brain structures for psychiatric problems has been challenging due to a lack of regional convergence and poor replicability in previous brain-behavior association studies. By leveraging two independent large cohorts of neurodevelopment, the ABCD and Generation R Studies (total N = 11271), we implemented an unsupervised machine learning technique with a highly stringent generalizability test to identify reliable brain-behavior associations across diverse domains of child psychiatric problems. Across all psychiatric symptoms measured, one multivariate brain-behavior association was found, reflecting a widespread reduction of cortical surface area correlated with higher child attention problems. Crucially, this association showed marked generalizability across different populations and study protocols, demonstrating potential clinical utility. Moreover, the derived brain dimension score predicted child cognitive and academic functioning three years later and was also associated with polygenic scores for ADHD. Our results indicated that attention problems could be a phenotype for establishing promising multivariate neurobiological prediction models for children across populations. Future studies could extend this investigation into different development periods and examine the predictive values for assessment of functioning, diagnosis, and disease trajectory in clinical samples.

摘要

由于先前脑-行为关联研究中缺乏区域收敛性和可重复性较差,绘制精神疾病的差异脑结构一直具有挑战性。通过利用两个独立的大型神经发育队列,即青少年大脑认知发展研究(ABCD)和R代研究(总计N = 11271),我们实施了一种无监督机器学习技术,并进行了高度严格的泛化测试,以识别儿童精神疾病不同领域中可靠的脑-行为关联。在所有测量的精神症状中,发现了一种多变量脑-行为关联,反映出与儿童注意力问题较高相关的皮质表面积普遍减少。至关重要的是,这种关联在不同人群和研究方案中表现出显著的泛化性,证明了其潜在的临床实用性。此外,得出的脑维度评分在三年后预测了儿童的认知和学业功能,并且还与注意力缺陷多动障碍(ADHD)的多基因评分相关。我们的结果表明,注意力问题可能是为不同人群的儿童建立有前景的多变量神经生物学预测模型的一个表型。未来的研究可以将这项调查扩展到不同的发育时期,并检查其在临床样本中对功能评估、诊断和疾病轨迹的预测价值。

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