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自闭症谱系障碍神经解剖内表型的评估及其与精神分裂症患者和普通人群特征的关联。

Assessment of Neuroanatomical Endophenotypes of Autism Spectrum Disorder and Association With Characteristics of Individuals With Schizophrenia and the General Population.

机构信息

AI 2 D Center for Data Science for Integrated Diagnostics, and Center for Biomedical Image Computing and Analytics, Perelman School of Medicine, University of Pennsylvania, Philadelphia.

Laboratory of AI & Biomedical Science (LABS), Stevens Neuroimaging and Informatics Institute, Keck School of Medicine of USC, University of Southern California, Marina del Rey.

出版信息

JAMA Psychiatry. 2023 May 1;80(5):498-507. doi: 10.1001/jamapsychiatry.2023.0409.

Abstract

IMPORTANCE

Autism spectrum disorder (ASD) is associated with significant clinical, neuroanatomical, and genetic heterogeneity that limits precision diagnostics and treatment.

OBJECTIVE

To assess distinct neuroanatomical dimensions of ASD using novel semisupervised machine learning methods and to test whether the dimensions can serve as endophenotypes also in non-ASD populations.

DESIGN, SETTING, AND PARTICIPANTS: This cross-sectional study used imaging data from the publicly available Autism Brain Imaging Data Exchange (ABIDE) repositories as the discovery cohort. The ABIDE sample included individuals diagnosed with ASD aged between 16 and 64 years and age- and sex-match typically developing individuals. Validation cohorts included individuals with schizophrenia from the Psychosis Heterogeneity Evaluated via Dimensional Neuroimaging (PHENOM) consortium and individuals from the UK Biobank to represent the general population. The multisite discovery cohort included 16 internationally distributed imaging sites. Analyses were performed between March 2021 and March 2022.

MAIN OUTCOMES AND MEASURES

The trained semisupervised heterogeneity through discriminative analysis models were tested for reproducibility using extensive cross-validations. It was then applied to individuals from the PHENOM and the UK Biobank. It was hypothesized that neuroanatomical dimensions of ASD would display distinct clinical and genetic profiles and would be prominent also in non-ASD populations.

RESULTS

Heterogeneity through discriminative analysis models trained on T1-weighted brain magnetic resonance images of 307 individuals with ASD (mean [SD] age, 25.4 [9.8] years; 273 [88.9%] male) and 362 typically developing control individuals (mean [SD] age, 25.8 [8.9] years; 309 [85.4%] male) revealed that a 3-dimensional scheme was optimal to capture the ASD neuroanatomy. The first dimension (A1: aginglike) was associated with smaller brain volume, lower cognitive function, and aging-related genetic variants (FOXO3; Z = 4.65; P = 1.62 × 10-6). The second dimension (A2: schizophrenialike) was characterized by enlarged subcortical volumes, antipsychotic medication use (Cohen d = 0.65; false discovery rate-adjusted P = .048), partially overlapping genetic, neuroanatomical characteristics to schizophrenia (n = 307), and significant genetic heritability estimates in the general population (n = 14 786; mean [SD] h2, 0.71 [0.04]; P < 1 × 10-4). The third dimension (A3: typical ASD) was distinguished by enlarged cortical volumes, high nonverbal cognitive performance, and biological pathways implicating brain development and abnormal apoptosis (mean [SD] β, 0.83 [0.02]; P = 4.22 × 10-6).

CONCLUSIONS AND RELEVANCE

This cross-sectional study discovered 3-dimensional endophenotypic representation that may elucidate the heterogeneous neurobiological underpinnings of ASD to support precision diagnostics. The significant correspondence between A2 and schizophrenia indicates a possibility of identifying common biological mechanisms across the 2 mental health diagnoses.

摘要

自闭症谱系障碍(ASD)与显著的临床、神经解剖学和遗传异质性相关,这限制了精准诊断和治疗。

目的

使用新的半监督机器学习方法评估 ASD 的不同神经解剖学维度,并检验这些维度是否也可以作为非 ASD 人群的表型。

设计、地点和参与者:本横断面研究使用了公开的自闭症脑成像数据交换(ABIDE)资料库中的成像数据作为发现队列。ABIDE 样本包括年龄在 16 至 64 岁之间被诊断为 ASD 的个体和年龄及性别匹配的正常发育个体。验证队列包括来自精神病异质性通过多维神经影像学评估(PHENOM)联合会的精神分裂症个体和英国生物库的个体,以代表一般人群。多站点发现队列包括 16 个国际分布的成像站点。分析于 2021 年 3 月至 2022 年 3 月进行。

主要结果和措施

通过有监督的差异分析模型训练的半监督异质性在广泛的交叉验证中被测试其可重复性。然后将其应用于 PHENOM 和英国生物库的个体。假设 ASD 的神经解剖学维度将显示出不同的临床和遗传特征,并在非 ASD 人群中也很突出。

结果

对 307 名 ASD(平均[SD]年龄,25.4[9.8]岁;273[88.9%]男性)和 362 名正常发育对照个体(平均[SD]年龄,25.8[8.9]岁;309[85.4%]男性)的 T1 加权脑磁共振图像进行有监督的差异分析模型训练,揭示了一个 3 维方案是捕获 ASD 神经解剖学的最佳方案。第一个维度(A1:衰老样)与较小的脑容量、较低的认知功能和与衰老相关的遗传变异(FOXO3;Z=4.65;P=1.62×10-6)有关。第二个维度(A2:精神分裂症样)的特征是皮质下体积增大、使用抗精神病药物(Cohen d=0.65;假发现率校正 P=0.048),与精神分裂症部分重叠的遗传、神经解剖学特征(n=307),以及一般人群中显著的遗传可遗传性估计(n=14786;平均[SD]h2,0.71[0.04];P<1×10-4)。第三个维度(A3:典型 ASD)的特点是皮质体积增大、非言语认知表现高,以及涉及大脑发育和异常细胞凋亡的生物学途径(平均[SD]β,0.83[0.02];P=4.22×10-6)。

结论和相关性

本横断面研究发现了 3 维表型表现,可能阐明 ASD 的异质神经生物学基础,以支持精准诊断。A2 与精神分裂症之间的显著对应表明,在这两种精神健康诊断中,可能确定共同的生物学机制。

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