Microbiota I-Center (MagIC), Hong Kong SAR, China.
Department of Medicine and Therapeutics, The Chinese University of Hong Kong, Hong Kong SAR, China.
Gut Microbes. 2024 Jan-Dec;16(1):2418984. doi: 10.1080/19490976.2024.2418984. Epub 2024 Oct 28.
Accumulating evidence suggests that gut microbiota alterations influence brain function and could serve as diagnostic biomarkers and therapeutic targets. The potential of using fecal microbiota signatures to aid autism spectrum disorder (ASD) detection is still not fully explored. Here, we assessed the potential of different levels of microbial markers (taxonomy and genome) in distinguishing children with ASD from age and gender-matched typically developing peers ( = 598, ASD vs TD = 273 vs 325). A combined microbial taxa and metagenome-assembled genome (MAG) markers showed a better performance than either microbial taxa or microbial MAGs alone for detecting ASD. A machine-learning model comprising 5 bacterial taxa and 44 microbial MAG markers (2 viral MAGs and 42 bacterial MAGs) achieved an area under the receiving operator curve (AUROC) of 0.886 in the discovery cohort and 0.734 in an independent validation cohort. Furthermore, the identified biomarkers and predicted ASD risk score also significantly correlated with the core symptoms measured by the Social Responsiveness Scale-2 (SRS-2). The microbiome panel showed a superior classification performance in younger children (≤6 years old) with an AUROC of 0.845 than older children (>6 years). The model was broadly applicable to subjects across genders, with or without gastrointestinal tract symptoms (constipation and diarrhea) and with or without psychiatric comorbidities (attention deficit and hyperactivity disorder and anxiety). This study highlights the potential clinical validity of fecal microbiome to aid in ASD diagnosis and will facilitate studies to understand the association of disturbance of human gut microbiota and ASD symptom severity.
越来越多的证据表明,肠道微生物群的改变会影响大脑功能,并可能作为诊断生物标志物和治疗靶点。利用粪便微生物群特征来辅助自闭症谱系障碍(ASD)检测的潜力尚未得到充分探索。在这里,我们评估了不同水平的微生物标志物(分类和基因组)在区分自闭症儿童和年龄及性别匹配的正常发育同伴方面的潜力( = 598,ASD 与 TD = 273 与 325)。微生物分类群和宏基因组组装基因组(MAG)标志物的组合显示出比微生物分类群或微生物 MAG 单独用于检测 ASD 更好的性能。一个包含 5 种细菌分类群和 44 种微生物 MAG 标志物(2 种病毒 MAG 和 42 种细菌 MAG)的机器学习模型在发现队列中获得了 0.886 的接收者操作特征曲线(AUROC),在独立验证队列中获得了 0.734 的 AUROC。此外,鉴定的生物标志物和预测的 ASD 风险评分也与社会反应量表-2(SRS-2)测量的核心症状显著相关。该微生物组谱在年龄较小(≤6 岁)的儿童中表现出优于年龄较大(>6 岁)儿童的分类性能,AUROC 为 0.845。该模型广泛适用于有或没有胃肠道症状(便秘和腹泻)以及有或没有精神共病(注意力缺陷多动障碍和焦虑)的男女受试者。这项研究强调了粪便微生物组在辅助 ASD 诊断方面的潜在临床有效性,并将促进研究了解人类肠道微生物群紊乱与 ASD 症状严重程度的关联。