Guan Jinting, Wang Yang, Lin Yiping, Yin Qingyang, Zhuang Yibo, Ji Guoli
Department of Automation, Xiamen University, Xiamen, China.
National Institute for Data Science in Health and Medicine, Xiamen University, Xiamen, China.
Front Genet. 2021 Jan 15;11:628539. doi: 10.3389/fgene.2020.628539. eCollection 2020.
Bulk transcriptomic analyses of autism spectrum disorder (ASD) have revealed dysregulated pathways, while the brain cell type-specific molecular pathology of ASD still needs to be studied. Machine learning-based studies can be conducted for ASD, prioritizing high-confidence gene candidates and promoting the design of effective interventions. Using human brain nucleus gene expression of ASD and controls, we construct cell type-specific predictive models for ASD based on individual genes and gene sets, respectively, to screen cell type-specific ASD-associated genes and gene sets. These two kinds of predictive models can predict the diagnosis of a nucleus with known cell type. Then, we construct a multi-label predictive model for predicting the cell type and diagnosis of a nucleus at the same time. Our findings suggest that layer 2/3 and layer 4 excitatory neurons, layer 5/6 cortico-cortical projection neurons, parvalbumin interneurons, and protoplasmic astrocytes are preferentially affected in ASD. The functions of genes with predictive power for ASD are different and the top important genes are distinct across different cells, highlighting the cell-type heterogeneity of ASD. The constructed predictive models can promote the diagnosis of ASD, and the prioritized cell type-specific ASD-associated genes and gene sets may be used as potential biomarkers of ASD.
对自闭症谱系障碍(ASD)的大量转录组分析揭示了失调的通路,而ASD的脑细胞类型特异性分子病理学仍有待研究。可以针对ASD开展基于机器学习的研究,确定高可信度的基因候选物并推动有效干预措施的设计。利用ASD患者和对照者的人脑核基因表达,我们分别基于单个基因和基因集构建了ASD的细胞类型特异性预测模型,以筛选细胞类型特异性的ASD相关基因和基因集。这两种预测模型可以预测已知细胞类型的核的诊断。然后,我们构建了一个多标签预测模型,用于同时预测核的细胞类型和诊断。我们的研究结果表明,第2/3层和第4层兴奋性神经元、第5/6层皮质-皮质投射神经元、小白蛋白中间神经元和原浆性星形胶质细胞在ASD中受到优先影响。对ASD具有预测能力的基因的功能各不相同,不同细胞中最重要的基因也不同,这突出了ASD的细胞类型异质性。构建的预测模型可以促进ASD的诊断,而确定的细胞类型特异性ASD相关基因和基因集可能用作ASD的潜在生物标志物。