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Network Structure Analysis Identifying Key Genes of Autism and Its Mechanism

机译:网络结构分析鉴定自闭症的关键基因及其机制

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Identifying the key genes of autism is of great significance for understanding its pathogenesis and improving the clinical level of medicine. In this paper, we use the structural parameters (average degree) of gene correlation networks to identify genes related to autism and study its pathogenesis. Based on the gene expression profiles of 82 autistic patients (the experimental group, E) and 64 healthy persons (the control group, C) in NCBI database, spearman correlation networks are established, and their average degrees under different thresholds are analyzed. It is found that average degrees of C and E are basically separable at the full thresholds. This indicates that there is a clear difference between the network structures of C and E, and it also suggests that this difference is related to the mechanism of disease. By annotating and enrichment analysis of the first 20 genes (MD-Gs) with significant difference in the average degree, we find that they are significantly related to gland development, cardiovascular development, and embryogenesis of nervous system, which support the results in Alter et al.’s original research. In addition, FIGF and CSF3 may play an important role in the mechanism of autism.
机译:鉴定自闭症的关键基因对于了解其发病机制和改善临床药物的临床水平具有重要意义。在本文中,我们使用基因相关网络的结构参数(平均程度)来识别与自闭症有关的基因并研究其发病机制。基于NCBI数据库中的82名自闭症患者(实验组,E)和64名健康人(对照组,C)的基因表达谱,建立了Spearman相关网络,分析了不同阈值下的平均度。发现平均C和E度在完全阈值上基本可分离。这表明C和E的网络结构之间存在明显差异,并且还表明这种差异与疾病的机制有关。通过对前20个基因(MD-GS)的注释和富集分析,平均程度显着差异,我们发现它们与神经系统的腺体发育,心血管发育和胚胎发生有关,其支持ALTER ET的结果al。原始研究。此外,FIGI和CSF3可以在自闭症的机制中起重要作用。

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