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首页> 外文期刊>Reproductive Biology and Endocrinology >Identification of diagnostic biomarkers in patients with gestational diabetes mellitus based on transcriptome gene expression and methylation correlation analysis
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Identification of diagnostic biomarkers in patients with gestational diabetes mellitus based on transcriptome gene expression and methylation correlation analysis

机译:基于转录组基因表达和甲基化相关分析鉴定妊娠期糖尿病患者诊断生物标志物

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Gestational diabetes mellitus (GDM) has a high prevalence in the period of pregnancy. However, the lack of gold standards in current screening and diagnostic methods posed the biggest limitation. Regulation of gene expression caused by DNA methylation plays an important role in metabolic diseases. In this study, we aimed to screen GDM diagnostic markers, and establish a diagnostic model for predicting GDM. First, we acquired data of DNA methylation and gene expression in GDM samples (N?=?41) and normal samples (N?=?41) from the Gene Expression Omnibus (GEO) database. After pre-processing the data, linear models were used to identify differentially expressed genes (DEGs). Then we performed pathway enrichment analysis to extract relationships among genes from pathways, construct pathway networks, and further analyzed the relationship between gene expression and methylation of promoter regions. We screened for genes which are significantly negatively correlated with methylation and established mRNA-mRNA-CpGs network. The network topology was further analyzed to screen hub genes which were recognized as robust GDM biomarkers. Finally, the samples were randomly divided into training set (N?=?28) and internal verification set (N?=?27), and the support vector machine (SVM) ten-fold cross-validation method was used to establish a diagnostic classifier, which verified on internal and external data sets. In this study, we identified 465 significant DEGs. Functional enrichment analysis revealed that these genes were associated with Type I diabetes mellitus and immunization. And we constructed an interactional network including 1091 genes by using the regulatory relationships of all 30 enriched pathways. 184 epigenetics regulated genes were screened by analyzing the relationship between gene expression and promoter regions’ methylation in the network. Moreover, the accuracy rate in the training data set was increased up to 96.3, and 82.1% in the internal validation set, and 97.3% in external validation data sets after establishing diagnostic classifiers which were performed by analyzing the gene expression profiles of obtained 10 hub genes from this network, combined with SVM. This study provided new features for the diagnosis of GDM and may contribute to the diagnosis and personalized treatment of GDM.
机译:妊娠期糖尿病(GDM)在怀孕期间具有很高的患病率。然而,目前筛查和诊断方法中缺乏金标准的最大限制。 DNA甲基化引起的基因表达调节在代谢疾病中起重要作用。在这项研究中,我们旨在筛选GDM诊断标记,并建立用于预测GDM的诊断模型。首先,我们在GDM样品(n =β41)中的DNA甲基化和基因表达的数据和来自基因表达综合征(Geo)数据库的正常样品(n?=Δ41)。在预处理数据后,使用线性模型来鉴定差异表达的基因(DEG)。然后我们进行途径富集分析,以从途径,构建途径网络中提取基因之间的关系,并进一步分析了基因表达与启动子区域的甲基化。我们筛选出与甲基化显着呈负相关的基因和建立的mRNA-mRNA-CPGS网络。进一步分析网络拓扑以筛选具有稳健的GDM生物标志物的筛网基因。最后,将样品随机分为训练集(n?=Δ28)和内部验证集(n?=Δ27),并且支持向量机(SVM)十倍交叉验证方法建立诊断分类器,验证内部和外部数据集。在这项研究中,我们确定了465个重要的参数。功能性富集分析显示,这些基因与I型糖尿病和免疫相关。并且我们通过使用所有30个富集的途径的调节关系构建了包括1091个基因的互动网络。通过分析网络中基因表达和启动子区甲基化的关系,筛选了184个表观遗传学对细胞的基因。此外,培训数据集中的精度率​​高达96.3,内部验证集中的82.1%,并且在建立诊断分类器后,外部验证数据集中的97.3%在建立通过分析获得的10毂的基因表达谱进行来自该网络的基因,结合SVM。本研究提供了诊断GDM的新功能,可能有助于诊断和个性化GDM的治疗。

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