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首页> 外文期刊>BMC Cardiovascular Disorders >Integrative transcriptomic, proteomic, and machine learning approach to identifying feature genes of atrial fibrillation using atrial samples from patients with valvular heart disease
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Integrative transcriptomic, proteomic, and machine learning approach to identifying feature genes of atrial fibrillation using atrial samples from patients with valvular heart disease

机译:瓣膜心脏病患者使用心房样品鉴定心房颤动特征基因的整合转录组,蛋白质组学和机器学习方法

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Abstract Background Atrial fibrillation (AF) is the most common arrhythmia with poorly understood mechanisms. We aimed to investigate the biological mechanism of AF and to discover feature genes by analyzing multi-omics data and by applying a machine learning approach. Methods At the transcriptomic level, four microarray datasets (GSE41177, GSE79768, GSE115574, GSE14975) were downloaded from the Gene Expression Omnibus database, which included 130 available atrial samples from AF and sinus rhythm (SR) patients with valvular heart disease. Microarray meta-analysis was adopted to identified differentially expressed genes (DEGs). At the proteomic level, a qualitative and quantitative analysis of proteomics in the left atrial appendage of 18 patients (9 with AF and 9 with SR) who underwent cardiac valvular surgery was conducted. The machine learning correlation-based feature selection?(CFS) method was introduced to selected feature genes of AF using the training set of 130 samples involved in the microarray meta-analysis. The Naive Bayes (NB) based classifier constructed using training set was evaluated on an independent validation test set GSE2240. Results 863 DEGs with FDR??1.2 were obtained from the transcriptomic and proteomic study, respectively. The DEGs and DEPs were then analyzed together which identified 30 biomarkers with consistent trends. Further, 10 features, including 8 upregulated genes (CD44, CHGB, FHL2, GGT5, IGFBP2, NRAP, SEPTIN6, YWHAQ) and 2 downregulated genes (TNNI1, TRDN) were selected from the 30 biomarkers through machine learning CFS method using training set. The NB based classifier constructed using the training set accurately and reliably classify AF from SR samples in the validation test set with a precision of 87.5% and AUC of 0.995. Conclusion Taken together, our present work might provide novel insights into the molecular mechanism and provide some promising diagnostic and therapeutic targets of AF.
机译:摘要背景心房颤动(AF)是最常见的心律失常,理解机制差。我们旨在通过分析多OMICS数据,并应用机器学习方法来研究AF的生物机制和发现特征基因。方法在转录组水平,四个微阵列数据集(GSE41177,GSE79768,GSE115574,GSE14975)从基因表达综合体数据库下载,其中包括来自AF和窦性节律(SR)瓣膜心脏病患者的130名可用心房样本。采用微阵列荟萃分析来鉴定差异表达基因(DEGS)。在蛋白质组学水平下,进行了18名患者左心房阑尾的蛋白质组学的定性和定量分析(9例患有AF和9.SR的9例)。基于机器学习相关的特征选择?(CFS)方法被引入AF的选定AF的特征基因,所述AF的使用涉及的MicroArray Meta分析中涉及的130个样本集合。在独立验证测试SET GSE2240上评估使用训练集构造的基于Naive Bayes(NB)的分类器。结果分别从转录组和蛋白质组学研究中获得863°FDR ?? 1.2。然后分析了将折痕和DEP分析在一起,其鉴定了30个生物标志物,其趋势一致。此外,通过使用训练集的机器学习CFS方法,选择10个特征,包括8个上调基因(CD44,CHGB,FHL2,GGT5,IGFBP2,NRAP,SEPTIN6,YWHAQ)和2个下调基因(TNNI1,TRDN)。基于NB的基于NB的分类器,使用训练设置精确且可靠地将AF从SR样品中分类为验证测试​​集中的SR样本,精度为87.5%和0.995的AUC。结论在一起,我们目前的工作可能会对分子机制提供新颖的见解,并提供一些有前途的AF的诊断和治疗目标。

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