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Construction of liver hepatocellular carcinoma-specific lncRNA-miRNA-mRNA network based on?bioinformatics analysis

机译:基于α生物信息学分析的肝肝细胞癌特异性LNCrNA-mRNA网络构建

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Liver hepatocellular carcinoma (LIHC) is one of the major causes of cancer-related death worldwide with increasing incidences, however there are very few studies about the underlying mechanisms and pathways in the development of LIHC. We obtained LIHC samples from The Cancer Genome Atlas (TCGA) to screen differentially expressed mRNAs, lncRNAs, miRNAs and driver mutations. The Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway, Gene ontology enrichment analyses and protein–protein interaction (PPI) network were performed. Moreover, we constructed a competing endogenous lncRNAs-miRNAs-mRNAs network. Finally, cox proportional hazards regression analysis was used to identify important prognostic differentially expressed genes. Total of 1284 mRNAs, 123 lncRNAs, 47 miRNAs were identified within different tissues of LIHC patients. GO analysis indicated that upregulated and downregulated differentially expressed mRNAs (DEmRNAs) were mainly associated with cell division, DNA replication, mitotic sister chromatid segregation and complement activation respectively. Meanwhile, KEGG terms revealed that upregulated and downregulated DEmRNAs were primarily involved in DNA replication, Metabolic pathways, cell cycle and Metabolic pathways, chemical carcinogenesis, retinol metabolism pathway respectively. Among the DERNAs, 542 lncRNAs-miRNAs-mRNAs pairs were predicted to construct a ceRNA regulatory network including 35 DElncRNAs, 26 DEmiRNAs and 112 DEmRNAs. In the Kaplan‐Meier analysis, total of 43 mRNAs, 14 lncRNAs and 3 miRNAs were screened out to be significantly correlated with overall survival of LIHC. The mutation signatures were analyzed and its correlation with immune infiltrates were evaluated using the TIMER in LIHC. Among the mutation genes, TTN mutation is often associated with poor immune infiltration and a worse prognosis in LIHC. This work conducted a novel lncRNAs-miRNAs-mRNAs network and mutation signatures for finding potential molecular mechanisms underlying the development of LIHC. The biomarkers also can be used for predicting prognosis of LIHC.
机译:肝脏肝细胞癌(LIHC)是全世界癌症相关死亡的主要原因之一,然而,关于LIHC发展的潜在机制和途径几乎没有研究。我们从癌症基因组Atlas(TCGA)中获得了LIHC样品,以筛选差异表达MRNA,LNCRNA,MIRNA和驾驶员突变。进行基因和基因组(Kegg)途径,基因本体富集分析和蛋白质 - 蛋白质相互作用(PPI)网络的京都百科全书。此外,我们构建了一种竞争内源性LNCRNA-MIRNA-MRNA网络。最后,使用Cox比例危害回归分析来鉴定重要的预后差异表达基因。在LIHC患者的不同组织中鉴定了1284例MRNA,123LNCRNA,47 mIRNA。 GO分析表明,上调和下调的差异表达的MRNA(DEMRNA)主要与细胞分裂,DNA复制,有丝分裂筛选的染色体分离和补体激活有关。同时,Kegg术语揭示了上调和下调的DEMRNA主要参与DNA复制,代谢途径,细胞周期和代谢途径,化学致癌,视黄醇代谢途径。在DernaS中,预测542个LNCRNA-MiRNA-MRNA对构建包括35个Delncrnas,26个Demarnas和112 DemrNA的Cerna监管网络。在Kaplan-Meier分析中,筛选出43例MRNA,14个LNCRNA和3个miRNA,与LIHC的整体存活率显着相关。分析突变签名,并使用LIHC中的计时器评估其与免疫渗透的相关性。在突变基因中,TTN突变通常与差的免疫浸润性差和LIHC中的更差。这项工作进行了一种新的LNCRNAS-MiRNA-MRNA网络和突变签名,用于发现LIHC发展的潜在分子机制。生物标志物还可用于预测LIHC的预后。

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