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Transcription Factor-MicroRNA-Target Gene Networks Associated with Ovarian Cancer Survival and Recurrence

机译:转录因子的microRNa目标基因网络相关的卵巢癌生存和复发

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摘要

The identification of reliable transcriptome biomarkers requires the simultaneous consideration of regulatory and target elements including microRNAs (miRNAs), transcription factors (TFs), and target genes. A novel approach that integrates multivariate survival analysis, feature selection, and regulatory network visualization was used to identify reliable biomarkers of ovarian cancer survival and recurrence. Expression profiles of 799 miRNAs, 17,814 TFs and target genes and cohort clinical records on 272 patients diagnosed with ovarian cancer were simultaneously considered and results were validated on an independent group of 146 patients. Three miRNAs (hsa-miR-16, hsa-miR-22*, and ebv-miR-BHRF1-2*) were associated with both ovarian cancer survival and recurrence and 27 miRNAs were associated with either one hazard. Two miRNAs (hsa-miR-521 and hsa-miR-497) were cohort-dependent, while 28 were cohort-independent. This study confirmed 19 miRNAs previously associated with ovarian cancer and identified two miRNAs that have previously been associated with other cancer types. In total, the expression of 838 and 734 target genes and 12 and eight TFs were associated (FDR-adjusted P-value <0.05) with ovarian cancer survival and recurrence, respectively. Functional analysis highlighted the association between cellular and nucleotide metabolic processes and ovarian cancer. The more direct connections and higher centrality of the miRNAs, TFs and target genes in the survival network studied suggest that network-based approaches to prognosticate or predict ovarian cancer survival may be more effective than those for ovarian cancer recurrence. This study demonstrated the feasibility to infer reliable miRNA-TF-target gene networks associated with survival and recurrence of ovarian cancer based on the simultaneous analysis of co-expression profiles and consideration of the clinical characteristics of the patients.
机译:可靠的转录组生物标志物的鉴定需要同时考虑调节和靶标元素,包括microRNA(miRNA),转录因子(TFs)和靶标基因。一种集成了多变量生存分析,特征选择和调节网络可视化的新颖方法被用于识别卵巢癌生存和复发的可靠生物标志物。同时考虑了272例诊断为卵巢癌的患者中799个miRNA,17814 TF和目标基因的表达谱以及队列临床记录,并在146例独立患者中验证了结果。三种miRNA(hsa-miR-16,hsa-miR-22 *和ebv-miR-BHRF1-2 *)与卵巢癌的生存和复发相关,而27种miRNA与任一危害相关。两个miRNA(hsa-miR-521和hsa-miR-497)与队列无关,而28个与队列无关。这项研究证实了19种先前与卵巢癌相关的miRNA,并鉴定了两种先前与其他癌症类型相关的miRNA。总共,838和734个靶基因的表达以及12和8个TF的表达分别与卵巢癌的存活和复发相关(FDR调整后的P值<0.05)。功能分析突出了细胞和核苷酸代谢过程与卵巢癌之间的关联。 miRNA,TF和靶基因在生存网络中的更直接的联系和更高的集中度表明,用于预测或预测卵巢癌生存的基于网络的方法可能比卵巢癌复发更有效。这项研究证明了基于共表达谱的同时分析和患者临床特征的考虑,推断与卵巢癌的生存和复发相关的可靠的miRNA-TF-靶基因网络的可行性。

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