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首页> 外文期刊>DNA and Cell Biology >Identification of a Multi-RNA-Type-Based Signature for Recurrence-Free Survival Prediction in Patients with Uterine Corpus Endometrial Carcinoma
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Identification of a Multi-RNA-Type-Based Signature for Recurrence-Free Survival Prediction in Patients with Uterine Corpus Endometrial Carcinoma

机译:鉴定子宫子宫内膜癌患者的无复发存活预测的多RNA型签名

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Uterine corpus endometrial carcinoma (UCEC) is one of the leading causes of death from gynecological cancer due to the high recurrence rate. A recent study indicated that molecular biomarkers can enhance the recurrence prediction power if they were integrated with clinical information. In this study, we attempted to identify a new multi-RNA-type-based molecular biomarker for predicting the recurrence risk and recurrence-free survival (RFS). Matched mRNA (including lncRNA) and miRNA RNA-sequencing data from 463 UCEC patients (n = 75, recurrent; n = 388, non-recurrent) were downloaded from The Cancer Genome Atlas database. LASSO (least absolute shrinkage and selection operator) analysis was used to screen the optimal combination of prognostic RNAs and then the risk score model was constructed. Moreover, the molecular mechanisms of prognostic RNAs were explored by establishing various interaction networks based on corresponding predictive databases. A multi-RNA-type-based signature (including three miRNAs: hsa-miR-6511b, hsa-miR-184, hsa-miR-4461; three lncRNAs: ENO1-IT1, MCCC1-AS1, AATBC; and 7 mRNAs: EPPK1, ASB9, BDNF, CYP11A1, ECEL1, EN2, F13A1) was developed for the prediction of RFS. The risk scoring system established by these signature genes was effective for the discrimination of the 5-year RFS in the high-risk from low-risk patients in the training [an area under the receiver operating characteristic curve (AUC) = 0.960], validation (AUC = 0.863), and entire datasets (AUC = 0.873). This risk score model was also proved to be a more excellent, independent prognostic discriminator than the single-RNA-type (overall AUC: 0.947 vs. 0.677, lncRNAs; 0.709, miRNAs; 0.899, mRNAs) and clinical staging (overall AUC: 0.947 vs. 0.517). Furthermore, the downstream mechanisms for some prognostic miRNAs or lncRNAs (HAND2-AS1-hsa-miR-6511b-APC2, PAX8-AS1-hsa-miR-4461-TNIK and MCCC1-AS1/ENO1-IT1-TNIK) were newly predicted based on the coexpression or competitive endogenous RNA theories. In conclusion, our findings may provide novel biomarkers for recurrence prediction and targets for treatment of UCEC.
机译:子宫子宫内膜癌(UCEC)是由于高复发率,妇科癌症死亡的主要原因之一。最近的一项研究表明,如果它们与临床信息集成,分子生物标志物可以增强复发预测能力。在本研究中,我们试图鉴定一种新的基于多RNA型的分子生物标志物,用于预测复发风险和无复发存活(RFS)。从463例UCEC患者(n = 75,复发性; n = 388,非反复间)的匹配mRNA(包括LNCRNA)和miRNA RNA测序数据从癌症基因组ATLAS数据库下载。套索(最小绝对收缩和选择操作员)分析用于筛选预后RNA的最佳组合,然后构建了风险评分模型。此外,通过基于相应的预测数据库建立各种交互网络,探索了预后RNA的分子机制。基于多RNA型的签名(包括三个miRNA:HSA-MIR-6511B,HSA-MIR-184,HSA-MIR-4461;三个LNCRNA:ENO1-IT1,MCCC1-AS1,AATBC; 7 MRNA:EPPK1 ,开发了ASB9,BDNF,CYP11A1,ECEL1,EN2,F13A1)以预测RFS。这些签名基因建立的风险评分系统对于在培训中低风险患者的高风险中的5年RFS歧视是有效的[接收器的一个区域,操作特征曲线(AUC)= 0.960],验证(AUC = 0.863)和整个数据集(AUC = 0.873)。该风险评分模型也被证明是比单RNA型更优异,独立的预后鉴别器(总AUC:0.947,LNCRNA; 0.709,miRNA; 0.899,MRNA)和临床分期(总体AUC:0.947 vs. 0.517)。此外,新预测了一些预后MiRNA或LNCRNA或LNCRNA或LNCRNA(HIFT2-AS1-HSA-MIR-6511B-APC2,PAX8-AS1-HSA-MIR-4461-TNIK和MCCC1-AS1 / ENO1-IT1-TNIK)的下游机制关于共表达或竞争内源性RNA理论。总之,我们的研究结果可以为复发预测和治疗UCEC的靶标提供新的生物标志物。

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