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lncRNAs classifier to accurately predict the recurrence of thymic epithelial tumors

机译:lncrnas分类器准确预测胸腺上皮肿瘤的复发

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BACKGROUND:Long non-coding RNAs (lncRNAs), which have little or no ability to encode proteins, have attracted special attention due to their potential role in cancer disease. In this study we aimed to establish a lncRNAs classifier to improve the accuracy of recurrence prediction for thymic epithelial tumors (TETs).METHODS:TETs RNA sequencing (RNA-seq) data set and the matched clinicopathologic information were downloaded from the Cancer Genome Atlas. Using univariate Cox regression and least absolute shrinkage and selection operator (LASSO) analysis, we developed a lncRNAs classifier related to recurrence. Functional analysis was conducted to investigate the potential biological processes of the lncRNAs target genes. The independent prognostic factors were identified by Cox regression model. Additionally, predictive ability and clinical application of the lncRNAs classifier were assessed, and compared with the Masaoka staging by receiver operating characteristic (ROC) analysis and decision curve analysis (DCA).RESULTS:Four recurrence-free survival (RFS)-related lncRNAs were identified, and the classifier consisting of the identified four lncRNAs was able to effectively divide the patients into high and low risk subgroups, with an area under curve (AUC) of 0.796 (three-year RFS) and 0.788 (five-year RFS), respectively. Multivariate analysis indicated that the lncRNAs classifier was an independent recurrence risk factor. The AUC of the lncRNAs classifier in predicting RFS was significantly higher than the Masaoka staging system. Decision curve analysis further demonstrated that the lncRNAs classifier had a larger net benefit than the Masaoka staging system.CONCLUSIONS:A lncRNAs classifier for patients with TETs was an independent risk factor for RFS despite other clinicopathologic variables. It generated more accurate estimations of the recurrence probability when compared to the Masaoka staging system, but additional data is required before it can be used in clinical practice.? 2020 The Authors. Thoracic Cancer published by China Lung Oncology Group and John Wiley & Sons Australia, Ltd.
机译:背景:长期非编码RNA(LNCRNA),其几乎没有编码蛋白质的能力,由于它们在癌症疾病中的潜在作用而引起了特别的关注。在这项研究中,我们旨在建立一个LNCRNA分类器,以提高胸腺上皮肿瘤(TETS)的复发预测的准确性。方法:TETS RNA测序(RNA-SEQ)数据集和匹配的临床病理信息从癌症基因组地图集下载。使用单变量COX回归和最低绝对收缩和选择操作员(套索)分析,我们开发了与复发相关的LNCRNAS分类器。进行功能分析以研究LNCRNA靶基因的潜在生物学过程。通过Cox回归模型鉴定了独立的预后因素。另外,评估了LNCRNA分类器的预测能力和临床应用,并与接收器操作特征(ROC)分类和决策曲线分析(DCA)进行比较。结果:四个复发存活(RFS) - 相关的LNCRNA是鉴定,由所识别的四个LNCRNA组成的分类器能够将患者分为高低风险亚组,其中曲线(AUC)为0.796(RFS)和0.788(五年rfs),分别。多变量分析表明,LNCRNAS分类器是一个独立的复发危险因素。预测RFS的LNCRNA分类器的AUC显着高于MASAOKA分期系统。决策曲线分析进一步证明了LNCRNA分类器比Masaoka分期系统具有更大的净利益。结论:尽管其他临床病理变量,但TET的患者的LNCRNA分类器是RFS的独立危险因素。与Masaoka分期系统相比,它产生了更准确的复发概率估计,但在临床实践中可以使用额外的数据。 2020作者。中国肺部肿瘤集团和约翰瓦里和儿子澳大利亚发表的胸癌

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