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LncNetP a systematical lncRNA prioritization approach based on ceRNA and disease phenotype association assumptions

机译:LncNetP一种基于ceRNA和疾病表型关联假设的系统性lncRNA优先排序方法

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摘要

Our knowledge of lncRNA is very limited and discovering novel disease-related long non-coding RNA (lncRNA) has been a major research challenge in cancer studies. In this work, we developed an LncRNA Network-based Prioritization approach, named “LncNetP” based on the competing endogenous RNA (ceRNA) and disease phenotype association assumptions. Through application to 11 cancer types with 3089 common lncRNA and miRNA samples from the Cancer Genome Atlas (TCGA), our approach yielded an average area under the ROC curve (AUC) of 83.87%, with the highest AUC (95.22%) for renal cell carcinoma, by the leave-one-out cross validation strategy. Moreover, we demonstrated the excellent performance of our approach by evaluating the influencing factors including disease phenotype associations, known disease lncRNAs and the numbers of cancer types. Comparisons with previous methods further suggested the integrative importance of our approach. Taking hepatocellular carcinoma (LIHC) as a case study, we predicted four candidate lncRNA genes, RHPN1-AS1, , LINC01116 and BMS1P20 that may serve as novel disease risk factors for disease diagnosis and prognosis. In summary, our lncRNA prioritization strategy can efficiently identify disease-related lncRNAs and help researchers better understand the important roles of lncRNAs in human cancers.
机译:我们对lncRNA的了解非常有限,发现新的疾病相关的长非编码RNA(lncRNA)已成为癌症研究中的主要研究挑战。在这项工作中,我们基于竞争性内源RNA(ceRNA)和疾病表型关联假设,开发了一种基于LncRNA网络的优先级排序方法,称为“ LncNetP”。通过应用来自癌基因组图谱(TCGA)的3089种常见lncRNA和miRNA样品应用于11种癌症类型,我们的方法得出的ROC曲线下平均面积(AUC)为83.87%,其中肾细胞的AUC最高(95.22%)癌,通过留一法交叉验证策略。此外,我们通过评估影响因素(包括疾病表型关联,已知疾病lncRNA和癌症类型数量)证明了我们方法的出色性能。与先前方法的比较进一步表明了我们方法的综合重要性。以肝细胞癌(LIHC)为例,我们预测了四个候选lncRNA基因RHPN1-AS1,LINC01116和BMS1P20,它们可能成为疾病诊断和预后的新型疾病危险因素。总之,我们的lncRNA优先排序策略可以有效地识别与疾病相关的lncRNA,并帮助研究人员更好地了解lncRNA在人类癌症中的重要作用。

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