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A Novel Approach for Predicting Disease-lncRNA Associations Based on the Distance Correlation Set and Information of the miRNAs

机译:基于距离相关集和miRNA信息的疾病-lncRNA关联预测新方法

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摘要

Recently, accumulating laboratorial studies have indicated that plenty of long noncoding RNAs (lncRNAs) play important roles in various biological processes and are associated with many complex human diseases. Therefore, developing powerful computational models to predict correlation between lncRNAs and diseases based on heterogeneous biological datasets will be important. However, there are few approaches to calculating and analyzing lncRNA-disease associations on the basis of information about miRNAs. In this article, a new computational method based on distance correlation set is developed to predict lncRNA-disease associations (DCSLDA). Comparing with existing state-of-the-art methods, we found that the major novelty of DCSLDA lies in the introduction of lncRNA-miRNA-disease network and distance correlation set; thus DCSLDA can be applied to predict potential lncRNA-disease associations without requiring any known disease-lncRNA associations. Simulation results show that DCSLDA can significantly improve previous existing models with reliable AUC of 0.8517 in the leave-one-out cross-validation. Furthermore, while implementing DCSLDA to prioritize candidate lncRNAs for three important cancers, in the first 0.5% of forecast results, 17 predicted associations are verified by other independent studies and biological experimental studies. Hence, it is anticipated that DCSLDA could be a great addition to the biomedical research field.
机译:最近,不断积累的实验室研究表明,许多长的非编码RNA(lncRNA)在各种生物学过程中均起着重要作用,并与许多复杂的人类疾病相关。因此,基于异质生物学数据集开发强大的计算模型以预测lncRNA与疾病之间的相关性将非常重要。但是,很少有基于miRNA信息来计算和分析lncRNA-疾病关联的方法。在本文中,开发了一种基于距离相关集的新计算方法来预测lncRNA-疾病关联(DCSLDA)。与现有的最新方法相比,我们发现DCSLDA的主要新颖之处在于引入了lncRNA-miRNA-疾病网络和距离相关集。因此,DCSLDA可以用于预测潜在的lncRNA-疾病关联,而无需任何已知的疾病-lncRNA关联。仿真结果表明,DCSLDA在留一法交叉验证中可以以0.8517的可靠AUC显着改善以前的现有模型。此外,在实施DCSLDA对三种重要癌症的候选lncRNA进行优先排序时,在预测结果的前0.5%中,其他独立研究和生物学实验研究证实了17种预测关联。因此,可以预期DCSLDA将成为生物医学研究领域的重要补充。

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