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首页> 外文期刊>BMC Medical Genomics >Predicting binary, discrete and continued lncRNA-disease associations via a unified framework based on graph regression
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Predicting binary, discrete and continued lncRNA-disease associations via a unified framework based on graph regression

机译:通过基于图回归的统一框架预测二进制,离散和连续的lncRNA-疾病关联

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摘要

In human genomes, long non-coding RNAs (lncRNAs) have attracted more and more attention because their dysfunctions are involved in many diseases. However, the associations between lncRNAs and diseases (LDA) still remain unknown in most cases. While identifying disease-related lncRNAs in vivo is costly, computational approaches are promising to not only accelerate the possible identification of associations but also provide clues on the underlying mechanism of various lncRNA-caused diseases. Former computational approaches usually only focus on predicting new associations between lncRNAs having known associations with diseases and other lncRNA-associated diseases. They also only work on binary lncRNA-disease associations (whether the pair has an association or not), which cannot reflect and reveal other biological facts, such as the number of proteins involved in LDA or how strong the association is (i.e., the intensity of LDA). To address abovementioned issues, we propose a graph regression-based unified framework (GRUF). In particular, our method can work on lncRNAs, which have no previously known disease association and diseases that have no known association with any lncRNAs. Also, instead of only a binary answer for the association, our method tries to uncover more biological relationship between a pair of lncRNA and disease, which may provide better clues for researchers. We compared GRUF with three state-of-the-art approaches and demonstrated the superiority of GRUF, which achieves 5%~16% improvement in terms of the area under the receiver operating characteristic curve (AUC). GRUF also provides a predicted confidence score for the predicted LDA, which reveals the significant correlation between the score and the number of RNA-Binding Proteins involved in LDAs. Lastly, three out of top-5 LDA candidates generated by GRUF in novel prediction are verified indirectly by medical literature and known biological facts. The proposed GRUF has two advantages over existing approaches. Firstly, it can be used to work on lncRNAs that have no known disease association and diseases that have no known association with any lncRNAs. Secondly, instead of providing a binary answer (with or without association), GRUF works for both discrete and continued LDA, which help revealing the pathological implications between lncRNAs and diseases.
机译:在人类基因组中,长的非编码RNA(lncRNA)引起了越来越多的关注,因为它们的功能异常涉及许多疾病。然而,在大多数情况下,lncRNA与疾病(LDA)之间的关联仍然未知。虽然在体内鉴定与疾病相关的lncRNA的成本很高,但计算方法有望不仅加速可能的关联鉴定,而且为各种lncRNA引起的疾病的潜在机制提供线索。以前的计算方法通常只专注于预测与疾病和其他与lncRNA相关的疾病有已知关联的lncRNA之间的新关联。它们也只能用于二元lncRNA-疾病关联(无论该对是否具有关联),该关联不能反映和揭示其他生物学事实,例如LDA中涉及的蛋白质数量或关联的强度(即强度)。 LDA)。为了解决上述问题,我们提出了一种基于图回归的统一框架(GRUF)。尤其是,我们的方法可用于lncRNA,它们以前没有已知的疾病关联,也没有与任何lncRNA都没有已知关联的疾病。同样,我们的方法不仅揭示关联的二元答案,还试图揭示一对lncRNA与疾病之间的更多生物学关系,这可能为研究人员提供更好的线索。我们将GRUF与三种最先进的方法进行了比较,并证明了GRUF的优越性,它在接收器工作特性曲线(AUC)下的面积方面实现了5%〜16%的改善。 GRUF还为预测的LDA提供了预测的置信度得分,这揭示了该得分与LDA中涉及的RNA结合蛋白数量之间的显着相关性。最后,通过医学文献和已知的生物学事实间接验证了在新的预测中由GRUF产生的前五名LDA候选物中的三名。与现有方法相比,拟议的GRUF具有两个优点。首先,它可用于处理没有已知疾病关联的lncRNA和与任何lncRNA没有已知关联的疾病。其次,GRUF不是提供二进制答案(有或没有关联),而是针对离散的LDA和连续的LDA起作用,这有助于揭示lncRNA与疾病之间的病理关系。

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