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Cluster correlation based method for lncRNA-disease association prediction

机译:基于簇相关的LNCRNA疾病关联预测方法

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In recent years, increasing evidences have indicated that long non-coding RNAs (lncRNAs) are deeply involved in a wide range of human biological pathways. The mutations and disorders of lncRNAs are closely associated with many human diseases. Therefore, it is of great importance to predict potential associations between lncRNAs and complex diseases for the diagnosis and cure of complex diseases. However, the functional mechanisms of the majority of lncRNAs are still remain unclear. As a result, it remains a great challenge to predict potential associations between lncRNAs and diseases. Here, we proposed a new method to predict potential lncRNA-disease associations. First, we constructed a bipartite network based on known associations between diseases and lncRNAs/protein coding genes. Then the cluster association scores were calculated to evaluate the strength of the inner relationships between disease clusters and gene clusters. Finally, the gene-disease association scores are defined based on disease-gene cluster association scores and used to measure the strength for potential gene-disease associations. Leave-One Out Cross Validation (LOOCV) and 5-fold cross validation tests were implemented to evaluate the performance of our method. As a result, our method achieved reliable performance in the LOOCV (AUCs of 0.8169 and 0.8410 based on Yang’s dataset and Lnc2cancer 2.0 database, respectively), and 5-fold cross validation (AUCs of 0.7573 and 0.8198 based on Yang’s dataset and Lnc2cancer 2.0 database, respectively), which were significantly higher than the other three comparative methods. Furthermore, our method is simple and efficient. Only the known gene-disease associations are exploited in a graph manner and further new gene-disease associations can be easily incorporated in our model. The results for melanoma and ovarian cancer have been verified by other researches. The case studies indicated that our method can provide informative clues for further investigation.
机译:近年来,提高证据表明,长期的非编码RNA(LNCRNA)深受广泛的人体生物途径。 LNCRNA的突变和疾病与许多人类疾病密切相关。因此,预测LNCRNA和复杂疾病之间诊断和治愈复杂疾病的潜在关联具有重要意义。然而,大多数LNCRNA的功能机制仍然不清楚。结果,预测LNCRNA和疾病之间的潜在关联仍然是一个巨大的挑战。在这里,我们提出了一种预测潜在的LNCRNA疾病关联的新方法。首先,我们构建了基于疾病和LNCRNA /蛋白质编码基因之间的已知关联的二分网络。然后计算群集协会评分以评估疾病簇和基因簇之间的内部关系的强度。最后,基于疾病 - 基因群组合分数来定义基因疾病协会评分,并用于测量潜在基因疾病关联的强度。实施休假交叉验证(LOOCV)和5倍交叉验证测试以评估我们方法的性能。因此,我们的方法在LooOCV(基于Yang的DataSet和LNC2Cancer 2.0数据库的0.8169和0.8410的AUC)中实现了可靠的性能,以及5倍的交叉验证(基于Yang的DataSet和LNC2Cancer 2.0数据库的5倍交叉验证(AUC) (分别)显着高于其他三种比较方法。此外,我们的方法简单而有效。只有在图形方式中利用已知的基因疾病关联,并且可以在我们的模型中容易地纳入新的基因疾病关联。其他研究已经验证了黑色素瘤和卵巢癌的结果。案例研究表明,我们的方法可以提供进一步调查的信息线索。

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