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Inferring microRNA-disease association by hybrid recommendation algorithm and unbalanced bi-random walk on heterogeneous network

机译:通过混合推荐算法和异构网络上的非平衡双随机游动推断microRNA-疾病关联

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摘要

More and more research works have indicated that microRNAs (miRNAs) play indispensable roles in exploring the pathogenesis of diseases. Detecting miRNA-disease associations by experimental techniques in biology is expensive and time-consuming. Hence, it is important to propose reliable and accurate computational methods to exploring potential miRNAs related diseases. In our work, we develop a novel method (BRWHNHA) to uncover potential miRNAs associated with diseases based on hybrid recommendation algorithm and unbalanced bi-random walk. We first integrate the Gaussian interaction profile kernel similarity into the miRNA functional similarity network and the disease semantic similarity network. Then we calculate the transition probability matrix of bipartite network by using hybrid recommendation algorithm. Finally, we adopt unbalanced bi-random walk on the heterogeneous network to infer undiscovered miRNA-disease relationships. We tested BRWHNHA on 22 diseases based on five-fold cross-validation and achieves reliable performance with average AUC of 0.857, which an area under the ROC curve ranging from 0.807 to 0.924. As a result, BRWHNHA significantly improves the performance of inferring potential miRNA-disease association compared with previous methods. Moreover, the case studies on lung neoplasms and prostate neoplasms also illustrate that BRWHNHA is superior to previous prediction methods and is more advantageous in exploring potential miRNAs related diseases. All source codes can be downloaded from .
机译:越来越多的研究工作表明,microRNA(miRNA)在探索疾病的发病机理中起着不可或缺的作用。通过生物学中的实验技术检测miRNA-疾病关联是昂贵且费时的。因此,重要的是提出可靠和准确的计算方法来探索潜在的miRNA相关疾病。在我们的工作中,我们开发了一种新方法(BRWHNHA),以基于混合推荐算法和不平衡的双随机行走来发现与疾病相关的潜在miRNA。我们首先将高斯交互轮廓内核相似度集成到miRNA功能相似度网络和疾病语义相似度网络中。然后,采用混合推荐算法,计算了二部网络的转移概率矩阵。最后,我们在异构网络上采用不平衡的双随机游动来推断未发现的miRNA-疾病关系。我们基于五重交叉验证对22种疾病进行了BRWHNHA测试,并获得了可靠的性能,平均AUC为0.857,ROC曲线下的面积为0.807至0.924。结果,与以前的方法相比,BRWHNHA显着提高了推断潜在的miRNA-疾病关联的性能。此外,对肺肿瘤和前列腺肿瘤的案例研究还表明,BRWHNHA优于先前的预测方法,并且在探索潜在的与miRNA相关的疾病方面更具优势。可以从下载所有源代码。

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