Luo Jiawei, Xiao Qiu
College of Computer Science and Electronic Engineering, Hunan University, Changsha, China.
College of Computer Science and Electronic Engineering, Hunan University, Changsha, China.
J Biomed Inform. 2017 Feb;66:194-203. doi: 10.1016/j.jbi.2017.01.008. Epub 2017 Jan 16.
MicroRNAs (miRNAs) play a critical role by regulating their targets in post-transcriptional level. Identification of potential miRNA-disease associations will aid in deciphering the pathogenesis of human polygenic diseases. Several computational models have been developed to uncover novel miRNA-disease associations based on the predicted target genes. However, due to the insufficient number of experimentally validated miRNA-target interactions as well as the relatively high false-positive and false-negative rates of predicted target genes, it is still challenging for these prediction models to obtain remarkable performances. The purpose of this study is to prioritize miRNA candidates for diseases. We first construct a heterogeneous network, which consists of a disease similarity network, a miRNA functional similarity network and a known miRNA-disease association network. Then, an unbalanced bi-random walk-based algorithm on the heterogeneous network (BRWH) is adopted to discover potential associations by exploiting bipartite subgraphs. Based on 5-fold cross validation, the proposed network-based method achieves AUC values ranging from 0.782 to 0.907 for the 22 human diseases and an average AUC of almost 0.846. The experiments indicated that BRWH can achieve better performances compared with several popular methods. In addition, case studies of some common diseases further demonstrated the superior performance of our proposed method on prioritizing disease-related miRNA candidates.
微小RNA(miRNA)通过在转录后水平调控其靶标发挥关键作用。识别潜在的miRNA-疾病关联将有助于阐明人类多基因疾病的发病机制。已经开发了几种计算模型,基于预测的靶基因来发现新的miRNA-疾病关联。然而,由于实验验证的miRNA-靶标相互作用数量不足,以及预测靶基因的假阳性和假阴性率相对较高,这些预测模型要获得显著的性能仍然具有挑战性。本研究的目的是对疾病的miRNA候选物进行优先级排序。我们首先构建一个异质网络,它由疾病相似性网络、miRNA功能相似性网络和已知的miRNA-疾病关联网络组成。然后,采用基于异质网络的不平衡双随机游走算法(BRWH),通过利用二分图来发现潜在关联。基于5折交叉验证,对于22种人类疾病,所提出的基于网络的方法的AUC值范围为0.782至0.907,平均AUC几乎为0.846。实验表明,与几种流行方法相比,BRWH可以实现更好的性能。此外,对一些常见疾病的案例研究进一步证明了我们提出的方法在对疾病相关miRNA候选物进行优先级排序方面的优越性能。