Zhang Xiaotian, Yin Jian, Zhang Xu
School of Mechanical, Electrical and Information Engineering, Shandong University, Weihai 264209, China.
Genes (Basel). 2018 Mar 2;9(3):139. doi: 10.3390/genes9030139.
Increasing evidence suggests that dysregulation of microRNAs (miRNAs) may lead to a variety of diseases. Therefore, identifying disease-related miRNAs is a crucial problem. Currently, many computational approaches have been proposed to predict binary miRNA-disease associations. In this study, in order to predict underlying miRNA-disease association types, a semi-supervised model called the network-based label propagation algorithm is proposed to infer multiple types of miRNA-disease associations (NLPMMDA) by mutual information derived from the heterogeneous network. The NLPMMDA method integrates disease semantic similarity, miRNA functional similarity, and Gaussian interaction profile kernel similarity information of miRNAs and diseases to construct a heterogeneous network. NLPMMDA is a semi-supervised model which does not require verified negative samples. Leave-one-out cross validation (LOOCV) was implemented for four known types of miRNA-disease associations and demonstrated the reliable performance of our method. Moreover, case studies of lung cancer and breast cancer confirmed effective performance of NLPMMDA to predict novel miRNA-disease associations and their association types.
越来越多的证据表明,微小RNA(miRNA)的失调可能导致多种疾病。因此,识别与疾病相关的miRNA是一个关键问题。目前,已经提出了许多计算方法来预测二元miRNA-疾病关联。在本研究中,为了预测潜在的miRNA-疾病关联类型,提出了一种基于网络的标签传播算法的半监督模型,通过从异质网络中导出的互信息来推断多种类型的miRNA-疾病关联(NLPMMDA)。NLPMMDA方法整合了疾病语义相似性、miRNA功能相似性以及miRNA与疾病的高斯相互作用轮廓核相似性信息,以构建异质网络。NLPMMDA是一种半监督模型,不需要经过验证的阴性样本。对四种已知类型的miRNA-疾病关联进行了留一法交叉验证(LOOCV),证明了我们方法的可靠性能。此外,肺癌和乳腺癌的案例研究证实了NLPMMDA在预测新型miRNA-疾病关联及其关联类型方面的有效性能。