Yu Guoxian, Fu Guangyuan, Lu Chang, Ren Yazhou, Wang Jun
College of Computer and Information Sciences, Southwest University, Chongqing, China.
Big Data Research Center, School of Computer Science and Engineering, University of Electronic Science and Technology of China, Chengdu, China.
Oncotarget. 2017 Jul 26;8(36):60429-60446. doi: 10.18632/oncotarget.19588. eCollection 2017 Sep 1.
Increasing efforts have been done to figure out the association between lncRNAs and complex diseases. Many computational models construct various lncRNA similarity networks, disease similarity networks, along with known lncRNA-disease associations to infer novel associations. However, most of them neglect the structural difference between lncRNAs network and diseases network, hierarchical relationships between diseases and pattern of newly discovered associations. In this study, we developed a model that performs i-andom alks to predict novel ncRNA-isease ssociations (BRWLDA in short). This model utilizes multiple heterogeneous data to construct the lncRNA functional similarity network, and Disease Ontology to construct a disease network. It then constructs a directed bi-relational network based on these two networks and available lncRNAs-disease associations. Next, it applies bi-random walks on the network to predict potential associations. BRWLDA achieves reliable and better performance than other comparing methods not only on experiment verified associations, but also on the simulated experiments with masked associations. Case studies further demonstrate the feasibility of BRWLDA in identifying new lncRNA-disease associations.
人们已经做出越来越多的努力来探究长链非编码RNA(lncRNAs)与复杂疾病之间的关联。许多计算模型构建了各种lncRNA相似性网络、疾病相似性网络,以及已知的lncRNA-疾病关联,以推断新的关联。然而,它们中的大多数忽略了lncRNAs网络与疾病网络之间的结构差异、疾病之间的层次关系以及新发现关联的模式。在本研究中,我们开发了一种执行双向随机游走以预测新的非编码RNA-疾病关联的模型(简称为BRWLDA)。该模型利用多种异质数据构建lncRNA功能相似性网络,并利用疾病本体构建疾病网络。然后基于这两个网络以及可用的lncRNAs-疾病关联构建一个有向双关系网络。接下来,它在该网络上应用双向随机游走以预测潜在关联。BRWLDA不仅在实验验证的关联上,而且在具有屏蔽关联的模拟实验中,都比其他比较方法取得了更可靠且更好的性能。案例研究进一步证明了BRWLDA在识别新的lncRNA-疾病关联方面的可行性。