Jiang Qinghua, Hao Yangyang, Wang Guohua, Juan Liran, Zhang Tianjiao, Teng Mingxiang, Liu Yunlong, Wang Yadong
Center for Biomedical Informatics, School of Computer Science and Technology, Harbin Institute of Technology, Harbin, Heilongjiang, China.
BMC Syst Biol. 2010 May 28;4 Suppl 1(Suppl 1):S2. doi: 10.1186/1752-0509-4-S1-S2.
The identification of disease-related microRNAs is vital for understanding the pathogenesis of diseases at the molecular level, and is critical for designing specific molecular tools for diagnosis, treatment and prevention. Experimental identification of disease-related microRNAs poses considerable difficulties. Computational analysis of microRNA-disease associations is an important complementary means for prioritizing microRNAs for further experimental examination.
Herein, we devised a computational model to infer potential microRNA-disease associations by prioritizing the entire human microRNAome for diseases of interest. We tested the model on 270 known experimentally verified microRNA-disease associations and achieved an area under the ROC curve of 75.80%. Moreover, we demonstrated that the model is applicable to diseases with which no known microRNAs are associated. The microRNAome-wide prioritization of microRNAs for 1,599 disease phenotypes is publicly released to facilitate future identification of disease-related microRNAs.
We presented a network-based approach that can infer potential microRNA-disease associations and drive testable hypotheses for the experimental efforts to identify the roles of microRNAs in human diseases.
疾病相关微小RNA的鉴定对于在分子水平理解疾病发病机制至关重要,对于设计用于诊断、治疗和预防的特定分子工具也至关重要。通过实验鉴定疾病相关微小RNA存在相当大的困难。微小RNA与疾病关联的计算分析是对微小RNA进行优先级排序以进行进一步实验研究的重要补充手段。
在此,我们设计了一种计算模型,通过对感兴趣疾病的整个人类微小RNA组进行优先级排序来推断潜在的微小RNA与疾病的关联。我们在270个已知经实验验证的微小RNA与疾病关联上测试了该模型,获得了75.80%的ROC曲线下面积。此外,我们证明该模型适用于尚无已知微小RNA与之关联的疾病。针对1599种疾病表型进行的全微小RNA组范围内的微小RNA优先级排序已公开发布,以促进未来对疾病相关微小RNA的鉴定。
我们提出了一种基于网络的方法,该方法可以推断潜在的微小RNA与疾病的关联,并为确定微小RNA在人类疾病中的作用的实验工作提供可检验的假设。