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Predicting microRNA-environmental factor interactions based on bi-random walk and multi-label learning

机译:基于双随机步行和多标签学习预测microRNA与环境因子的相互作用

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Increasing evidences have shown that microRNAs (miRNAs) play important roles in many diseases. The environmental factors (EFs) can regulate the expression level of miRNAs in human tissues. Therefore, identifying potential miRNA-environmental factor interactions is helpful not only for understanding the pathogenesis of diseases, but also for disease diagnosis, prognosis and treatment. In this paper, we propose a computational framework, MEI-BRWMLL (MiRNA-EF Interaction prediction based on Bi-Random walk and Multi-Label Learning), to identify interactions between miRNAs and environmental factors. The sequence and topology information of miRNA and structure, anatomical therapeutic chemical and topology information of environmental factor are employed to measure similarity of miRNAs and environmental factors, respectively. In addition, we use similarity network fusion method to integrate biological information of miRNAs and environmental factors, respectively. In the last, the bi-random walk and multi-label learning method are utilized to identify potential miRNA-environmental factor interactions. In order to evaluate the performance of MEI-BRWMLL, we implement the ten-fold cross validation in the experiment. The MEI-BRWMLL achieves an AUC of 0.8208. It has been shown that MEI-BRWMLL is able to identify known miRNA-environmental factor interactions.
机译:越来越多的证据表明,microRNA(miRNA)在许多疾病中都起着重要作用。环境因子(EFs)可以调节人类组织中miRNA的表达水平。因此,确定潜在的miRNA-环境因子相互作用不仅有助于了解疾病的发病机理,而且有助于疾病的诊断,预后和治疗。在本文中,我们提出了一种计算框架MEI-BRWMLL(基于双随机行走和多标签学习的MiRNA-EF相互作用预测),以识别miRNA与环境因素之间的相互作用。 miRNA的序列和拓扑信息以及结构,解剖治疗化学和环境因子的拓扑信息分别用于测量miRNA和环境因子的相似性。此外,我们使用相似性网络融合方法分别整合miRNA的生物学信息和环境因素。最后,利用双随机行走和多标签学习方法来识别潜在的miRNA与环境因子的相互作用。为了评估MEI-BRWMLL的性能,我们在实验中实施了十倍交叉验证。 MEI-BRWMLL的AUC为0.8208。已经表明,MEI-BRWMLL能够识别已知的miRNA与环境因子的相互作用。

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