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Predicting miRNA-Disease Association Based on Modularity Preserving Heterogeneous Network Embedding

机译:基于模块化保存的异构网络嵌入预测MiRNA疾病关联

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MicroRNAs(miRNAs) are a category of small non-coding RNAs that profoundly impact various biological processes related to human disease. Inferring the potential miRNA-disease associations benefits the study of human diseases, such as disease prevention, disease diagnosis, and drug development. In this work, we propose a novel heterogeneous network embedding-based method called MDN-NMTF (Module-based Dynamic Neighborhood Nonnegative Matrix Tri-Factorization) for predicting miRNA-disease associations. MDN-NMTF constructs a heterogeneous network of disease similarity network, miRNA similarity network and a known miRNA-disease association network. After that, it learns the latent vector representation for miRNAs and diseases in the heterogeneous network. Finally, the association probability is computed by the product of the latent miRNA and disease vectors. MDN-NMTF not only successfully integrates diverse biological information of miRNAs and diseases to predict miRNA-disease associations, but also considers the module properties of miRNAs and diseases in the course of learning vector representation, which can maximally preserver the heterogeneous network structural information and the network properties. At the same time, we also extend MDN-NMTF to a new version (called MDN-NMTF2) by using the modular information to improve the miRNA-disease association prediction ability. Our methods and the other four existing methods are applied to predict miRNA-disease associations in four databases. The prediction results show that our methods can improve the miRNA-disease association prediction to a high level compared with the four existing methods.
机译:Micrornas(miRNA)是一类小型非编码RNA,其深刻地影响与人类疾病有关的各种生物过程。推断潜在的miRNA病关联有利于对人类疾病的研究,例如疾病预防,疾病诊断和药物开发。在这项工作中,我们提出了一种新的基于非均质网络嵌入的方法,称为MDN-NMTF(基于模块的动态邻域非环境非负面矩阵三分化),用于预测miRNA疾病关联。 MDN-NMTF构建异质疾病相似性网络,MiRNA相似性网络和已知的miRNA疾病协会网络。之后,它学习异构网络中miRNA和疾病的潜在载体表示。最后,通过潜在miRNA和疾病载体的产物来计算关联概率。 MDN-NMTF不仅成功地整合了miRNA和疾病的不同生物信息,以预测MiRNA疾病关联,而且还考虑了在学习矢量表示过程中的miRNA和疾病的模块性质,这可以最大限度地预设异构网络结构信息和网络属性。同时,我们还通过使用模块化信息来将MDN-NMTF扩展到新版本(称为MDN-NMTF2),以改善miRNA-疾病关联预测能力。我们的方法和其他四种现有方法用于预测四个数据库中的miRNA疾病关联。预测结果表明,与四种现有方法相比,我们的方法可以将miRNA-疾病关联预测改善到高水平。

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