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首页> 外文期刊>Journal of Translational Medicine >MLMDA: a machine learning approach to predict and validate MicroRNA–disease associations by integrating of heterogenous information sources
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MLMDA: a machine learning approach to predict and validate MicroRNA–disease associations by integrating of heterogenous information sources

机译:MLMDA:一种通过整合异类信息源来预测和验证MicroRNA与疾病关联的机器学习方法

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Emerging evidences show that microRNA (miRNA) plays an important role in many human complex diseases. However, considering the inherent time-consuming and expensive of traditional in vitro experiments, more and more attention has been paid to the development of efficient and feasible computational methods to predict the potential associations between miRNA and disease. In this work, we present a machine learning-based model called MLMDA for predicting the association of miRNAs and diseases. More specifically, we first use the k-mer sparse matrix to extract miRNA sequence information, and combine it with miRNA functional similarity, disease semantic similarity and Gaussian interaction profile kernel similarity information. Then, more representative features are extracted from them through deep auto-encoder neural network (AE). Finally, the random forest classifier is used to effectively predict potential miRNA–disease associations. The experimental results show that the MLMDA model achieves promising performance under fivefold cross validations with AUC values of 0.9172, which is higher than the methods using different classifiers or different feature combination methods mentioned in this paper. In addition, to further evaluate the prediction performance of MLMDA model, case studies are carried out with three Human complex diseases including Lymphoma, Lung Neoplasm, and Esophageal Neoplasms. As a result, 39, 37 and 36 out of the top 40 predicted miRNAs are confirmed by other miRNA–disease association databases. These prominent experimental results suggest that the MLMDA model could serve as a useful tool guiding the future experimental validation for those promising miRNA biomarker candidates. The source code and datasets explored in this work are available at http://220.171.34.3:81/ .
机译:新兴证据表明,microRNA(miRNA)在许多人类复杂疾病中起着重要作用。但是,考虑到传统体外实验固有的耗时和昂贵的特性,人们越来越关注开发有效和可行的计算方法来预测miRNA与疾病之间的潜在关联。在这项工作中,我们提出了一种基于机器学习的模型,称为MLMDA,用于预测miRNA与疾病的关联。更具体地说,我们首先使用k-mer稀疏矩阵提取miRNA序列信息,并将其与miRNA功能相似性,疾病语义相似性和高斯交互作用谱内核相似性信息相结合。然后,通过深度自动编码器神经网络(AE)从这些特征中提取更多具有代表性的特征。最后,随机森林分类器用于有效预测潜在的miRNA-疾病关联。实验结果表明,MLMDA模型在五次交叉验证下具有令人满意的性能,AUC值为0.9172,高于本文中提到的使用不同分类器或不同特征组合方法的方法。此外,为了进一步评估MLMDA模型的预测性能,对三种人类复杂疾病(包括淋巴瘤,肺肿瘤和食道肿瘤)进行了案例研究。结果,在其他40种预测的miRNA中,有39种,37种和36种被其他miRNA疾病关联数据库证实。这些突出的实验结果表明,MLMDA模型可以作为指导那些有前途的miRNA生物标志物候选者进行未来实验验证的有用工具。可在http://220.171.34.3:81/上找到本工作中探讨的源代码和数据集。

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