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首页> 外文期刊>Frontiers in Bioengineering and Biotechnology >A Computational Study of Potential miRNA-Disease Association Inference Based on Ensemble Learning and Kernel Ridge Regression
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A Computational Study of Potential miRNA-Disease Association Inference Based on Ensemble Learning and Kernel Ridge Regression

机译:基于集合学习和内核脊回归的潜在miRNA疾病协会推断的计算研究

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As increasing experimental studies have shown that microRNAs (miRNAs) are closely related to multiple biological processes and the prevention, diagnosis and treatment of human diseases, a growing number of researchers are focusing on the identification of associations between miRNAs and diseases. Identifying such associations purely via experiments is costly and demanding, which prompts researchers to develop computational methods to complement the experiments. In this paper, a novel prediction model named Ensemble of Kernel Ridge Regression based MiRNA-Disease Association prediction (EKRRMDA) was developed. EKRRMDA obtained features of miRNAs and diseases by integrating the disease semantic similarity, the miRNA functional similarity and the Gaussian interaction profile kernel similarity for diseases and miRNAs. Under the computational framework that utilized ensemble learning and feature dimensionality reduction, multiple base classifiers that combined two Kernel Ridge Regression classifiers from the miRNA side and disease side, respectively, were obtained based on random selection of features. Then average strategy for these base classifiers was adopted to obtain final association scores of miRNA-disease pairs. In the global and local leave-one-out cross validation, EKRRMDA attained the AUCs of 0.9314 and 0.8618, respectively. Moreover, the model’s average AUC with standard deviation in 5-fold cross validation was 0.9275+/-0.0008. In addition, we implemented three different types of case studies on predicting miRNAs associated with five important diseases. As a result, there were 90% (Esophageal Neoplasms), 86% (Kidney Neoplasms), 86% (Lymphoma), 98% (Lung Neoplasms) and 96% (Breast Neoplasms) of the top 50 predicted miRNAs verified to have associations with these diseases.
机译:随着实验研究的增加表明,微大RNA(miRNA)与多种生物过程和预防,诊断和治疗人类疾病密切相关,越来越多的研究人员专注于麦芽群和疾病之间的关联鉴定。纯粹通过实验识别此类关联是昂贵和要求的,这提示研究人员开发计算方法以补充实验。在本文中,开发了一种名为基于核岭回归基于MiRNA疾病关联预测(EKRRMDA)的新的预测模型。通过整合疾病语义相似性,miRNA功能相似性和高斯互动型核心相似性,获得了miRNA和疾病的特征,疾病和miRNA。在利用集合学习和特征维度降低的计算框架下,基于随机选择特征,获得了组合来自MiRNA侧和疾病侧的两个内核脊回归分类器的多个基本分类器。然后采用了这些基础分类剂的平均策略来获得MiRNA病对的最终协会分数。在全球和地方休假交叉验证中,EKRRMDA分别达到了0.9314和0.8618的AUC。此外,模型的平均AUC具有5倍交叉验证的标准偏差为0.9275 +/- 0.0008。此外,我们实施了三种不同类型的案例研究,可预测与五种重要疾病相关的miRNA。结果,90%(肾上腺瘤),86%(肾瘤),86%(淋巴瘤),98%(肺肿瘤)和96%(乳腺瘤)验证的前50个预测的miRNA有关这些疾病。

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