Predicting human microRNA-disease associations based on support vector machine

Qinghua Jiang, Guohua Wang, Tianjiao Zhang, Yadong Wang
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引用次数: 197

Abstract

The identification of disease-related microRNAs is vital for understanding the pathogenesis of disease at the molecular level and may lead to the design of specific molecular tools for diagnosis, treatment and prevention. Experimental identification of disease-related microRNAs poses difficulties. Computational prediction of microRNA-disease associations is one of the complementary means. However, one major issue in microRNA studies is the lack of bioinformatics programs to accurately predict microRNA-disease associations. Herein, we present a machine learning-based approach for distinguishing positive microRNA-disease associations from negative microRNA-disease associations. A set of features was extracted for each positive and negative microRNA-disease association, and a support vector machine (SVM) classifier was trained, which achieved the area under the ROC curve of up to 0.8884 in 10-fold cross-validation procedure, indicating that the SVM-based approach described here can be used to predict potential microRNA-disease associations and formulate testable hypotheses to guide future biological experiments.
基于支持向量机的人类微rna -疾病关联预测
疾病相关microrna的鉴定对于在分子水平上理解疾病的发病机制至关重要,并可能导致设计用于诊断、治疗和预防的特定分子工具。疾病相关microrna的实验鉴定存在困难。微rna与疾病关联的计算预测是一种补充手段。然而,microRNA研究中的一个主要问题是缺乏准确预测microRNA与疾病关联的生物信息学程序。在此,我们提出了一种基于机器学习的方法来区分阳性microrna -疾病关联和阴性microrna -疾病关联。对每一种阳性和阴性microrna -疾病关联提取一组特征,并训练支持向量机(SVM)分类器,在10倍交叉验证过程中实现了高达0.8884的ROC曲线下面积,表明本文基于支持向量机的方法可用于预测潜在的microrna -疾病关联,并提出可检验的假设,指导未来的生物学实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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