2013
DOI: 10.1504/ijdmb.2013.056078
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Predicting human microRNA-disease associations based on support vector machine

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 … Show more

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Cited by 218 publications
(114 citation statements)
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“…Another well-known example is that mir-375 can regulate insulin secretion4344. Therefore, identifying disease-related miRNAs is one of the most important goals of biomedical research, which can benefit the understanding of disease pathogenesis at the molecular level, molecular tools design for disease diagnosis, treatment and prevention31323334364546. Searching for disease-miRNA associations form experimental methods is expensive and time-consuming4546.…”
mentioning
confidence: 99%
See 1 more Smart Citation
“…Another well-known example is that mir-375 can regulate insulin secretion4344. Therefore, identifying disease-related miRNAs is one of the most important goals of biomedical research, which can benefit the understanding of disease pathogenesis at the molecular level, molecular tools design for disease diagnosis, treatment and prevention31323334364546. Searching for disease-miRNA associations form experimental methods is expensive and time-consuming4546.…”
mentioning
confidence: 99%
“…Jiang, et al46 and Xu, et al40 extracted different feature vectors and developed the support vector machine classifier to distinguish positive disease miRNAs from negative ones, respectively. As we all known, selecting negative disease-related miRNAs is currently difficult or even impossible.…”
mentioning
confidence: 99%
“…Supervised machine learning approaches for bioinformatics problems have been widely used (Liu et al, 2012;Chen, 2008;Wang and Wu, 2006;Yu et al, 2013;Erdoğdu et al, 2013;Jiang et al, 2013;Rider et al, 2014;Huang, 2013). The problem of identifying splice sites using machine learning techniques has also been addressed, mostly by supervised methods (Baten, et al, 2006;Baten et al, 2007;Sonnenburg et al, 2007;Castelo and Guigó, 2004;Batuwita and Palade, 2012).…”
Section: Related Workmentioning
confidence: 99%
“…Jiang et al adopted the support vector machine (SVM) to predict the associations between miRNAs and diseases. They first extracted a set of features for each positive and negative miRNA-disease association, and then trained the SVM classifier with the constructed features to classify candidate disease-related miRNAs[23]. Chen et al developed RBMMMDA which can not only predict the new associations between miRNAs and diseases, but also obtain the type of corresponding association[24].…”
Section: Introductionmentioning
confidence: 99%