Improving performance of mammalian microRNA target prediction

<p>Abstract</p> <p>Background</p> <p>MicroRNAs (miRNAs) are single-stranded non-coding RNAs known to regulate a wide range of cellular processes by silencing the gene expression at the protein and/or mRNA levels. Computational prediction of miRNA targets is essential fo...

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Main Authors: Chen Yidong, Yue Dong, Liu Hui, Gao Shou-Jiang, Huang Yufei
Format: Article
Language:English
Published: BMC 2010-09-01
Series:BMC Bioinformatics
Online Access:http://www.biomedcentral.com/1471-2105/11/476
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spelling doaj-a23ca78fbf6e49a8af3c6b49ac0be4732020-11-25T01:06:23ZengBMCBMC Bioinformatics1471-21052010-09-0111147610.1186/1471-2105-11-476Improving performance of mammalian microRNA target predictionChen YidongYue DongLiu HuiGao Shou-JiangHuang Yufei<p>Abstract</p> <p>Background</p> <p>MicroRNAs (miRNAs) are single-stranded non-coding RNAs known to regulate a wide range of cellular processes by silencing the gene expression at the protein and/or mRNA levels. Computational prediction of miRNA targets is essential for elucidating the detailed functions of miRNA. However, the prediction specificity and sensitivity of the existing algorithms are still poor to generate meaningful, workable hypotheses for subsequent experimental testing. Constructing a richer and more reliable training data set and developing an algorithm that properly exploits this data set would be the key to improve the performance current prediction algorithms.</p> <p>Results</p> <p>A comprehensive training data set is constructed for mammalian miRNAs with its positive targets obtained from the most up-to-date miRNA target depository called miRecords and its negative targets derived from 20 microarray data. A new algorithm SVMicrO is developed, which assumes a 2-stage structure including a site support vector machine (SVM) followed by a UTR-SVM. SVMicrO makes prediction based on 21 optimal site features and 18 optimal UTR features, selected by training from a comprehensive collection of 113 site and 30 UTR features. Comprehensive evaluation of SVMicrO performance has been carried out on the training data, proteomics data, and immunoprecipitation (IP) pull-down data. Comparisons with some popular algorithms demonstrate consistent improvements in prediction specificity, sensitivity and precision in all tested cases. All the related materials including source code and genome-wide prediction of human targets are available at <url>http://compgenomics.utsa.edu/svmicro.html</url>.</p> <p>Conclusions</p> <p>A 2-stage SVM based new miRNA target prediction algorithm called SVMicrO is developed. SVMicrO is shown to be able to achieve robust performance. It holds the promise to achieve continuing improvement whenever better training data that contain additional verified or high confidence positive targets and properly selected negative targets are available.</p> http://www.biomedcentral.com/1471-2105/11/476
collection DOAJ
language English
format Article
sources DOAJ
author Chen Yidong
Yue Dong
Liu Hui
Gao Shou-Jiang
Huang Yufei
spellingShingle Chen Yidong
Yue Dong
Liu Hui
Gao Shou-Jiang
Huang Yufei
Improving performance of mammalian microRNA target prediction
BMC Bioinformatics
author_facet Chen Yidong
Yue Dong
Liu Hui
Gao Shou-Jiang
Huang Yufei
author_sort Chen Yidong
title Improving performance of mammalian microRNA target prediction
title_short Improving performance of mammalian microRNA target prediction
title_full Improving performance of mammalian microRNA target prediction
title_fullStr Improving performance of mammalian microRNA target prediction
title_full_unstemmed Improving performance of mammalian microRNA target prediction
title_sort improving performance of mammalian microrna target prediction
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2010-09-01
description <p>Abstract</p> <p>Background</p> <p>MicroRNAs (miRNAs) are single-stranded non-coding RNAs known to regulate a wide range of cellular processes by silencing the gene expression at the protein and/or mRNA levels. Computational prediction of miRNA targets is essential for elucidating the detailed functions of miRNA. However, the prediction specificity and sensitivity of the existing algorithms are still poor to generate meaningful, workable hypotheses for subsequent experimental testing. Constructing a richer and more reliable training data set and developing an algorithm that properly exploits this data set would be the key to improve the performance current prediction algorithms.</p> <p>Results</p> <p>A comprehensive training data set is constructed for mammalian miRNAs with its positive targets obtained from the most up-to-date miRNA target depository called miRecords and its negative targets derived from 20 microarray data. A new algorithm SVMicrO is developed, which assumes a 2-stage structure including a site support vector machine (SVM) followed by a UTR-SVM. SVMicrO makes prediction based on 21 optimal site features and 18 optimal UTR features, selected by training from a comprehensive collection of 113 site and 30 UTR features. Comprehensive evaluation of SVMicrO performance has been carried out on the training data, proteomics data, and immunoprecipitation (IP) pull-down data. Comparisons with some popular algorithms demonstrate consistent improvements in prediction specificity, sensitivity and precision in all tested cases. All the related materials including source code and genome-wide prediction of human targets are available at <url>http://compgenomics.utsa.edu/svmicro.html</url>.</p> <p>Conclusions</p> <p>A 2-stage SVM based new miRNA target prediction algorithm called SVMicrO is developed. SVMicrO is shown to be able to achieve robust performance. It holds the promise to achieve continuing improvement whenever better training data that contain additional verified or high confidence positive targets and properly selected negative targets are available.</p>
url http://www.biomedcentral.com/1471-2105/11/476
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AT liuhui improvingperformanceofmammalianmicrornatargetprediction
AT gaoshoujiang improvingperformanceofmammalianmicrornatargetprediction
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