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RED-ML: a novel, effective RNA editing detection method based on machine learning

With the advancement of second generation sequencing techniques, our ability to detect and quantify RNA editing on a global scale has been vastly improved. As a result, RNA editing is now being studied under a growing number of biological conditions so that its biochemical mechanisms and functional...

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Autores principales: Xiong, Heng, Liu, Dongbing, Li, Qiye, Lei, Mengyue, Xu, Liqin, Wu, Liang, Wang, Zongji, Ren, Shancheng, Li, Wangsheng, Xia, Min, Lu, Lihua, Lu, Haorong, Hou, Yong, Zhu, Shida, Liu, Xin, Sun, Yinghao, Wang, Jian, Yang, Huanming, Wu, Kui, Xu, Xun, Lee, Leo J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5467039/
https://www.ncbi.nlm.nih.gov/pubmed/28328004
http://dx.doi.org/10.1093/gigascience/gix012
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author Xiong, Heng
Liu, Dongbing
Li, Qiye
Lei, Mengyue
Xu, Liqin
Wu, Liang
Wang, Zongji
Ren, Shancheng
Li, Wangsheng
Xia, Min
Lu, Lihua
Lu, Haorong
Hou, Yong
Zhu, Shida
Liu, Xin
Sun, Yinghao
Wang, Jian
Yang, Huanming
Wu, Kui
Xu, Xun
Lee, Leo J.
author_facet Xiong, Heng
Liu, Dongbing
Li, Qiye
Lei, Mengyue
Xu, Liqin
Wu, Liang
Wang, Zongji
Ren, Shancheng
Li, Wangsheng
Xia, Min
Lu, Lihua
Lu, Haorong
Hou, Yong
Zhu, Shida
Liu, Xin
Sun, Yinghao
Wang, Jian
Yang, Huanming
Wu, Kui
Xu, Xun
Lee, Leo J.
author_sort Xiong, Heng
collection PubMed
description With the advancement of second generation sequencing techniques, our ability to detect and quantify RNA editing on a global scale has been vastly improved. As a result, RNA editing is now being studied under a growing number of biological conditions so that its biochemical mechanisms and functional roles can be further understood. However, a major barrier that prevents RNA editing from being a routine RNA-seq analysis, similar to gene expression and splicing analysis, for example, is the lack of user-friendly and effective computational tools. Based on years of experience of analyzing RNA editing using diverse RNA-seq datasets, we have developed a software tool, RED-ML: RNA Editing Detection based on Machine learning (pronounced as “red ML”). The input to RED-ML can be as simple as a single BAM file, while it can also take advantage of matched genomic variant information when available. The output not only contains detected RNA editing sites, but also a confidence score to facilitate downstream filtering. We have carefully designed validation experiments and performed extensive comparison and analysis to show the efficiency and effectiveness of RED-ML under different conditions, and it can accurately detect novel RNA editing sites without relying on curated RNA editing databases. We have also made this tool freely available via GitHub <https://github.com/BGIRED/RED-ML>. We have developed a highly accurate, speedy and general-purpose tool for RNA editing detection using RNA-seq data. With the availability of RED-ML, it is now possible to conveniently make RNA editing a routine analysis of RNA-seq. We believe this can greatly benefit the RNA editing research community and has profound impact to accelerate our understanding of this intriguing posttranscriptional modification process.
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spelling pubmed-54670392017-06-19 RED-ML: a novel, effective RNA editing detection method based on machine learning Xiong, Heng Liu, Dongbing Li, Qiye Lei, Mengyue Xu, Liqin Wu, Liang Wang, Zongji Ren, Shancheng Li, Wangsheng Xia, Min Lu, Lihua Lu, Haorong Hou, Yong Zhu, Shida Liu, Xin Sun, Yinghao Wang, Jian Yang, Huanming Wu, Kui Xu, Xun Lee, Leo J. Gigascience Technical Note With the advancement of second generation sequencing techniques, our ability to detect and quantify RNA editing on a global scale has been vastly improved. As a result, RNA editing is now being studied under a growing number of biological conditions so that its biochemical mechanisms and functional roles can be further understood. However, a major barrier that prevents RNA editing from being a routine RNA-seq analysis, similar to gene expression and splicing analysis, for example, is the lack of user-friendly and effective computational tools. Based on years of experience of analyzing RNA editing using diverse RNA-seq datasets, we have developed a software tool, RED-ML: RNA Editing Detection based on Machine learning (pronounced as “red ML”). The input to RED-ML can be as simple as a single BAM file, while it can also take advantage of matched genomic variant information when available. The output not only contains detected RNA editing sites, but also a confidence score to facilitate downstream filtering. We have carefully designed validation experiments and performed extensive comparison and analysis to show the efficiency and effectiveness of RED-ML under different conditions, and it can accurately detect novel RNA editing sites without relying on curated RNA editing databases. We have also made this tool freely available via GitHub <https://github.com/BGIRED/RED-ML>. We have developed a highly accurate, speedy and general-purpose tool for RNA editing detection using RNA-seq data. With the availability of RED-ML, it is now possible to conveniently make RNA editing a routine analysis of RNA-seq. We believe this can greatly benefit the RNA editing research community and has profound impact to accelerate our understanding of this intriguing posttranscriptional modification process. Oxford University Press 2017-03-02 /pmc/articles/PMC5467039/ /pubmed/28328004 http://dx.doi.org/10.1093/gigascience/gix012 Text en © The Author 2017. Published by Oxford University Press. http://creativecommons.org/licenses/by/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Technical Note
Xiong, Heng
Liu, Dongbing
Li, Qiye
Lei, Mengyue
Xu, Liqin
Wu, Liang
Wang, Zongji
Ren, Shancheng
Li, Wangsheng
Xia, Min
Lu, Lihua
Lu, Haorong
Hou, Yong
Zhu, Shida
Liu, Xin
Sun, Yinghao
Wang, Jian
Yang, Huanming
Wu, Kui
Xu, Xun
Lee, Leo J.
RED-ML: a novel, effective RNA editing detection method based on machine learning
title RED-ML: a novel, effective RNA editing detection method based on machine learning
title_full RED-ML: a novel, effective RNA editing detection method based on machine learning
title_fullStr RED-ML: a novel, effective RNA editing detection method based on machine learning
title_full_unstemmed RED-ML: a novel, effective RNA editing detection method based on machine learning
title_short RED-ML: a novel, effective RNA editing detection method based on machine learning
title_sort red-ml: a novel, effective rna editing detection method based on machine learning
topic Technical Note
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5467039/
https://www.ncbi.nlm.nih.gov/pubmed/28328004
http://dx.doi.org/10.1093/gigascience/gix012
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