Literature DB >> 28575488

A deep boosting based approach for capturing the sequence binding preferences of RNA-binding proteins from high-throughput CLIP-seq data.

Shuya Li1, Fanghong Dong2, Yuexin Wu2,3, Sai Zhang2, Chen Zhang2, Xiao Liu1, Tao Jiang4,5, Jianyang Zeng2.   

Abstract

Characterizing the binding behaviors of RNA-binding proteins (RBPs) is important for understanding their functional roles in gene expression regulation. However, current high-throughput experimental methods for identifying RBP targets, such as CLIP-seq and RNAcompete, usually suffer from the false negative issue. Here, we develop a deep boosting based machine learning approach, called DeBooster, to accurately model the binding sequence preferences and identify the corresponding binding targets of RBPs from CLIP-seq data. Comprehensive validation tests have shown that DeBooster can outperform other state-of-the-art approaches in RBP target prediction. In addition, we have demonstrated that DeBooster may provide new insights into understanding the regulatory functions of RBPs, including the binding effects of the RNA helicase MOV10 on mRNA degradation, the potentially different ADAR1 binding behaviors related to its editing activity, as well as the antagonizing effect of RBP binding on miRNA repression. Moreover, DeBooster may provide an effective index to investigate the effect of pathogenic mutations in RBP binding sites, especially those related to splicing events. We expect that DeBooster will be widely applied to analyze large-scale CLIP-seq experimental data and can provide a practically useful tool for novel biological discoveries in understanding the regulatory mechanisms of RBPs. The source code of DeBooster can be downloaded from http://github.com/dongfanghong/deepboost.
© The Author(s) 2017. Published by Oxford University Press on behalf of Nucleic Acids Research.

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Year:  2017        PMID: 28575488      PMCID: PMC5737578          DOI: 10.1093/nar/gkx492

Source DB:  PubMed          Journal:  Nucleic Acids Res        ISSN: 0305-1048            Impact factor:   16.971


  63 in total

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Journal:  Mol Cell       Date:  2015-10-01       Impact factor: 17.970

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  5 in total

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3.  Prediction of mRNA subcellular localization using deep recurrent neural networks.

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4.  ProbeRating: a recommender system to infer binding profiles for nucleic acid-binding proteins.

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5.  PRIME-3D2D is a 3D2D model to predict binding sites of protein-RNA interaction.

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Journal:  Commun Biol       Date:  2020-07-16
  5 in total

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