Literature DB >> 33833899

A Bayesian hierarchical model for analyzing methylated RNA immunoprecipitation sequencing data.

Minzhe Zhang1, Qiwei Li1, Yang Xie1,2,3.   

Abstract

BACKGROUND: The recently emerged technology of methylated RNA immunoprecipitation sequencing (MeRIP-seq) sheds light on the study of RNA epigenetics. This new bioinformatics question calls for effective and robust peaking calling algorithms to detect mRNA methylation sites from MeRIP-seq data.
METHODS: We propose a Bayesian hierarchical model to detect methylation sites from MeRIP-seq data. Our modeling approach includes several important characteristics. First, it models the zero-inflated and over-dispersed counts by deploying a zero-inflated negative binomial model. Second, it incorporates a hidden Markov model (HMM) to account for the spatial dependency of neighboring read enrichment. Third, our Bayesian inference allows the proposed model to borrow strength in parameter estimation, which greatly improves the model stability when dealing with MeRIP-seq data with a small number of replicates. We use Markov chain Monte Carlo (MCMC) algorithms to simultaneously infer the model parameters in a de novo fashion. The R Shiny demo is available at https://qiwei.shinyapps.io/BaySeqPeak and the R/C ++ code is available at https://github.com/liqiwei2000/BaySeqPeak.
RESULTS: In simulation studies, the proposed method outperformed the competing methods exomePeak and MeTPeak, especially when an excess of zeros were present in the data. In real MeRIP-seq data analysis, the proposed method identified methylation sites that were more consistent with biological knowledge, and had better spatial resolution compared to the other methods.
CONCLUSIONS: In this study, we develop a Bayesian hierarchical model to identify methylation peaks in MeRIP-seq data. The proposed method has a competitive edge over existing methods in terms of accuracy, robustness and spatial resolution.

Entities:  

Keywords:  Bayesian inference; MeRIP-seq data; RNA epigenomics; hidden Markov model; zero-inflated negative binomial

Year:  2018        PMID: 33833899      PMCID: PMC8026011          DOI: 10.1007/s40484-018-0149-2

Source DB:  PubMed          Journal:  Quant Biol        ISSN: 2095-4689


  29 in total

1.  Exome-based analysis for RNA epigenome sequencing data.

Authors:  Jia Meng; Xiaodong Cui; Manjeet K Rao; Yidong Chen; Yufei Huang
Journal:  Bioinformatics       Date:  2013-04-14       Impact factor: 6.937

2.  Bayesian Hidden Markov Modeling of Array CGH Data.

Authors:  Subharup Guha; Yi Li; Donna Neuberg
Journal:  J Am Stat Assoc       Date:  2008-06-01       Impact factor: 5.033

3.  Identification of methylated nucleosides in messenger RNA from Novikoff hepatoma cells.

Authors:  R Desrosiers; K Friderici; F Rottman
Journal:  Proc Natl Acad Sci U S A       Date:  1974-10       Impact factor: 11.205

4.  Methylation of nuclear simian virus 40 RNAs.

Authors:  Y Aloni; R Dhar; G Khoury
Journal:  J Virol       Date:  1979-10       Impact factor: 5.103

Review 5.  The dynamic epitranscriptome: N6-methyladenosine and gene expression control.

Authors:  Kate D Meyer; Samie R Jaffrey
Journal:  Nat Rev Mol Cell Biol       Date:  2014-04-09       Impact factor: 94.444

6.  Modified nucleosides and bizarre 5'-termini in mouse myeloma mRNA.

Authors:  J M Adams; S Cory
Journal:  Nature       Date:  1975-05-01       Impact factor: 49.962

7.  Evaluation of statistical methods for normalization and differential expression in mRNA-Seq experiments.

Authors:  James H Bullard; Elizabeth Purdom; Kasper D Hansen; Sandrine Dudoit
Journal:  BMC Bioinformatics       Date:  2010-02-18       Impact factor: 3.169

8.  The fat mass and obesity associated gene (Fto) regulates activity of the dopaminergic midbrain circuitry.

Authors:  Martin E Hess; Simon Hess; Kate D Meyer; Linda A W Verhagen; Linda Koch; Hella S Brönneke; Marcelo O Dietrich; Sabine D Jordan; Yogesh Saletore; Olivier Elemento; Bengt F Belgardt; Thomas Franz; Tamas L Horvath; Ulrich Rüther; Samie R Jaffrey; Peter Kloppenburg; Jens C Brüning
Journal:  Nat Neurosci       Date:  2013-06-30       Impact factor: 24.884

Review 9.  RNA N6-methyladenosine methylation in post-transcriptional gene expression regulation.

Authors:  Yanan Yue; Jianzhao Liu; Chuan He
Journal:  Genes Dev       Date:  2015-07-01       Impact factor: 11.361

10.  Mammalian WTAP is a regulatory subunit of the RNA N6-methyladenosine methyltransferase.

Authors:  Xiao-Li Ping; Bao-Fa Sun; Lu Wang; Wen Xiao; Xin Yang; Wen-Jia Wang; Samir Adhikari; Yue Shi; Ying Lv; Yu-Sheng Chen; Xu Zhao; Ang Li; Ying Yang; Ujwal Dahal; Xiao-Min Lou; Xi Liu; Jun Huang; Wei-Ping Yuan; Xiao-Fan Zhu; Tao Cheng; Yong-Liang Zhao; Xinquan Wang; Jannie M Rendtlew Danielsen; Feng Liu; Yun-Gui Yang
Journal:  Cell Res       Date:  2014-01-10       Impact factor: 25.617

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.