Literature DB >> 22988280

Bayesian analysis of RNA sequencing data by estimating multiple shrinkage priors.

Mark A Van De Wiel1, Gwenaël G R Leday, Luba Pardo, Håvard Rue, Aad W Van Der Vaart, Wessel N Van Wieringen.   

Abstract

Next generation sequencing is quickly replacing microarrays as a technique to probe different molecular levels of the cell, such as DNA or RNA. The technology provides higher resolution, while reducing bias. RNA sequencing results in counts of RNA strands. This type of data imposes new statistical challenges. We present a novel, generic approach to model and analyze such data. Our approach aims at large flexibility of the likelihood (count) model and the regression model alike. Hence, a variety of count models is supported, such as the popular NB model, which accounts for overdispersion. In addition, complex, non-balanced designs and random effects are accommodated. Like some other methods, our method provides shrinkage of dispersion-related parameters. However, we extend it by enabling joint shrinkage of parameters, including those for which inference is desired. We argue that this is essential for Bayesian multiplicity correction. Shrinkage is effectuated by empirically estimating priors. We discuss several parametric (mixture) and non-parametric priors and develop procedures to estimate (parameters of) those. Inference is provided by means of local and Bayesian false discovery rates. We illustrate our method on several simulations and two data sets, also to compare it with other methods. Model- and data-based simulations show substantial improvements in the sensitivity at the given specificity. The data motivate the use of the ZI-NB as a powerful alternative to the NB, which results in higher detection rates for low-count data. Finally, compared with other methods, the results on small sample subsets are more reproducible when validated on their large sample complements, illustrating the importance of the type of shrinkage.

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Year:  2012        PMID: 22988280     DOI: 10.1093/biostatistics/kxs031

Source DB:  PubMed          Journal:  Biostatistics        ISSN: 1465-4644            Impact factor:   5.899


  55 in total

1.  Gene Network Reconstruction using Global-Local Shrinkage Priors.

Authors:  Gwenaël G R Leday; Mathisca C M de Gunst; Gino B Kpogbezan; Aad W van der Vaart; Wessel N van Wieringen; Mark A van de Wiel
Journal:  Ann Appl Stat       Date:  2017-03       Impact factor: 2.083

Review 2.  RNA-Seq technology and its application in fish transcriptomics.

Authors:  Xi Qian; Yi Ba; Qianfeng Zhuang; Guofang Zhong
Journal:  OMICS       Date:  2013-12-31

3.  Count-based differential expression analysis of RNA sequencing data using R and Bioconductor.

Authors:  Simon Anders; Davis J McCarthy; Yunshun Chen; Michal Okoniewski; Gordon K Smyth; Wolfgang Huber; Mark D Robinson
Journal:  Nat Protoc       Date:  2013-08-22       Impact factor: 13.491

4.  Robustly detecting differential expression in RNA sequencing data using observation weights.

Authors:  Xiaobei Zhou; Helen Lindsay; Mark D Robinson
Journal:  Nucleic Acids Res       Date:  2014-04-20       Impact factor: 16.971

5.  PairedFB: a full hierarchical Bayesian model for paired RNA-seq data with heterogeneous treatment effects.

Authors:  Yuanyuan Bian; Chong He; Jie Hou; Jianlin Cheng; Jing Qiu
Journal:  Bioinformatics       Date:  2019-03-01       Impact factor: 6.937

6.  Recurrent deletions of IKZF1 in pediatric acute myeloid leukemia.

Authors:  Jasmijn D E de Rooij; Eva Beuling; Marry M van den Heuvel-Eibrink; Askar Obulkasim; André Baruchel; Jan Trka; Dirk Reinhardt; Edwin Sonneveld; Brenda E S Gibson; Rob Pieters; Martin Zimmermann; C Michel Zwaan; Maarten Fornerod
Journal:  Haematologica       Date:  2015-06-11       Impact factor: 9.941

7.  Gene expression variability and the analysis of large-scale RNA-seq studies with the MDSeq.

Authors:  Di Ran; Z John Daye
Journal:  Nucleic Acids Res       Date:  2017-07-27       Impact factor: 16.971

8.  Biomarker detection and categorization in ribonucleic acid sequencing meta-analysis using Bayesian hierarchical models.

Authors:  Tianzhou Ma; Faming Liang; George Tseng
Journal:  J R Stat Soc Ser C Appl Stat       Date:  2016-12-16       Impact factor: 1.864

9.  Differential expression analysis for RNAseq using Poisson mixed models.

Authors:  Shiquan Sun; Michelle Hood; Laura Scott; Qinke Peng; Sayan Mukherjee; Jenny Tung; Xiang Zhou
Journal:  Nucleic Acids Res       Date:  2017-06-20       Impact factor: 16.971

10.  DiPhiSeq: robust comparison of expression levels on RNA-Seq data with large sample sizes.

Authors:  Jun Li; Alicia T Lamere
Journal:  Bioinformatics       Date:  2019-07-01       Impact factor: 6.937

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