
AbstractMotivationThe post-transcriptional epigenetic modification on mRNA is an emerging field to study the gene regulatory mechanism and their association with diseases. Recently developed high-throughput sequencing technology named Methylated RNA Immunoprecipitation Sequencing (MeRIP-seq) enables one to profile mRNA epigenetic modification transcriptome wide. A few computational methods are available to identify transcriptome-wide mRNA modification, but they are either limited by over-simplified model ignoring the biological variance across replicates or suffer from low accuracy and efficiency.ResultsIn this work, we develop a novel statistical method, based on an empirical Bayesian hierarchical model, to identify mRNA epigenetic modification regions from MeRIP-seq data. Our method accounts for various sources of variations in the data through rigorous modeling and applies shrinkage estimation by borrowing information from transcriptome-wide data to stabilize the parameter estimation. Simulation and real data analyses demonstrate that our method is more accurate, robust and efficient than the existing peak calling methods.Availability and implementationOur method TRES is implemented as an R package and is freely available on Github at https://github.com/ZhenxingGuo0015/TRES.Supplementary informationSupplementary data are available at Bioinformatics online.
Sequence Analysis, RNA, RNA, Immunoprecipitation, Bayes Theorem, RNA, Messenger, Methylation
Sequence Analysis, RNA, RNA, Immunoprecipitation, Bayes Theorem, RNA, Messenger, Methylation
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