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R package for the RNA Centric Annotation System (RCAS)

R 94.35% HTML 5.65%
bioconductor interactive-plots par-clip cage rna modification reporting msigdb go protein-rna-interactions motif-discovery coverage-distribution

rcas's Introduction

RCAS project

Build Status codecov.io

Introduction

RCAS is an R/Bioconductor package designed as a generic reporting tool for the functional analysis of transcriptome-wide regions of interest detected by high-throughput experiments. Such transcriptomic regions could be, for instance, signal peaks detected by CLIP-Seq analysis for protein-RNA interaction sites, RNA modification sites (alias the epitranscriptome), CAGE-tag locations, or any other collection of query regions at the level of the transcriptome. RCAS produces in-depth annotation summaries and coverage profiles based on the distribution of the query regions with respect to transcript features (exons, introns, 5โ€™/3โ€™ UTR regions, exon-intron boundaries, promoter regions). Moreover, RCAS can carry out functional enrichment analyses and discriminative motif discovery. RCAS supports all genome versions that are available in BSgenome::available.genomes

installation:

Installing from Bioconductor

if (!requireNamespace("BiocManager", quietly=TRUE)) install.packages("BiocManager")

BiocManager::install('RCAS')

Installing the development version from Github

library('devtools')
devtools::install_github('BIMSBbioinfo/RCAS')

Installing via Bioconda channel

conda install bioconductor-rcas -c bioconda

Installing via Guix

guix package -i r r-rcas

usage:

Package vignettes and reference manual

For detailed instructions on how to use RCAS, please see:

Use cases from published RNA-based omics datasets

Multi-sample analysis use case

Single Sample Analysis Use Cases

Citation

In order to cite RCAS, please use:

Bora Uyar, Dilmurat Yusuf, Ricardo Wurmus, Nikolaus Rajewsky, Uwe Ohler, Altuna Akalin; RCAS: an RNA centric annotation system for transcriptome-wide regions of interest. Nucleic Acids Res 2017 gkx120. doi: 10.1093/nar/gkx120

See our publication here.

Acknowledgements

RCAS is developed in the group of Altuna Akalin (head of the Scientific Bioinformatics Platform) by Bora Uyar (Bioinformatics Scientist), Dilmurat Yusuf (Bioinformatics Scientist) and Ricardo Wurmus (System Administrator) at the Berlin Institute of Medical Systems Biology (BIMSB) at the Max-Delbrueck-Center for Molecular Medicine (MDC) in Berlin.

RCAS is developed as a bioinformatics service as part of the RNA Bioinformatics Center, which is one of the eight centers of the German Network for Bioinformatics Infrastructure (de.NBI).

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