BMC Bioinformatics (Dec 2019)

BISR-RNAseq: an efficient and scalable RNAseq analysis workflow with interactive report generation

  • Venkat Sundar Gadepalli,
  • Hatice Gulcin Ozer,
  • Ayse Selen Yilmaz,
  • Maciej Pietrzak,
  • Amy Webb

DOI
https://doi.org/10.1186/s12859-019-3251-1
Journal volume & issue
Vol. 20, no. S24
pp. 1 – 7

Abstract

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Abstract Background RNA sequencing has become an increasingly affordable way to profile gene expression patterns. Here we introduce a workflow implementing several open-source softwares that can be run on a high performance computing environment. Results Developed as a tool by the Bioinformatics Shared Resource Group (BISR) at the Ohio State University, we have applied the pipeline to a few publicly available RNAseq datasets downloaded from GEO in order to demonstrate the feasibility of this workflow. Source code is available here: workflow: https://code.bmi.osumc.edu/gadepalli.3/BISR-RNAseq-ICIBM2019 and shiny: https://code.bmi.osumc.edu/gadepalli.3/BISR_RNASeq_ICIBM19. Example dataset is demonstrated here: https://dataportal.bmi.osumc.edu/RNA_Seq/. Conclusion The workflow allows for the analysis (alignment, QC, gene-wise counts generation) of raw RNAseq data and seamless integration of quality analysis and differential expression results into a configurable R shiny web application.

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