Abstract
The wide range of RNA-seq applications and their high-computational needs require the development of pipelines orchestrating the entire workflow and optimizing usage of available computational resources. We present aRNApipe, a project-oriented pipeline for processing of RNA-seq data in high-performance cluster environments. aRNApipe is highly modular and can be easily migrated to any high-performance computing (HPC) environment. The current applications included in aRNApipe combine the essential RNA-seq primary analyses, including quality control metrics, transcript alignment, count generation, transcript fusion identification, alternative splicing and sequence variant calling. aRNApipe is project-oriented and dynamic so users can easily update analyses to include or exclude samples or enable additional processing modules. Workflow parameters are easily set using a single configuration file that provides centralized tracking of all analytical processes. Finally, aRNApipe incorporates interactive web reports for sample tracking and a tool for managing the genome assemblies available to perform an analysis.
Cite
CITATION STYLE
Alonso, A., Lasseigne, B. N., Williams, K., Nielsen, J., Ramaker, R. C., Hardigan, A. A., … Myers, R. M. (2017). ARNApipe: A balanced, efficient and distributed pipeline for processing RNA-seq data in high-performance computing environments. Bioinformatics, 33(11), 1727–1729. https://doi.org/10.1093/bioinformatics/btx023
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