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© Research
Publication : Computational and structural biotechnology journal

Developing and reusing bioinformatics data analysis pipelines using scientific workflow systems.

Scientific Fields
Diseases
Organisms
Applications
Technique

Published in Computational and structural biotechnology journal - 01 Jan 2023

Djaffardjy M, Marchment G, Sebe C, Blanchet R, Bellajhame K, Gaignard A, Lemoine F, Cohen-Boulakia S,

Link to Pubmed [PMID] – 36968012

Link to DOI – 10.1016/j.csbj.2023.03.003

Comput Struct Biotechnol J 2023 ; 21(): 2075-2085

Data analysis pipelines are now established as an effective means for specifying and executing bioinformatics data analysis and experiments. While scripting languages, particularly Python, R and notebooks, are popular and sufficient for developing small-scale pipelines that are often intended for a single user, it is now widely recognized that they are by no means enough to support the development of large-scale, shareable, maintainable and reusable pipelines capable of handling large volumes of data and running on high performance computing clusters. This review outlines the key requirements for building large-scale data pipelines and provides a mapping of existing solutions that fulfill them. We then highlight the benefits of using scientific workflow systems to get modular, reproducible and reusable bioinformatics data analysis pipelines. We finally discuss current workflow reuse practices based on an empirical study we performed on a large collection of workflows.