Author:
Reboiro-Jato Miguel,Pérez-Rodríguez Daniel,Da Silva Miguel José,Vila-Fernández David,Vieira Cristina P.,Vieira Jorge,López-Fernández Hugo
Abstract
Abstract
Background
The initial version of SEDA assists life science researchers without programming skills with the preparation of DNA and protein sequence FASTA files for multiple bioinformatics applications. However, the initial version of SEDA lacks a command-line interface for more advanced users and does not allow the creation of automated analysis pipelines.
Results
The present paper discusses the updates of the new SEDA release, including the addition of a complete command-line interface, new functionalities like gene annotation, a framework for automated pipelines, and improved integration in Linux environments.
Conclusion
SEDA is an open-source Java application and can be installed using the different distributions available (https://www.sing-group.org/seda/download.html) as well as through a Docker image (https://hub.docker.com/r/pegi3s/seda). It is released under a GPL-3.0 license, and its source code is publicly accessible on GitHub (https://github.com/sing-group/seda). The software version at the time of submission is archived at Zenodo (version v1.6.0, http://doi.org/10.5281/zenodo.10201605).
Funder
Consellería de Educación, Universidades e Formación Profesional
Xunta de Galicia
Fundação para a Ciência e a Tecnologia
Publisher
Springer Science and Business Media LLC
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