2020-11-11T11:23:28Z
2020-11-11T11:23:28Z
2019-03-09
2020-11-11T11:23:28Z
Motivation: Developing a robust and performant data analysis workflow that integrates all necessary components whilst still being able to scale over multiple compute nodes is a challenging task. We introduce a generic method based on the microservice architecture, where software tools are encapsulated as Docker containers that can be connected into scientific workflows and executed using the Kubernetes container orchestrator. Results: We developed a Virtual Research Environment (VRE) which facilitates rapid integration of new tools and developing scalable and interoperable workflows for performing metabolomics data analysis. The environment can be launched on-demand on cloud resources and desktop computers. IT-expertise requirements on the user side are kept to a minimum, and workflows can be re-used effortlessly by any novice user. We validate our method in the field of metabolomics on two mass spectrometry, one nuclear magnetic resonance spectroscopy and one fluxomics study. We showed that the method scales dynamically with increasing availability of computational resources. We demonstrated that the method facilitates interoperability using integration of the major software suites resulting in a turn-key workflow encompassing all steps for massspectrometry-based metabolomics including preprocessing, statistics and identification. Microservices is a generic methodology that can serve any scientific discipline and opens up for new types of large-scale integrative science. Availability and implementation: The PhenoMeNal consortium maintains a web portal (https://por tal.phenomenal-h2020.eu) providing a GUI for launching the Virtual Research Environment. The GitHub repository https://github.com/phnmnl/ hosts the source code of all projects.
Article
Published version
English
Espectrometria de masses; Interoperabilitat en xarxes d'ordinadors; Programari; Mass spectrometry; Internetworking (Telecommunication); Computer software
Oxford University Press
Reproducció del document publicat a: https://doi.org/10.1093/bioinformatics/btz160
Bioinformatics, 2019, vol. 35, num. 19, p. 3752-3760
https://doi.org/10.1093/bioinformatics/btz160
info:eu-repo/grantAgreement/EC/H2020/654241/EU//PhenoMeNal
cc-by (c) Emami Khoonsari, Payam et al., 2019
http://creativecommons.org/licenses/by/3.0/es/