TY - JOUR
T1 - Guidance framework to apply best practices in ecological data analysis
T2 - lessons learned from building Galaxy-Ecology
AU - Royaux, Coline
AU - Mihoub, Jean Baptiste
AU - The Galaxy-E community
AU - Jossé, Marie
AU - Pelletier, Dominique
AU - Norvez, Olivier
AU - Reecht, Yves
AU - Fouilloux, Anne
AU - Rasche, Helena
AU - Hiltemann, Saskia
AU - Batut, Bérénice
AU - Marc, Eléaume
AU - Seguineau, Pauline
AU - Massé, Guillaume
AU - Amossé, Alan
AU - Bissery, Claire
AU - Lorrilliere, Romain
AU - Martin, Alexis
AU - Bas, Yves
AU - Virgoulay, Thimothée
AU - Chambon, Valentin
AU - Arnaud, Elie
AU - Michon, Elisa
AU - Urfer, Clara
AU - Trigodet, Eloïse
AU - Delannoy, Marie
AU - Loïs, Gregoire
AU - Julliard, Romain
AU - Grüning, Björn
AU - Le Bras, Yvan
N1 - Publisher Copyright: © 2025 The Author(s). Published by Oxford University Press GigaScience.
PY - 2025
Y1 - 2025
N2 - Numerous conceptual frameworks exist for best practices in research data and analysis (e.g., Open Science and FAIR principles). In practice, there is a need for further progress to improve transparency, reproducibility, and confidence in ecology. Here, we propose a practical and operational framework for researchers and experts in ecology to achieve best practices for building analytical procedures from individual research projects to production-level analytical pipelines. We introduce the concept of atomization to identify analytical steps that support generalization by allowing us to go beyond single analyses. The term atomization is employed to convey the idea of single analytical steps as "atoms"composing an analytical procedure. When generalized, "atoms"can be used in more than a single case analysis. These guidelines were established during the development of the Galaxy-Ecology initiative, a web platform dedicated to data analysis in ecology. Galaxy-Ecology allows us to demonstrate a way to reach higher levels of reproducibility in ecological sciences by increasing the accessibility and reusability of analytical workflows once atomized and generalized.
AB - Numerous conceptual frameworks exist for best practices in research data and analysis (e.g., Open Science and FAIR principles). In practice, there is a need for further progress to improve transparency, reproducibility, and confidence in ecology. Here, we propose a practical and operational framework for researchers and experts in ecology to achieve best practices for building analytical procedures from individual research projects to production-level analytical pipelines. We introduce the concept of atomization to identify analytical steps that support generalization by allowing us to go beyond single analyses. The term atomization is employed to convey the idea of single analytical steps as "atoms"composing an analytical procedure. When generalized, "atoms"can be used in more than a single case analysis. These guidelines were established during the development of the Galaxy-Ecology initiative, a web platform dedicated to data analysis in ecology. Galaxy-Ecology allows us to demonstrate a way to reach higher levels of reproducibility in ecological sciences by increasing the accessibility and reusability of analytical workflows once atomized and generalized.
UR - https://www.scopus.com/pages/publications/85218831138
U2 - 10.1093/gigascience/giae122
DO - 10.1093/gigascience/giae122
M3 - Review article
C2 - 39937595
AN - SCOPUS:85218831138
SN - 2047-217X
VL - 14
JO - GigaScience
JF - GigaScience
M1 - giae122
ER -