Guidance framework to apply good practices in ecological data analysis: Lessons learned from building Galaxy-Ecology

Coline ROYAUX,Jean-Baptiste Mihoub, Marie Jossé,Dominique Pelletier,Olivier Norvez, Yves Reecht,Anne Fouilloux,Helena Rasche,Saskia Hiltemann,Bérénice Batut,Marc Eléaume, Pauline Seguineau, Guillaume Massé, Alan Amossé, Claire Bissery,Romain Lorrilliere,Alexis Martin,Yves Bas, Thimothée Virgoulay, Valentin Chambon,Elie Arnaud, Elisa Michon, Clara Urfer, Eloïse Trigodet, Marie Delannoy,Gregoire Loïs,Romain Julliard,Björn Grüning,Yvan Le Bras

crossref(2024)

引用 0|浏览9
暂无评分
摘要
Numerous conceptual frameworks exist for good 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 to achieve good practices for building analytical procedures based on atomisation and generalisation. We introduce the concept of atomisation to identify analytical steps which support generalisation by allowing us to go beyond single analyses. 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 atomised and generalised.
更多
查看译文
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要