palaeoverse: A community‐driven R package to support palaeobiological analysis

Author:

Jones Lewis A.1ORCID,Gearty William2ORCID,Allen Bethany J.34ORCID,Eichenseer Kilian5ORCID,Dean Christopher D.6ORCID,Galván Sofía1ORCID,Kouvari Miranta67ORCID,Godoy Pedro L.89ORCID,Nicholl Cecily S. C.6ORCID,Buffan Lucas10ORCID,Dillon Erin M.1112ORCID,Flannery‐Sutherland Joseph T.13ORCID,Chiarenza Alfio Alessandro1ORCID

Affiliation:

1. Grupo de Ecoloxía Animal, Departamento de Ecoloxía e Bioloxía Animal Universidade de Vigo Vigo Spain

2. Division of Paleontology American Museum of Natural History New York New York USA

3. Department of Biosystems Science and Engineering ETH Zürich Basel Switzerland

4. Computational Evolution Group Swiss Institute of Bioinformatics Lausanne Switzerland

5. Department of Earth Sciences Durham University Durham UK

6. Department of Earth Sciences University College London London UK

7. Life Sciences Department Natural History Museum London UK

8. Laboratório de Paleontologia, Faculdade de Filosofia, Ciências e Letras de Ribeirão Preto Universidade de São Paulo Ribeirão Preto SP Brazil

9. Department of Anatomical Sciences Stony Brook University Stony Brook New York USA

10. Département de Biologie, École Normale Supérieure de Lyon Université Claude Bernard Lyon 1 Lyon Cedex 07 France

11. Smithsonian Tropical Research Institute Balboa Republic of Panama

12. Department of Ecology, Evolution, and Marine Biology University of California Santa Barbara California USA

13. School of Earth Sciences University of Bristol Bristol UK

Abstract

Abstract The open‐source programming language ‘R' has become a standard tool in the palaeobiologist's toolkit. Its popularity within the palaeobiological community continues to grow, with published articles increasingly citing the usage of R and R packages. However, there are currently a lack of agreed standards for data preparation and available frameworks to support the implementation of such standards. Consequently, data preparation workflows are often unclear and not reproducible, even when code is provided. Moreover, due to a lack of code accessibility and documentation, palaeobiologists are often forced to ‘reinvent the wheel’ to find solutions to issues already solved by other members of the community. Here, we introduce palaeoverse, a community‐driven R package to aid data preparation and exploration for quantitative palaeobiological research. The package is freely available and has three core principles: (1) streamline data preparation and analyses; (2) enhance code readability; and (3) improve reproducibility of results. To develop these aims, we assessed the analytical needs of the broader palaeobiological community using an online survey, in addition to incorporating our own experiences. In this work, we first report the findings of the survey, which shaped the development of the package. Subsequently, we describe and demonstrate the functionality available in palaeoverse and provide usage examples. Finally, we discuss the resources we have made available for the community and our future plans for the broader Palaeoverse project. palaeoverse is a community‐driven R package for palaeobiology, developed with the intention of bringing palaeobiologists together to establish agreed standards for high‐quality quantitative research. The package provides a user‐friendly platform for preparing data for analysis with well‐documented open‐source code to enhance transparency. The functionality available in palaeoverse improves code reproducibility and accessibility, which is beneficial for both the review process and future research.

Funder

Fundação de Amparo à Pesquisa do Estado de São Paulo

H2020 European Research Council

American Museum of Natural History

Royal Society

Publisher

Wiley

Subject

Ecological Modeling,Ecology, Evolution, Behavior and Systematics

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