Global Data Quality Assessment and the Situated Nature of “Best” Research Practices in Biology

Authors

  • Sabina Leonelli School of Humanities, University of Adelaide, AU; and Exeter Centre for the Study of the Life Sciences and Department of Sociology, Philosophy and Anthropology, University of Exeter https://orcid.org/0000-0002-7815-6609

DOI:

https://doi.org/10.5334/dsj-2017-032

Keywords:

data quality, research assessment, peer review, scientific publication, research methods, data generation

Abstract

This paper reflects on the relation between international debates around data quality assessment and the diversity characterising research practices, goals and environments within the life sciences. Since the emergence of molecular approaches, many biologists have focused their research, and related methods and instruments for data production, on the study of genes and genomes. While this trend is now shifting, prominent institutions and companies with stakes in molecular biology continue to set standards for what counts as ‘good science’ worldwide, resulting in the use of specific data production technologies as proxy for assessing data quality. This is problematic considering (1) the variability in research cultures, goals and the very characteristics of biological systems, which can give rise to countless different approaches to knowledge production; and (2) the existence of research environments that produce high-quality, significant datasets despite not availing themselves of the latest technologies. Ethnographic research carried out in such environments evidences a widespread fear among researchers that providing extensive information about their experimental set-up will affect the perceived quality of their data, making their findings vulnerable to criticisms by better-resourced peers. These fears can make scientists resistant to sharing data or describing their provenance. To counter this, debates around Open Data need to include critical reflection on how data quality is evaluated, and the extent to which that evaluation requires a localised assessment of the needs, means and goals of each research environment.

Author Biography

Sabina Leonelli, School of Humanities, University of Adelaide, AU; and Exeter Centre for the Study of the Life Sciences and Department of Sociology, Philosophy and Anthropology, University of Exeter

Sabina Leonelli is Associate Professor in Philosophy and History of Science at the University of Exeter, UK. She serves as the Co-Director of the Exeter Centre for the Study of the Life Sciences, where she leads the Data Studies research strand. She is also the Open Science lead for the Global Young Academy and a member of the Open Science Policy Platform of the European Commission. Her research focuses on the philosophy, history and social studies of data-intensive science, especially the methods, outputs and social embedding of Open Science, Open Data and Big Data; and the philosophy and history of experimental biology, particularly the use of non-human organisms for research. Until 2019 she holds an European Research Council Starting Grant to investigate and compare existing strategies for dissemination and re-use of data across several fields and geographical locations, with emphasis on the biological and biomedical domains. She has published widely in philosophical, sociological and biology journals, and is the author of Data-Centric Biology: A Philosophical Study (2016, University of Chicago Press).

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Published

2017-06-20

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Section

Essays

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