Openness and trust in data-intensive science: the case of biocuration

Med Health Care Philos. 2020 Sep;23(3):497-504. doi: 10.1007/s11019-020-09960-5.

Abstract

Data-intensive science comes with increased risks concerning quality and reliability of data, and while trust in science has traditionally been framed as a matter of scientists being expected to adhere to certain technical and moral norms for behaviour, emerging discourses of open science present openness and transparency as substitutes for established trust mechanisms. By ensuring access to all available information, quality becomes a matter of informed judgement by the users, and trust no longer seems necessary. This strategy does not, however, take into consideration the networks of professionals already enabling data-intensive science by providing high-quality data. In the life sciences, biological data- and knowledge bases managed by expert biocurators have become crucial for data-intensive research. In this paper, I will use the case of biocurators to argue that openness and transparency will not diminish the need for trust in data-intensive science. On the contrary, data-intensive science requires a reconfiguration of existing trust mechanisms in order to include those who take care of and manage scientific data after its production.

Keywords: Biocuration; Data-intensive science; Open science; Trust.

MeSH terms

  • Database Management Systems / organization & administration*
  • Database Management Systems / standards
  • Databases, Factual / standards*
  • Humans
  • Information Dissemination
  • Science / standards*
  • Trust*