Improved standardization of transcribed digital specimen data

Author:

Groom Quentin1ORCID,Dillen Mathias1ORCID,Hardy Helen2ORCID,Phillips Sarah3ORCID,Willemse Luc4ORCID,Wu Zhengzhe5

Affiliation:

1. Department of Collections, Meise Botanic Garden, Nieuwelaan 38, 1860 Meise, Belgium

2. Department of Life Sciences, Natural History Museum, Cromwell Road London SW7 5BD London, UK

3. Department of Collections, Royal Botanic Gardens Kew, Richmond TW9 3AB London, UK

4. Department of Entomological Collections, Naturalis Biodiversity Center, Darwinweg 2, 2333 CR Leiden, The Netherlands

5. Finnish Museum of Natural History, University of Helsinki, Unioninkatu 44, 00170 Helsinki, Finland

Abstract

Abstract There are more than 1.2 billion biological specimens in the world’s museums and herbaria. These objects are particularly important forms of biological sample and observation. They underpin biological taxonomy but the data they contain have many other uses in the biological and environmental sciences. Nevertheless, from their conception they are almost entirely documented on paper, either as labels attached to the specimens or in catalogues linked with catalogue numbers. In order to make the best use of these data and to improve the findability of these specimens, these data must be transcribed digitally and made to conform to standards, so that these data are also interoperable and reusable. Through various digitization projects, the authors have experimented with transcription by volunteers, expert technicians, scientists, commercial transcription services and automated systems. We have also been consumers of specimen data for taxonomical, biogeographical and ecological research. In this paper, we draw from our experiences to make specific recommendations to improve transcription data. The paper is split into two sections. We first address issues related to database implementation with relevance to data transcription, namely versioning, annotation, unknown and incomplete data and issues related to language. We then focus on particular data types that are relevant to biological collection specimens, namely nomenclature, dates, geography, collector numbers and uniquely identifying people. We make recommendations to standards organizations, software developers, data scientists and transcribers to improve these data with the specific aim of improving interoperability between collection datasets.

Funder

Horizon 2020 Framework Programme of the European Union

ICEDIG project

Publisher

Oxford University Press (OUP)

Subject

General Agricultural and Biological Sciences,General Biochemistry, Genetics and Molecular Biology,Information Systems

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