Integration of the pollen database PONET into PalDat with new features for light microscopy

Karen Koelzer (Corresponding author), Martina Weber, Silvia Ulrich

Publications: Contribution to journalArticlePeer Reviewed

Abstract

Free access to scientific data, knowledge and technology transfer has become more and more important in science, at universities, governmental institutes, and in our society in general. In an interdisciplinary project initialised by palynologists at the University of Vienna and the Austrian Agency for Health and Food Safety Ltd (AGES), the world’s most comprehensive database PalDat has been expanded by more than 2000 datasets from the PONET database, comprising high resolution light microscopy (LM) micrographs of hydrated pollen. The main aim of this fusion of knowledge was to share digital data in a secure way and to ensure users of various disciplines free access to reliable pollen data. The project was finally completed in 2021. In the course of the expansion, additional data entry fields regarding LM description have been added, and new features, such as a search function for orders and families, have been implemented in the new version 3.4 of PalDat. A global online submission and publication tool for palynological data to PalDat, including review and editorial process, assures easy knowledge transfer and facilitates a continually increasing number of datasets and taxa contributed from scientists all over the world. The free accessible online pollen database PalDat is maintained by members of the Division of Structural and Functional Botany (University of Vienna).
Original languageEnglish
Pages (from-to)221-227
Number of pages7
JournalGrana
Volume62
Issue number4
DOIs
Publication statusPublished - 2023

Austrian Fields of Science 2012

  • 106049 Ultrastructure research
  • 106008 Botany

Keywords

  • melissopalynology
  • pollen analysis
  • electron microscopy
  • terminology
  • identification
  • dataset
  • submission

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