A digital photography dataset for Vaccinia Virus plaque quantification using Deep Learning.

Journal: Scientific data
PMID:

Abstract

Virological plaque assay is the major method of detecting and quantifying infectious viruses in research and diagnostic samples. Furthermore, viral plaque phenotypes contain information about the life cycle and spreading mechanism of the virus forming them. While some modernisations have been proposed, the conventional assay typically involves manual quantification of plaque phenotypes, which is both laborious and time-consuming. Here, we present an annotated dataset of digital photographs of plaque assay plates of Vaccinia virus - a prototypic propoxvirus. We demonstrate how analysis of these plates can be performed using deep learning by training models based on the leading architecture for biomedical instance segmentation - StarDist. Finally, we show that the entire analysis can be achieved in a single step by HydraStarDist - the modified architecture we propose.

Authors

  • Trina De
    Center for Advanced Systems Understanding (CASUS), Görlitz, Germany.
  • Subasini Thangamani
    Center for Advanced Systems Understanding (CASUS), Görlitz, 02826, Germany.
  • Adrian Urbanski
    Center for Advanced Systems Understanding (CASUS), Görlitz, Germany.
  • Artur Yakimovich
    MRC-Laboratory for Molecular Cell Biology, University College London, London, United Kingdom.