Physics and Imaging in Radiation Oncology (Jul 2023)

End-to-end framework for automated collection of large multicentre radiotherapy datasets demonstrated in a Danish Breast Cancer Group cohort

  • Lasse Refsgaard,
  • Emma Riis Skarsø,
  • Thomas Ravkilde,
  • Henrik Dahl Nissen,
  • Mikael Olsen,
  • Kristian Boye,
  • Kasper Lind Laursen,
  • Susanne Nørring Bekke,
  • Ebbe Laugaard Lorenzen,
  • Carsten Brink,
  • Lise Bech Jellesmark Thorsen,
  • Birgitte Vrou Offersen,
  • Stine Sofia Korreman

Journal volume & issue
Vol. 27
p. 100485

Abstract

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Large Digital Imaging and Communications in Medicine (DICOM) datasets are key to support research and the development of machine learning technology in radiotherapy (RT). However, the tools for multi-centre data collection, curation and standardisation are not readily available. Automated batch DICOM export solutions were demonstrated for a multicentre setup. A Python solution, Collaborative DICOM analysis for RT (CORDIAL-RT) was developed for curation, standardisation, and analysis of the collected data. The setup was demonstrated in the DBCG RT-Nation study, where 86% (n = 7748) of treatments in the inclusion period were collected and quality assured, supporting the applicability of the end-to-end framework.

Keywords