Clinical implementation of deep-learning based auto-contouring tools-Experience of three French radiotherapy centers

Cancer Radiother. 2021 Oct;25(6-7):607-616. doi: 10.1016/j.canrad.2021.06.023. Epub 2021 Aug 11.

Abstract

Deep-learning (DL)-based auto-contouring solutions have recently been proposed as a convincing alternative to decrease workload of target volumes and organs-at-risk (OAR) delineation in radiotherapy planning and improve inter-observer consistency. However, there is minimal literature of clinical implementations of such algorithms in a clinical routine. In this paper we first present an update of the state-of-the-art of DL-based solutions. We then summarize recent recommendations proposed by the European society for radiotherapy and oncology (ESTRO) to be followed before any clinical implementation of artificial intelligence-based solutions in clinic. The last section describes the methodology carried out by three French radiation oncology departments to deploy CE-marked commercial solutions. Based on the information collected, a majority of OAR are retained by the centers among those proposed by the manufacturers, validating the usefulness of DL-based models to decrease clinicians' workload. Target volumes, with the exception of lymph node areas in breast, head and neck and pelvic regions, whole breast, breast wall, prostate and seminal vesicles, are not available in the three commercial solutions at this time. No implemented workflows are currently available to continuously improve the models, but these can be adapted/retrained in some solutions during the commissioning phase to best fit local practices. In reported experiences, automatic workflows were implemented to limit human interactions and make the workflow more fluid. Recommendations published by the ESTRO group will be of importance for guiding physicists in the clinical implementation of patient specific and regular quality assurances.

Keywords: Apprentissage profond; Auto-contouring; Automatic delineation; Clinical implementation; Deep-learning; Délinéation automatique; Implémentation clinique; Radiotherapy; Radiothérapie; Segmentation automatique.

Publication types

  • Multicenter Study
  • Review

MeSH terms

  • Deep Learning*
  • Europe
  • Humans
  • Neoplasms / diagnostic imaging*
  • Neoplasms / radiotherapy
  • Organs at Risk / diagnostic imaging*
  • Practice Guidelines as Topic
  • Radiation Oncology / methods*
  • Radiotherapy Planning, Computer-Assisted / methods*
  • Radiotherapy, Image-Guided / methods
  • Societies, Medical
  • Workload