Evaluation of a delineation software for cardiac atlas-based autosegmentation: An example of the use of artificial intelligence in modern radiotherapy

Cancer Radiother. 2020 Dec;24(8):826-833. doi: 10.1016/j.canrad.2020.04.012. Epub 2020 Nov 2.

Abstract

Purpose: The primary objective of this work was to implement and evaluate a cardiac atlas-based autosegmentation technique based on the "Workflow Box" software (Mirada Medical, Oxford UK), in order to delineate cardiac substructures according to European Society of Therapeutic Radiation Oncology (ESTRO) guidelines; review and comparison with other cardiac atlas-based autosegmentation algorithms published to date.

Materials and methods: Of an atlas of data set from 20 breast cancer patients' CT scans with recontoured cardiac substructures creation according to the ESTRO guidelines. Performance evaluation on a validation data set consisting of 20 others CT scans acquired in the same treatment position: cardiac substructure were automatically contoured by the Mirada system, using the implemented cardiac atlas, and simultaneously manually contoured by a radiation oncologist. The Dice similarity coefficient was used to evaluate the concordance level between the manual and the automatic segmentations.

Results: Dice similarity coefficient value was 0.95 for the whole heart and 0.80 for the four cardiac chambers. Average Dice similarity coefficient value for the left ventricle walls was 0.50, ranging between 0.34 for the apical wall and 0.70 for the lateral wall. Compared to manual contours, autosegmented substructure volumes were significantly smaller, with the exception of the left ventricle. Coronary artery segmentation was unsuccessful. Performances were overall similar to other published cardiac atlas-based autosegmentation algorithms.

Conclusion: The evaluated cardiac atlas-based autosegmentation technique, using the Mirada software, demonstrated acceptable performance for cardiac cavities delineation. However, algorithm improvement is still needed in order to develop efficient and trusted cardiac autosegmentation working tools for daily practice.

Keywords: Artificial intelligence; Autosegmentation; Cardiac substructure; Délinéation automatique; Intelligence artificielle; Sous-structure cardiaque.

Publication types

  • Comparative Study

MeSH terms

  • Artificial Intelligence*
  • Female
  • Heart / anatomy & histology
  • Heart / diagnostic imaging*
  • Heart / radiation effects
  • Heart Ventricles / anatomy & histology
  • Heart Ventricles / diagnostic imaging
  • Humans
  • Medical Illustration*
  • Radiation Injuries / prevention & control
  • Software
  • Software Validation*
  • Unilateral Breast Neoplasms / radiotherapy*