Deep learning-based segmentation of head and neck organs at risk on CBCT images with dosimetric assessment for radiotherapy Articles uri icon

publication date

  • March 2025

start page

  • 1

end page

  • 15

issue

  • 7

volume

  • 70

International Standard Serial Number (ISSN)

  • 0031-9155

Electronic International Standard Serial Number (EISSN)

  • 1361-6560

abstract

  • Objective. Cone beam computed tomography (CBCT) has become an essential tool in head and neck cancer (HNC) radiotherapy (RT) treatment delivery. Automatic segmentation of the organs at risk (OARs) on CBCT can trigger and accelerate treatment replanning but is still a challenge due to the poor soft tissue contrast, artifacts, and limited field-of-view of these images, alongside the lack of large, annotated datasets to train deep learning (DL) models. This study aims to develop a comprehensive framework to segment 25 HN OARs on CBCT to facilitate treatment replanning. Approach. The proposed framework was developed in three steps: (i) refining an in-house framework to segment 25 OARs on CT; (ii) training a DL model to segment the same OARs on synthetic CT (sCT) images derived from CBCT using contours propagated from CT as ground truth, integrating high-contrast information from CT and texture features of sCT; and (iii) validating the clinical relevance of sCT segmentations through a dosimetric analysis on an external cohort. Main results. Most OARs achieved a dice score coefficient over 70%, with mean average surface distances of 1.30 mm for CT and 1.27 mm for sCT. The dosimetric analysis demonstrated a strong agreement in the mean dose and D2 (%) values, with most OARs showing non-significant differences between automatic CT and sCT segmentations. Significance. These results support the feasibility and clinical relevance of using DL models for OAR segmentation on both CT and CBCT for HNC RT.

subjects

  • Biology and Biomedicine
  • Medicine

keywords

  • cbct; oar; segmentation; head and neck; radiotherapy; deep learning