Abstract

BackgroundContour delineation, a crucial process in radiation oncology, is time-consuming and inaccurate due to inter-observer variation has been a critical issue in this process. An atlas-based automatic segmentation was developed to improve the delineation efficiency and reduce inter-observer variation. Additionally, automated segmentation using artificial intelligence (AI) has recently become available. In this study, auto-segmentations by atlas- and AI-based models for Organs at Risk (OAR) in patients with prostate and head and neck cancer were performed and delineation accuracies were evaluated.MethodsTwenty-one patients with prostate cancer and 30 patients with head and neck cancer were evaluated. MIM Maestro was used to apply the atlas-based segmentation. MIM Contour ProtégéAI was used to apply the AI-based segmentation. Three similarity indices, the Dice similarity coefficient (DSC), Hausdorff distance (HD), and mean distance to agreement (MDA), were evaluated and compared with manual delineations. In addition, radiation oncologists visually evaluated the delineation accuracies.ResultsAmong patients with prostate cancer, the AI-based model demonstrated higher accuracy than the atlas-based on DSC, HD, and MDA for the bladder and rectum. Upon visual evaluation, some errors were observed in the atlas-based delineations when the boundary between the small bowel or the seminal vesicle and the bladder was unclear. For patients with head and neck cancer, no significant differences were observed between the two models for almost all OARs, except small delineations such as the optic chiasm and optic nerve. The DSC tended to be lower when the HD and the MDA were smaller in small volume delineations.ConclusionsIn terms of efficiency, the processing time for head and neck cancers was much shorter than manual delineation. While quantitative evaluation with AI-based segmentation was significantly more accurate than atlas-based for prostate cancer, there was no significant difference for head and neck cancer. According to the results of visual evaluation, less necessity of manual correction in AI-based segmentation indicates that the segmentation efficiency of AI-based model is higher than that of atlas-based model. The effectiveness of the AI-based model can be expected to improve the segmentation efficiency and to significantly shorten the delineation time.

Highlights

  • Contour delineation, a crucial process in radiation oncology, is time-consuming and inaccurate due to inter-observer variation has been a critical issue in this process

  • In radiotherapy, radiation oncologists define the tumor and Organs at Risk (OARs) on computed tomography (CT) images in the treatment planning system (TPS) and their definitions are crucial to identify the radiotherapy region for the assessment of therapeutic outcomes and expected occurrence of toxicities

  • Our study aims to evaluate the accuracy of an AIbased auto-segmentation model as well as the conventional atlas-based model in comparison with the manual model delineated by radiation oncologists

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Summary

Introduction

A crucial process in radiation oncology, is time-consuming and inaccurate due to inter-observer variation has been a critical issue in this process. Auto-segmentations by atlas- and AI-based models for Organs at Risk (OAR) in patients with prostate and head and neck cancer were performed and delineation accuracies were evaluated. Radiation oncologists define the tumor and Organs at Risk (OARs) on computed tomography (CT) images in the treatment planning system (TPS) and their definitions are crucial to identify the radiotherapy region for the assessment of therapeutic outcomes and expected occurrence of toxicities. This process is generally time-consuming and burdensome, given the need for manual delineations. To standardize delineation and improve contouring efficiency in radiotherapy, automatic segmentation methods have been developed

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