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A novel semi auto-segmentation method for accurate dose and NTCP evaluation in adaptive head and neck radiotherapy

Yong Gan, Johannes A. Langendijk, Edwin Oldehinkel, D. Scandurra, Nanna M. Sijtsema, Zhixiong Lin, Stefan Both, Charlotte L. Brouwer

2021Radiotherapy and Oncology22 citationsDOIOpen Access PDF

Abstract

Background and purposeAccurate segmentation of organs-at-risk (OARs) is crucial but tedious and time-consuming in adaptive radiotherapy (ART). The purpose of this work was to automate head and neck OAR-segmentation on repeat CT (rCT) by an optimal combination of human and auto-segmentation for accurate prediction of Normal Tissue Complication Probability (NTCP).Materials and methodsHuman segmentation (HS) of 3 observers, deformable image registration (DIR) based contour propagation and deep learning contouring (DLC) were carried out to segment 15 OARs on 15 rCTs. The original treatment plan was re-calculated on rCT to obtain mean dose (Dmean) and consequent NTCP-predictions. The average Dmean and NTCP-predictions of the three observers were referred to as the gold standard to calculate the absolute difference of Dmean and NTCP-predictions (|ΔDmean| and |ΔNTCP|).ResultsThe average |ΔDmean| of parotid glands in HS was 1.40 Gy, lower than that obtained with DIR and DLC (3.64 Gy, p < 0.001 and 3.72 Gy, p < 0.001, respectively). DLC showed the highest |ΔDmean| in middle Pharyngeal Constrictor Muscle (PCM) (5.13 Gy, p = 0.01). DIR showed second highest |ΔDmean| in the cricopharyngeal inlet (2.85 Gy, p = 0.01). The semi auto-segmentation (SAS) adopted HS, DIR and DLC for segmentation of parotid glands, PCM and all other OARs, respectively. The 90th percentile |ΔNTCP|was 2.19%, 2.24%, 1.10% and 1.50% for DIR, DLC, HS and SAS respectively.ConclusionsHuman segmentation of the parotid glands remains necessary for accurate interpretation of mean dose and NTCP during ART. Proposed semi auto-segmentation allows NTCP-predictions within 1.5% accuracy for 90% of the cases.

Topics & Concepts

MedicineNuclear medicineContouringSegmentationHead and neckRadiation therapyRadiologyArtificial intelligenceComputer scienceSurgeryComputer graphics (images)Advanced Radiotherapy TechniquesHead and Neck Cancer StudiesEffects of Radiation Exposure
A novel semi auto-segmentation method for accurate dose and NTCP evaluation in adaptive head and neck radiotherapy | Litcius