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A network score-based metric to optimize the quality assurance of automatic radiotherapy target segmentations.

Roque Rodríguez Outeiral ,
Nicole Ferreira Silvério ,
Patrick J González ,
Eva E Schaake ,
Tomas Janssen ,
Uulke A van der Heide ,
Rita Simões

Abstract

MATERIALS AND METHODS

Magnetic Resonance Imaging auto-segmentations were available for the gross tumor volume for cervical cancer brachytherapy (106 segmentations) and for the clinical target volume for rectal cancer external-beam radiotherapy (77 segmentations). The nnU-Net's output before binarization was taken as a score map. We defined a metric as the mean of the voxels in the score map above a threshold (λ). Comparisons were made with the mean and standard deviation over the score map and with the mean over the entropy map. The DSC, the 95th Hausdorff distance, the mean surface distance (MSD) and the surface DSC were computed for segmentation quality. Correlations between the studied metrics and model quality were assessed with the Pearson correlation coefficient (r). The area under the curve (AUC) was determined for detecting segmentations that require reviewing.

CONCLUSIONS

Our metric correlated strongly with clinically relevant segmentation metrics and detected segmentations that required reviewing, indicating its potential for automatic quality assurance of radiotherapy target auto-segmentations.

RESULTS

For both tasks, our metric (λ = 0.30) correlated more strongly with the segmentation quality than the mean over the entropy map (for surface DSC, r > 0.65 vs. r < 0.60). The AUC was above 0.84 for detecting MSD values above 2 mm.

BACKGROUND AND PURPOSE

Existing methods for quality assurance of the radiotherapy auto-segmentations focus on the correlation between the average model entropy and the Dice Similarity Coefficient (DSC) only. We identified a metric directly derived from the output of the network and correlated it with clinically relevant metrics for contour accuracy.

More about this publication

Physics and imaging in radiation oncology

Volume 28
Pages 100500
Publication date 01-10-2023

Full text links

Publisher website (DOI) 10.1016/j.phro.2023.100500
Europe PubMed Central 37869474
Pubmed 37869474

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