Abstract

Accurate, efficient auto-segmentation methods are essential for the clinical efficacy of adaptive radiotherapy delivered with highly conformal techniques. Current atlas based auto-segmentation techniques are adequate in this respect, however fail to account for inter-observer variation. An atlas-based segmentation method that incorporates inter-observer variation is proposed. This method is validated for a whole breast radiotherapy cohort containing 28 CT datasets with CTVs delineated by eight observers. To optimise atlas accuracy, the cohort was divided into categories by mean body mass index and laterality, with atlas’ generated for each in a leave-one-out approach. Observer CTVs were merged and thresholded to generate an auto-segmentation model representing both inter-observer and inter-patient differences. For each category, the atlas was registered to the left-out dataset to enable propagation of the auto-segmentation from atlas space. Auto-segmentation time was recorded. The segmentation was compared to the gold-standard contour using the dice similarity coefficient (DSC) and mean absolute surface distance (MASD). Comparison with the smallest and largest CTV was also made. This atlas-based auto-segmentation method incorporating inter-observer variation was shown to be efficient (<4min) and accurate for whole breast radiotherapy, with good agreement (DSC>0.7, MASD <9.3mm) between the auto-segmented contours and CTV volumes.

Highlights

  • Internal anatomical changes during the course of radiotherapy limit treatment accuracy, as current treatments are planned on static images obtained prior to delivery [1]

  • An atlas-based segmentation method that incorporates inter-observer variation is proposed. This method is validated for a whole breast radiotherapy cohort containing 28 computed tomography (CT) datasets with clinical target volumes (CTV) delineated by eight observers

  • Atlas-based segmentation techniques in particular are suited for adaptive radiotherapy purposes as they are derived from real patient anatomy and verified clinician contours

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Summary

Introduction

Internal anatomical changes during the course of radiotherapy limit treatment accuracy, as current treatments are planned on static images obtained prior to delivery [1]. Adaptive radiotherapy is an increasingly investigated approach that aims to combat these anatomical changes by re-imaging and replanning at multiple time points throughout the treatment course. This process has large workflow implications due to the time required to achieve this whilst maintaining plan quality. Atlas-based segmentation techniques in particular are suited for adaptive radiotherapy purposes as they are derived from real patient anatomy and verified clinician contours. Current techniques generally fail to incorporate inter-observer variation, with single

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