Comparing deep learning-based auto-segmentation of organs at risk and clinical target volumes to expert inter-observer variability in radiotherapy planning

被引:178
作者
Wong, Jordan [1 ]
Fong, Allan [1 ]
McVicar, Nevin [1 ]
Smith, Sally [2 ]
Giambattista, Joshua [3 ,4 ]
Wells, Derek [2 ]
Kolbeck, Carter [4 ]
Giambattista, Jonathan [4 ]
Gondara, Lovedeep [1 ]
Alexander, Abraham [2 ]
机构
[1] BC Canc Vancouver Ctr, Vancouver, BC, Canada
[2] BC Canc Victoria Ctr, Victoria, BC, Canada
[3] Saskatchewan Canc Agcy, Regina, SK, Canada
[4] Limbus AI Inc, Regina, SK, Canada
关键词
Machine learning; Radiotherapy; CT IMAGES; NCIC CTG; CANCER; HEAD; DELINEATION; HKNPCSG; DAHANCA; ATLAS; EORTC; NCRI;
D O I
10.1016/j.radonc.2019.10.019
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background: Deep learning-based auto-segmented contours (DC) aim to alleviate labour intensive contouring of organs at risk (OAR) and clinical target volumes (CTV). Most previous DC validation studies have a limited number of expert observers for comparison and/or use a validation dataset related to the training dataset. We determine if DC models are comparable to Radiation Oncologist (RO) interobserver variability on an independent dataset. Methods: Expert contours (EC) were created by multiple ROs for central nervous system (CNS), head and neck (H&N), and prostate radiotherapy (RT) OARs and CTVs. DCs were generated using deep learning-based auto-segmentation software trained by a single RO on publicly available data. Contours were compared using Dice Similarity Coefficient (DSC) and 95% Hausdorff distance (HD). Results: Sixty planning CT scans had 2-4 ECs, for a total of 60 CNS, 53 H&N, and 50 prostate RT contour sets. The mean DC and EC contouring times were 0.4 vs 7.7 min for CNS, 0.6 vs 26.6 min for H&N, and 0.4 vs 21.3 min for prostate RT contours. There were minimal differences in DSC and 95% HD involving DCs for OAR comparisons, but more noticeable differences for CTV comparisons. Conclusions: The accuracy of DCs trained by a single RO is comparable to expert inter-observer variability for the RT planning contours in this study. Use of deep learning-based auto-segmentation in clinical practice will likely lead to significant benefits to RT planning workflow and resources. (C) 2019 Elsevier B.V. All rights reserved.
引用
收藏
页码:152 / 158
页数:7
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