Clinical evaluation of a deep learning segmentation model including manual adjustments afterwards for locally advanced breast cancer

被引:7
作者
Bakx, Nienke [1 ]
Rijkaart, Dorien [1 ]
van der Sangen, Maurice
Theuws, Jacqueline [1 ]
van der Toorn, Peter -Paul
Verrijssen, An-Sofie [1 ]
van der Leer, Jorien
Mutsaers, Joline [1 ]
Van Nunen, Therese [1 ]
Reinders, Marjon [1 ]
Schuengel, Inge [1 ]
Smits, Julia [1 ]
Hagelaar, Els [1 ]
van Gruijthuijsen, Dave [1 ]
Bluemink, Johanna [1 ]
Hurkmans, Coen [1 ,2 ]
机构
[1] Catharina Hosp, Dept Radiat Oncol, Eindhoven, Netherlands
[2] Tech Univ Eindhoven, Fac Elect Engn, Eindhoven, Netherlands
关键词
Deep learning; Auto; -segmentation; Breast cancer; Radiotherapy; ELECTIVE RADIATION-THERAPY; ESTRO CONSENSUS GUIDELINE; TARGET VOLUME DELINEATION; AUTOMATIC SEGMENTATION; RADIOTHERAPY; VARIABILITY; PERFORMANCE; ORGANS;
D O I
10.1016/j.tipsro.2023.100211
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Introduction: Deep learning (DL) models are increasingly developed for auto-segmentation in radiotherapy. Qualitative analysis is of great importance for clinical implementation, next to quantitative. This study evaluates a DL segmentation model for left- and right-sided locally advanced breast cancer both quantitatively and qualitatively. Methods: For each side a DL model was trained, including primary breast CTV (CTVp), lymph node levels 1-4, heart, lungs, humeral head, thyroid and esophagus. For evaluation, both automatic segmentation, including correction of contours when needed, and manual delineation was performed and both processes were timed. Quantitative scoring with dice-similarity coefficient (DSC), 95% Hausdorff Distance (95%HD) and surface DSC (sDSC) was used to compare both the automatic (not-corrected) and corrected contours with the manual contours. Qualitative scoring was performed by five radiotherapy technologists and five radiation oncologists using a 3-point Likert scale. Results: Time reduction was achieved using auto-segmentation in 95% of the cases, including correction. The time reduction (mean +/- std) was 42.4% +/- 26.5% and 58.5% +/- 19.1% for OARs and CTVs, respectively, corresponding to an absolute mean reduction (hh:mm:ss) of 00:08:51 and 00:25:38. Good quantitative results were achieved before correction, e.g. mean DSC for the right-sided CTVp was 0.92 +/- 0.06, whereas correction statistically significantly improved this contour by only 0.02 +/- 0.05, respectively. In 92% of the cases, autocontours were scored as clinically acceptable, with or without corrections. Conclusions: A DL segmentation model was trained and was shown to be a time-efficient way to generate clinically acceptable contours for locally advanced breast cancer.
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页数:6
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