Physics and Imaging in Radiation Oncology (Oct 2023)

Automated contouring and statistical process control for plan quality in a breast clinical trial

  • Hana Baroudi,
  • Callistus I. Huy Minh Nguyen,
  • Sean Maroongroge,
  • Benjamin D. Smith,
  • Joshua S. Niedzielski,
  • Simona F. Shaitelman,
  • Adam Melancon,
  • Sanjay Shete,
  • Thomas J. Whitaker,
  • Melissa P. Mitchell,
  • Isidora Yvonne Arzu,
  • Jack Duryea,
  • Soleil Hernandez,
  • Daniel El Basha,
  • Raymond Mumme,
  • Tucker Netherton,
  • Karen Hoffman,
  • Laurence Court

Journal volume & issue
Vol. 28
p. 100486

Abstract

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Background and purpose: Automatic review of breast plan quality for clinical trials is time-consuming and has some unique challenges due to the lack of target contours for some planning techniques. We propose using an auto-contouring model and statistical process control to independently assess planning consistency in retrospective data from a breast radiotherapy clinical trial. Materials and methods: A deep learning auto-contouring model was created and tested quantitatively and qualitatively on 104 post-lumpectomy patients’ computed tomography images (nnUNet; train/test: 80/20). The auto-contouring model was then applied to 127 patients enrolled in a clinical trial. Statistical process control was used to assess the consistency of the mean dose to auto-contours between plans and treatment modalities by setting control limits within three standard deviations of the data’s mean. Two physicians reviewed plans outside the limits for possible planning inconsistencies. Results: Mean Dice similarity coefficients comparing manual and auto-contours was above 0.7 for breast clinical target volume, supraclavicular and internal mammary nodes. Two radiation oncologists scored 95% of contours as clinically acceptable. The mean dose in the clinical trial plans was more variable for lymph node auto-contours than for breast, with a narrower distribution for volumetric modulated arc therapy than for 3D conformal treatment, requiring distinct control limits. Five plans (5%) were flagged and reviewed by physicians: one required editing, two had clinically acceptable variations in planning, and two had poor auto-contouring. Conclusions: An automated contouring model in a statistical process control framework was appropriate for assessing planning consistency in a breast radiotherapy clinical trial.

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