Deep learning-based GTV contouring modeling inter- and intra- observer variability in sarcomas
Thibault Marin, Yue Zhuo, Rita Maria Lahoud, Fei Tian, Xiaoyue Ma,, Fangxu Xing, Maryam Moteabbed, Xiaofeng Liu, Kira Grogg, Nadya Shusharina,, Jonghye Woo, Chao Ma, Yen-Lin E. Chen, Georges El Fakhri

TL;DR
This paper presents a deep learning model that predicts GTV contours in sarcoma patients by incorporating inter- and intra-observer variability, aiming to improve consistency and efficiency in radiation therapy planning.
Contribution
The study introduces a novel deep learning approach that models observer variability to generate confidence maps for GTV delineation in sarcomas.
Findings
Achieved an 87% Dice score for confidence map prediction.
Predicted contours closely matched ground-truth consensus.
Demonstrated potential to enhance clinical workflow efficiency.
Abstract
Background and purpose: The delineation of the gross tumor volume (GTV) is a critical step for radiation therapy treatment planning. The delineation procedure is typically performed manually which exposes two major issues: cost and reproducibility. Delineation is a time-consuming process that is subject to inter- and intra-observer variability. While methods have been proposed to predict GTV contours, typical approaches ignore variability and therefore fail to utilize the valuable confidence information offered by multiple contours. Materials and methods: In this work we propose an automatic GTV contouring method for soft-tissue sarcomas from X-ray computed tomography (CT) images, using deep learning by integrating inter- and intra-observer variability in the learned model. Sixty-eight patients with soft tissue and bone sarcomas were considered in this evaluation, all underwent…
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