Deep Learning for Longitudinal Gross Tumor Volume Segmentation in MRI-Guided Adaptive Radiotherapy for Head and Neck Cancer
Xin Tie, Weijie Chen, Zachary Huemann, Brayden Schott, Nuohao Liu and, Tyler J. Bradshaw

TL;DR
This paper presents deep learning models for automatic longitudinal tumor volume segmentation in MRI-guided radiotherapy for head and neck cancer, improving accuracy and efficiency over manual methods.
Contribution
Developed novel deep learning models with attention mechanisms for longitudinal GTV segmentation, achieving state-of-the-art results and facilitating clinical workflows.
Findings
Ensembles achieved DSCagg of 0.794 for pre-RT GTVs.
Attention modules slightly improved segmentation accuracy.
Achieved 1st place in a competitive challenge.
Abstract
Accurate segmentation of gross tumor volume (GTV) is essential for effective MRI-guided adaptive radiotherapy (MRgART) in head and neck cancer. However, manual segmentation of the GTV over the course of therapy is time-consuming and prone to interobserver variability. Deep learning (DL) has the potential to overcome these challenges by automatically delineating GTVs. In this study, our team, , tackled the challenges of both pre-radiotherapy (pre-RT) (Task 1) and mid-radiotherapy (mid-RT) (Task 2) tumor volume segmentation. To this end, we developed a series of DL models for longitudinal GTV segmentation. The backbone of our models for both tasks was SegResNet with deep supervision. For Task 1, we trained the model using a combined dataset of pre-RT and mid-RT MRI data, which resulted in the improved aggregated Dice similarity coefficient (DSCagg) on an internal testing…
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Taxonomy
TopicsAdvanced Radiotherapy Techniques · Radiomics and Machine Learning in Medical Imaging · Medical Imaging Techniques and Applications
MethodsSoftmax · Attention Is All You Need · Sparse Evolutionary Training
