Deep Learning based Direct Segmentation Assisted by Deformable Image Registration for Cone-Beam CT based Auto-Segmentation for Adaptive Radiotherapy
Xiao Liang, Howard Morgan, Ti Bai, Michael Dohopolski, Dan Nguyen,, Steve Jiang

TL;DR
This paper introduces a deep learning method assisted by deformable image registration to improve auto-segmentation of CBCT images in adaptive radiotherapy, achieving accuracy comparable or superior to traditional DIR-based methods.
Contribution
The study proposes a novel DL-based segmentation framework utilizing pseudo labels and influencer volumes from DIR, significantly enhancing CBCT segmentation accuracy.
Findings
Adding influencer volumes improves segmentation performance.
Fine-tuning with true labels further enhances accuracy.
7 out of 19 structures showed at least 0.2 Dice coefficient increase.
Abstract
Cone-beam CT (CBCT)-based online adaptive radiotherapy calls for accurate auto-segmentation to reduce the time cost for physicians to edit contours. However, deep learning (DL)-based direct segmentation of CBCT images is a challenging task, mainly due to the poor image quality and lack of well-labelled large training datasets. Deformable image registration (DIR) is often used to propagate the manual contours on the planning CT (pCT) of the same patient to CBCT. In this work, we undertake solving the problems mentioned above with the assistance of DIR. Our method consists of three main components. First, we use deformed pCT contours derived from multiple DIR methods between pCT and CBCT as pseudo labels for initial training of the DL-based direct segmentation model. Second, we use deformed pCT contours from another DIR algorithm as influencer volumes to define the region of interest for…
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Taxonomy
TopicsAdvanced Radiotherapy Techniques · Medical Image Segmentation Techniques · Medical Imaging Techniques and Applications
MethodsPerceptual control theoretic architecture
