Automatic target positioning and tracking for image-guided radiotherapy without implanted fiducials
Wei Zhao, Liyue Shen, Yan Wu, Bin Han, Yong Yang, Lei Xing

TL;DR
This paper presents a novel deep learning-based method for markerless prostate localization in image-guided radiotherapy, eliminating the need for invasive fiducial implantation and enabling accurate, non-invasive target tracking using routine X-ray images.
Contribution
The study introduces a deep learning approach trained on thousands of images for accurate markerless prostate localization, reducing invasiveness and associated risks.
Findings
Deep learning model achieved 1.15-2.88 mm accuracy in target localization.
Method provides consistent results with fiducial-based localization.
First demonstration of highly accurate markerless prostate localization using deep learning.
Abstract
Current image-guided prostate radiotherapy often relies on the use of implanted fiducials or transducers for target localization. Fiducial or transducer insertion requires an invasive procedure that adds cost and risks for bleeding, infection, and discomfort to some patients. We are developing a novel markerless prostate localization strategy using a pre-trained deep learning model to interpret routine projection kV X-ray images without the need for daily cone-beam computed tomography (CBCT). A deep learning model was first trained by using several thousand annotated projection X-ray images. The trained model is capable of identifying the location of the prostate target for a given input X-ray projection image. To assess the accuracy of the approach, three patients with prostate cancer received volumetric modulated arc therapy (VMAT) were retrospectively studied. The results obtained by…
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Taxonomy
TopicsAdvanced Radiotherapy Techniques · Advanced Neural Network Applications · Optical Systems and Laser Technology
