1. Deep match: A zero-shot framework for improved fiducial-free respiratory motion tracking
- Author
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Xu, Di, Descovich, Martina, Liu, Hengjie, Lao, Yi, Gottschalk, Alexander R, and Sheng, Ke
- Subjects
Medical and Biological Physics ,Biomedical and Clinical Sciences ,Clinical Sciences ,Physical Sciences ,Oncology and Carcinogenesis ,Cancer ,Lung ,Bioengineering ,Lung Cancer ,SBRT ,CyberKnife ,Xsight Lung Tracking ,Template matching ,Deep learning ,Computer vision ,Other Physical Sciences ,Oncology & Carcinogenesis ,Clinical sciences ,Oncology and carcinogenesis ,Medical and biological physics - Abstract
Background and purposeMotion management is essential to reduce normal tissue exposure and maintain adequate tumor dose in lung stereotactic body radiation therapy (SBRT). Lung SBRT using an articulated robotic arm allows dynamic tracking during radiation dose delivery. Two stereoscopic X-ray tracking modes are available - fiducial-based and fiducial-free tracking. Although X-ray detection of implanted fiducials is robust, the implantation procedure is invasive and inapplicable to some patients and tumor locations. Fiducial-free tracking relies on tumor contrast, which challenges the existing tracking algorithms for small (e.g., 15 mm) and tumor locations (with/without thoracic anatomy overlapping).ResultsOn X-ray views that conventional methods failed to track the lung tumor, Deep Match achieved robust performance as evidenced by >80 % 3 mm-Hit (detection within 3 mm superior/inferior margin from ground truth) for 70 % of patients and
- Published
- 2024