Manual calibration of nuclear medicine scanners currently relies on handling phantoms containing radioactive sources, exposing personnel to high radiation doses and elevating cancer risk. We designed an automated detection framework for robotic inspection on the YOLOv8n foundation. It pairs a lightweight backbone with a shape-aware geometric attention module and an anchor-free head. Facing a small training set, we produced extra images with a GAN and then fine-tuned a pretrained network on these augmented data. Evaluations on a custom dataset consisting of PET/CT gantry and table images showed that the SAM-YOLOv8n model achieved a precision of 93.6% and a recall of 92.8%. These results demonstrate fast, accurate, real-time detection, offering a safer and more efficient alternative to manual calibration of nuclear medicine equipment.
Emily L. Clarke, Derek Magee, Julia Newton‐Bishop, William Merchant, Marlous Hall, Robert H. Insall, Nigel Maher, Richard A Scolyer, Grace Farnworth, Anisah Ali, Sally J. O’Shea, Darren Treanor
Emily L. Clarke, Derek Magee, Julia Newton‐Bishop, William Merchant, Marlous Hall, Robert H. Insall, Nigel Maher, Richard A Scolyer, Grace Farnworth, Anisah Ali, Gerald Saldanha, Mark Bamford, Eva Sitcova, Petr Kujal, Sally J. O’Shea, Darren Treanor
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