Real-Time Guidewire Tip Tracking Using a Siamese Network for Image-Guided Endovascular Procedures
Tianliang Yao, Zhiqiang Pei, Yong Li, Yixuan Yuan, Peng Qi

TL;DR
This paper presents a real-time guidewire tip tracking method using a Siamese network with attention mechanisms, improving accuracy and speed for image-guided endovascular procedures.
Contribution
The study introduces a novel Siamese network framework with dual attention mechanisms for robust guidewire tip tracking in clinical imaging.
Findings
Mean localization error of 0.421 mm
Processing speed of 57.2 fps
Validated on clinical DSA sequences
Abstract
An ever-growing incorporation of AI solutions into clinical practices enhances the efficiency and effectiveness of healthcare services. This paper focuses on guidewire tip tracking tasks during image-guided therapy for cardiovascular diseases, aiding physicians in improving diagnostic and therapeutic quality. A novel tracking framework based on a Siamese network with dual attention mechanisms combines self- and cross-attention strategies for robust guidewire tip tracking. This design handles visual ambiguities, tissue deformations, and imaging artifacts through enhanced spatial-temporal feature learning. Validation occurred on 3 randomly selected clinical digital subtraction angiography (DSA) sequences from a dataset of 15 sequences, covering multiple interventional scenarios. The results indicate a mean localization error of 0.421 0.138 mm, with a maximum error of 1.736 mm, and a…
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