4.7 Article

Learning-based needle tip tracking in 2D ultrasound by fusing visual tracking and motion prediction

Journal

MEDICAL IMAGE ANALYSIS
Volume 88, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.media.2023.102847

Keywords

Ultrasound imaging; Needle tracking; Motion prediction; Data fusion; Deep learning

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This paper presents a learning-based needle tip tracking system that combines visual tracking and motion prediction modules. It improves visual tracking accuracy by designing multiple sets of masks and updating templates, and tackles the problem of temporary disappearance of the target through a Transformer network-based prediction architecture. The proposed system integrates visual tracking and motion prediction results to provide robust and accurate tracking.
Visual trackers are the most commonly adopted approach for needle tip tracking in ultrasound (US)-based procedures. However, they often perform unsatisfactorily in biological tissues due to the significant background noise and anatomical occlusion. This paper presents a learning-based needle tip tracking system, which consists of not only a visual tracking module, but also a motion prediction module. In the visual tracking module, two sets of masks are designed to improve the tracker's discriminability, and a template update submodule is used to keep up to date with the needle tip's current appearance. In the motion prediction module, a Transformer network-based prediction architecture estimates the target's current position according to its historical position data to tackle the problem of target's temporary disappearance. A data fusion module then integrates the results from the visual tracking and motion prediction modules to provide robust and accurate tracking results. Our proposed tracking system showed distinct improvement against other state-of-the-art trackers during the motorized needle insertion experiments in both gelatin phantom and biological tissue environments (e.g. 78% against <60% in terms of the tracking success rate in the most challenging scenario of In-plane-staticduring the tissue experiments). Its robustness was also verified in manual needle insertion experiments under varying needle velocities and directions, and occasional temporary needle tip disappearance, with its tracking success rate being >18% higher than the second best performing tracking system. The proposed tracking system, with its computational efficiency, tracking robustness, and tracking accuracy, will lead to safer targeting during existing clinical practice of US-guided needle operations and potentially be integrated in a tissue biopsy robotic system.

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