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Epicardium Prompt-guided Real-time Cardiac Ultrasound Frame-to-volume Registration

Authors :
Lei, Long
Zhou, Jun
Pei, Jialun
Zhao, Baoliang
Jin, Yueming
Teoh, Yuen-Chun Jeremy
Qin, Jing
Heng, Pheng-Ann
Publication Year :
2024

Abstract

A comprehensive guidance view for cardiac interventional surgery can be provided by the real-time fusion of the intraoperative 2D images and preoperative 3D volume based on the ultrasound frame-to-volume registration. However, cardiac ultrasound images are characterized by a low signal-to-noise ratio and small differences between adjacent frames, coupled with significant dimension variations between 2D frames and 3D volumes to be registered, resulting in real-time and accurate cardiac ultrasound frame-to-volume registration being a very challenging task. This paper introduces a lightweight end-to-end Cardiac Ultrasound frame-to-volume Registration network, termed CU-Reg. Specifically, the proposed model leverages epicardium prompt-guided anatomical clues to reinforce the interaction of 2D sparse and 3D dense features, followed by a voxel-wise local-global aggregation of enhanced features, thereby boosting the cross-dimensional matching effectiveness of low-quality ultrasound modalities. We further embed an inter-frame discriminative regularization term within the hybrid supervised learning to increase the distinction between adjacent slices in the same ultrasound volume to ensure registration stability. Experimental results on the reprocessed CAMUS dataset demonstrate that our CU-Reg surpasses existing methods in terms of registration accuracy and efficiency, meeting the guidance requirements of clinical cardiac interventional surgery.<br />Comment: This paper has been accepted by MICCAI 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.14534
Document Type :
Working Paper