The Impact of Machine Learning on 2D/3D Registration for Image-guided Interventions: A Systematic Review and Perspective
Mathias Unberath, Cong Gao, Yicheng Hu, Max Judish, Russell H Taylor,, Mehran Armand, Robert Grupp

TL;DR
This paper reviews how machine learning techniques are transforming 2D/3D registration in image-guided interventions, highlighting recent advances, challenges, and future directions for clinical application.
Contribution
It provides a systematic review of machine learning's impact on 2D/3D registration, identifying key progress, open problems, and future research needs.
Findings
Machine learning improves robustness and accuracy of 2D/3D registration.
Recent advances enable better handling of complex registration scenarios.
Open problems include generalization and real-time implementation.
Abstract
Image-based navigation is widely considered the next frontier of minimally invasive surgery. It is believed that image-based navigation will increase the access to reproducible, safe, and high-precision surgery as it may then be performed at acceptable costs and effort. This is because image-based techniques avoid the need of specialized equipment and seamlessly integrate with contemporary workflows. Further, it is expected that image-based navigation will play a major role in enabling mixed reality environments and autonomous, robotic workflows. A critical component of image guidance is 2D/3D registration, a technique to estimate the spatial relationships between 3D structures, e.g., volumetric imagery or tool models, and 2D images thereof, such as fluoroscopy or endoscopy. While image-based 2D/3D registration is a mature technique, its transition from the bench to the bedside has been…
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