TL;DR
This paper introduces a fully automatic method for hip registration in fluoroscopy using neural network-generated annotations, significantly improving efficiency and accuracy in intraoperative navigation without manual intervention.
Contribution
The authors developed a neural network-based approach for automatic segmentation and landmark detection in fluoroscopy, enabling robust 2D/3D registration during hip surgery.
Findings
Achieved high dice coefficients (0.84-0.90) in segmentation tasks.
Reduced registration error to within 1 degree in 86% of images.
Significantly outperformed intensity-only registration methods.
Abstract
Fluoroscopy is the standard imaging modality used to guide hip surgery and is therefore a natural sensor for computer-assisted navigation. In order to efficiently solve the complex registration problems presented during navigation, human-assisted annotations of the intraoperative image are typically required. This manual initialization interferes with the surgical workflow and diminishes any advantages gained from navigation. We propose a method for fully automatic registration using annotations produced by a neural network. Neural networks are trained to simultaneously segment anatomy and identify landmarks in fluoroscopy. Training data is obtained using an intraoperatively incompatible 2D/3D registration of hip anatomy. Ground truth 2D labels are established using projected 3D annotations. Intraoperative registration couples an intensity-based strategy with annotations inferred by the…
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