核心概念
A two-stage deep learning framework for real-time and robust guidewire segmentation and tracking in intraoperative X-ray imaging.
摘要
The paper proposes a two-stage framework for real-time guidewire tracking and segmentation in intraoperative X-ray imaging.
In the first stage, a YOLOv5s detector is trained using the original X-ray images as well as synthetically generated ones. A refinement module based on spatiotemporal constraints is incorporated to robustly localize the guidewire and remove false detections.
In the second stage, a novel and efficient network called HessianNet is proposed to segment the guidewire in each detected bounding box. HessianNet consists of a hessian-based enhancement embedding module and a dual self-attention module, which improve the segmentation performance and robustness to low-quality images.
Quantitative and qualitative evaluations on clinical intra-operative images demonstrate that the proposed approach significantly outperforms the baselines and the current state-of-the-art methods. The whole system is designed to perform in real-time, achieving an inference rate of approximately 35 FPS on a GPU.
统计
The dataset consists of 102 sequences from 21 patients, containing 5238 X-ray images with a resolution of 512 × 512. The images are divided into a training set (4112 images from 80 sequences) and a testing set (1126 images from 22 sequences).
引用
"For this purpose, real-time and accurate guidewire segmentation and tracking can enhance the visualization of guidewires and provide visual feedback for physicians during the intervention as well as for robot-assisted interventions."
"However, due to the following reasons, guidewire segmentation and tracking still remains a challenging task: (a) guidewires present themselves as elongated deformable structures with low contrast in noisy X-ray fluoroscopy images; (b) only a small part of the guidewire is visible in the image, i.e. only a 3cm part of the guidewire contains radiopaque material and (c) their visual appearance easily resembles other anatomical structures (such as rib outlines or small vessels) in the fluoroscopic images."