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içgörü - Computer Vision - # Guidewire Segmentation and Tracking in Fluoroscopic Images

Real-time Guidewire Tracking and Segmentation in Intraoperative X-ray Imaging


Temel Kavramlar
A two-stage deep learning framework for real-time and robust guidewire segmentation and tracking in intraoperative X-ray imaging.
Özet

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.

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Kaynak

İstatistikler
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).
Alıntılar
"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."

Önemli Bilgiler Şuradan Elde Edildi

by Baochang Zha... : arxiv.org 04-16-2024

https://arxiv.org/pdf/2404.08805.pdf
Real-time guidewire tracking and segmentation in intraoperative x-ray

Daha Derin Sorular

How can the proposed framework be extended to handle other types of medical instruments, such as catheters or stents, in addition to guidewires

The proposed framework can be extended to handle other types of medical instruments, such as catheters or stents, by adapting the detection and segmentation modules to recognize and track these instruments. For catheters, the detection stage can be trained to identify the specific shape and features of catheters in X-ray images. This may involve collecting a dataset of X-ray images with annotated catheters and training the detector to recognize these patterns. The segmentation stage can then be modified to accurately segment the catheters once detected, similar to the process for guidewires. When it comes to stents, a similar approach can be taken. The detection module would need to be trained to identify the unique characteristics of stents in X-ray images, such as their cylindrical shape and radiopaque markers. The segmentation module would then need to be adjusted to accurately outline and segment the stents in the images. By customizing the training data and network architecture to the specific characteristics of catheters or stents, the proposed framework can be extended to handle these medical instruments effectively during interventional procedures.

What are the potential limitations of the hessian-based enhancement and attention modules, and how could they be further improved to handle more challenging cases

The hessian-based enhancement and attention modules, while effective in improving guidewire segmentation, may have limitations when faced with more challenging cases. One potential limitation is the reliance on image quality and contrast. In cases where the X-ray images are of poor quality or have low contrast, the hessian-based enhancement may not be as effective in highlighting the guidewire. To address this limitation, the network could be enhanced with additional preprocessing steps or adaptive techniques to adjust to varying image qualities. Another limitation could be related to the complexity of the anatomical structures surrounding the guidewire. In scenarios where the guidewire is intertwined with other structures or overlaps with background elements, the attention modules may struggle to accurately segment the guidewire. To improve in such cases, the network could be trained on a more diverse dataset that includes challenging scenarios and variations in guidewire positioning. By addressing these limitations through improved preprocessing techniques, data augmentation, and training on diverse datasets, the hessian-based enhancement and attention modules can be further enhanced to handle more challenging cases effectively.

Given the real-time performance of the system, how could it be integrated into existing clinical workflows to assist physicians during interventional procedures

Integrating the real-time performance of the system into existing clinical workflows to assist physicians during interventional procedures can be achieved through seamless integration and user-friendly interfaces. One approach is to develop a software interface that can overlay the real-time guidewire tracking and segmentation information onto the fluoroscopic images displayed during the procedure. This overlay can provide physicians with immediate visual feedback on the guidewire's position and trajectory, aiding in accurate navigation and placement. Furthermore, the system can be integrated with robotic-assisted intervention platforms to provide visual feedback to the robotic systems, enabling semi-automatic or fully automatic interventions. This integration would require establishing communication protocols between the tracking system and the robotic platform to ensure smooth coordination and control. Additionally, the system could be designed to generate automated reports or alerts based on the tracking and segmentation results, providing real-time insights to the medical team during the procedure. This would enhance decision-making and procedural efficiency. By integrating the system seamlessly into existing clinical workflows and providing intuitive interfaces for physicians and medical staff, the real-time tracking and segmentation system can effectively support and enhance interventional procedures.
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