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Catheter Tracking and Data Fusion for reducing the X-ray exposition in an Interventional Radiology procedure

机译:导管跟踪和数据融合,以减少介入放射学程序中的X射线暴露

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Although the many advantages of Interventional Radiology not only being a minimally invasive surgery but also providing minimal risk of infection and better recuperation for the patient. However, this procedure can cause serious damage (cancer or burnt skin) to the patient and especially to the surgeons if they are exposed for long periods to the X-ray radiation. In the state of art, it has been found new remote catheter navigation system in which the equipment uses magnetic fields for controlling and moving the catheter from an external cabin. Additionally, large equipment needs to be installed in the operating room. In order to limit the doses of X-rays without installing large equipment in the operating room, the aim is to decrease the images coming from X rays imagers using sensors that can be integrated into the catheter (like Fibber Bragg Gratings Sensors inside the catheter or MEMS sensors) to reconstruct an image without the need of continuous imaging. In order to do that, accurate and reliable information on the position of the catheter is required to correct the drift of the catheter's sensors. This position can therefore be obtained by image processing on X-ray images (noisy with artefacts). Previous work done by the Medic@ team has shown that conventional image processing approaches are generally too slow or not precise enough. The use of a U-Net convohitional neural network is then a possible solution for detecting the entire catheter (body and head) and obtaining the coordinates of its end. In this article, we will explain and show our first results using the U-net architecture for detecting the tip and the body of the catheter and a kahnan filter used for data fusion to evaluate its efficiency to reducing the quantity of images needed in a curvilinear vessel, using generated data.
机译:尽管介入放射学的许多优点不仅是微创手术,而且还为患者提供了最小的感染风险和更好的康复。但是,如果患者长时间暴露在X射线辐射下,此过程可能会对患者尤其是外科医生造成严重损害(癌症或皮肤灼伤)。在现有技术中,已经发现了新的远程导管导航系统,其中该设备使用磁场来控制导管并将其从外部机舱移开。另外,需要在手术室中安装大型设备。为了在手术室中不安装大型设备的情况下限制X射线的剂量,目的是使用可集成到导管中的传感器(例如,导管内的Fibber Bragg光栅传感器或MEMS传感器),无需连续成像即可重建图像。为此,需要有关导管位置的准确和可靠的信息来校正导管传感器的漂移。因此,可以通过对X射线图像进行图像处理(带有伪影的噪点)来获得该位置。 Medic @团队先前所做的工作表明,传统的图像处理方法通常太慢或不够精确。因此,使用U-Net卷积神经网络是检测整个导管(身体和头部)并获取其末端坐标的可能解决方案。在本文中,我们将解释并展示我们的第一个结果,即使用U-net体系结构检测导管的尖端和主体,以及用于数据融合的kahnan过滤器以评估其效率,以减少曲线所需的图像数量船只,使用生成的数据。

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