基于交叉模态匹配变压器的TEVAR x射线和CT图像配准

Meng Li, Changyan Lin, Lixia Shu, Xin Pu, Yu Chen, Heng Wu, Jiasong Li, Hongshuai Cao
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引用次数: 0

摘要

由于明确的介入内二维x线与未明确的介入前三维计算机断层扫描(CT)之间的映射关系是不确定的,因此通常使用辅助定位装置或身体标记物(如医疗植入物)来确定这种关系。然而,由于实际情况复杂,这种方法在临床上还不能广泛应用。为了确定映射关系,在没有辅助设备和标记的情况下实现对人体的初始化后估计,提出了一种跨模态匹配变压器网络,直接匹配二维x射线和三维CT图像。该方法首先从二维x射线和三维CT图像中学习骨骼特征。然后将特征转换为1D x射线和CT表示向量,并使用变压器模块将其组合。因此,训练良好的网络可以直接预测任意二维x射线与三维CT之间的空间对应关系。实验结果表明,将该方法与常规方法相结合,所获得的精度和速度可以满足临床干预的基本需求,为介入内配准提供了新的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crossmodal Matching Transformer based X-ray and CT image registration for TEVAR
Since the mapping relationship between definitized intra-interventional 2D X-ray and undefined pre-interventional 3D Computed Tomography(CT) is uncertain, auxiliary positioning devices or body markers, such as medical implants, are commonly used to determine this relationship. However, such approaches can not be widely used in clinical due to the complex realities. To determine the mapping relationship, and achieve a initializtion post estimation of human body without auxiliary equipment or markers, a cross-modal matching transformer network is proposed to matching 2D X-ray and 3D CT images directly. The proposed approach first learns skeletal features from 2D X-ray and 3D CT images. The features are then converted into 1D X-ray and CT representation vectors, which are combined using a transformer module. As a result, the well-trained network can directly predict the spatial correspondence between arbitrary 2D X-ray and 3D CT. The experimental results show that when combining our approach with the conventional approach, the achieved accuracy and speed can meet the basic clinical intervention needs, and it provides a new direction for intra-interventional registration.
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