Department of Medical Physics, University of Wisconsin-Madison, Madison, WI, USA.
Department of Radiology, University of Wisconsin-Madison, Madison, WI, USA.
Med Phys. 2018 Jun;45(6):2583-2594. doi: 10.1002/mp.12913. Epub 2018 May 3.
Transcatheter aortic valve replacement (TAVR) is a minimally invasive procedure in which a prosthetic heart valve is placed and expanded within a defective aortic valve. The device placement is commonly performed using two-dimensional (2D) fluoroscopic imaging. Within this work, we propose a novel technique to track the motion and deformation of the prosthetic valve in three dimensions based on biplane fluoroscopic image sequences.
The tracking approach uses a parameterized point cloud model of the valve stent which can undergo rigid three-dimensional (3D) transformation and different modes of expansion. Rigid elements of the model are individually rotated and translated in three dimensions to approximate the motions of the stent. Tracking is performed using an iterative 2D-3D registration procedure which estimates the model parameters by minimizing the mean-squared image values at the positions of the forward-projected model points. Additionally, an initialization technique is proposed, which locates clusters of salient features to determine the initial position and orientation of the model.
The proposed algorithms were evaluated based on simulations using a digital 4D CT phantom as well as experimentally acquired images of a prosthetic valve inside a chest phantom with anatomical background features. The target registration error was 0.12 ± 0.04 mm in the simulations and 0.64 ± 0.09 mm in the experimental data.
The proposed algorithm could be used to generate 3D visualization of the prosthetic valve from two projections. In combination with soft-tissue sensitive-imaging techniques like transesophageal echocardiography, this technique could enable 3D image guidance during TAVR procedures.
经导管主动脉瓣置换术(TAVR)是一种微创程序,其中在有缺陷的主动脉瓣内放置和扩张人工心脏瓣膜。该设备的放置通常使用二维(2D)荧光透视成像来完成。在这项工作中,我们提出了一种基于双平面荧光透视图像序列来跟踪人工瓣膜三维运动和变形的新方法。
跟踪方法使用瓣膜支架的参数化点云模型,该模型可以进行刚性三维(3D)变换和不同的扩张模式。模型的刚性元素分别在三维空间中旋转和平移,以近似支架的运动。跟踪通过迭代的 2D-3D 配准过程来执行,该过程通过最小化正向投影模型点位置处的均方图像值来估计模型参数。此外,提出了一种初始化技术,该技术通过定位显著特征的聚类来确定模型的初始位置和方向。
基于使用数字 4D CT 体模的模拟以及使用具有解剖背景特征的胸部体模内部的人工瓣膜的实验采集图像对提出的算法进行了评估。在模拟中,目标注册误差为 0.12±0.04mm,在实验数据中为 0.64±0.09mm。
所提出的算法可用于从两个投影生成人工瓣膜的 3D 可视化。与敏感软组织成像技术(如经食管超声心动图)结合使用,该技术可以在 TAVR 手术中实现 3D 图像引导。