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Real time cardiac image registration during respiration: a time series prediction approach

机译:呼吸过程中实时心脏图像配准:时间序列预测方法

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摘要

Cardiac image registration is drawing attention for a range of merits in integrating and enhancing real-time (RT) images using a priori and complementary images of the myocardium, which might additionally be captured from other modalities. Myocardial stem cell delivery and radio-frequency ablation are some of the cases that could benefit from RT registration of high quality images. Unfortunately, most of these applications are of long duration, and must account in some manner for respiratory motion. Moreover, registration is not so keen as to compensate for these motions. Time series prediction techniques could compensate this shortcoming by proposing future approximate displacements caused by respiratory motion. In this study, we propose a three-stage framework for RT 2D into 3D cardiac image registration during respiration, composed of prior registration to extract the trend of respiratory motion and to calibrate a set of time series predictors for future motion prediction, as well RT registration to update estimated transform parameters. The proposed approach was validated in the course of four simulations and shows acceptable results for clinical circumstances.
机译:心脏图像配准使用心肌的先验和互补图像在整合和增强实时(RT)图像方面的一系列优点吸引了人们的注意,这些信息可能还可以从其他方式中捕获。心肌干细胞递送和射频消融是可以从高质量图像的RT配准中受益的一些情况。不幸的是,这些应用中的大多数持续时间长,并且必须以某种方式说明呼吸运动。而且,注册并不热衷于补偿这些运动。时间序列预测技术可以通过提出呼吸运动引起的未来近似位移来弥补这一缺点。在这项研究中,我们提出了一个三阶段的框架,用于将RT 2D转换为呼吸过程中的3D心脏图像配准,其中包括事先配准以提取呼吸运动的趋势并校准一组时间序列预测因子以用于将来的运动预测以及RT注册以更新估计的变换参数。所提出的方法在四个模拟过程中得到了验证,并在临床情况下显示出可接受的结果。

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