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Model-Based Sparse-to-Dense Image Registration for Realtime Respiratory Motion Estimation in Image-Guided Interventions

机译:基于模型的稀疏到密集图像配准,用于图像引导干预中的实时呼吸运动估计

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Objective: Intra-interventional respiratory motion estimation is becoming a vital component in modern radiation therapy delivery or high intensity focused ultrasound systems. The treatment quality could tremendously benefit from more accurate dose delivery using real-time motion tracking based on magnetic-resonance (MR) or ultrasound (US) imaging techniques. However, current practice often relies on indirect measurements of external breathing indicators, which has an inherently limited accuracy. In this work, we present a new approach that is applicable to challenging real-time capable imaging modalities like MR-Linac scanners and 3D-US by employing contrast-invariant feature descriptors. Methods: We combine GPU-accelerated image-based realtime tracking of sparsely distributed feature points and a dense patient-specific motion-model for regularisation and sparse-to-dense interpolation within a unified optimization framework. Results: We achieve highly accurate motion predictions with landmark errors of approximate to 1 mm for MRI (and approximate to 2 mm for US) and substantial improvements over classical template tracking strategies. Conclusion: Our technique can model physiological respiratory motion more realistically and deals particularly well with the sliding of lungs against the rib cage. Significance: Our model-based sparse-to-dense image registration approach allows for accurate and realtime respiratory motion tracking in image-guided interventions.
机译:目的:介入呼吸运动估计正在成为现代放射治疗或高强度聚焦超声系统中的重要组成部分。使用基于磁共振(MR)或超声(US)成像技术的实时运动跟踪,可以更准确地进行剂量输送,从而极大地受益于治疗质量。然而,当前的实践通常依赖于外部呼吸指示器的间接测量,这固有地具有有限的准确性。在这项工作中,我们提出了一种新方法,该方法可通过采用不变不变的特征描述符,来挑战像MR-Linac扫描仪和3D-US这样具有实时性的成像方式。方法:我们将基于GPU加速的基于图像的稀疏分布特征点的实时跟踪与一个针对特定患者的密集运动模型相结合,以在统一的优化框架内进行正则化和稀疏到密集的插值。结果:我们实现了高度精确的运动预测,其中MRI的界标误差约为1毫米(美国的约为2毫米),并且相对于经典模板跟踪策略而言有了实质性的改进。结论:我们的技术可以更真实地模拟生理呼吸运动,并且特别适合处理肺部相对于肋骨的滑动。启示:我们基于模型的稀疏到密集图像配准方法允许在图像指导的干预措施中进行准确,实时的呼吸运动跟踪。

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