Prior-Adapted Progressive Time-Resolved CBCT Reconstruction Using a Dynamic Reconstruction and Motion Estimation Method.

ArXiv Pub Date : 2025-09-19
Ruizhi Zuo, Hua-Chieh Shao, You Zhang
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引用次数: 0

Abstract

Cone-beam CT (CBCT) provides on-board volumetric anatomy for image guidance and treatment adaptation in radiotherapy. To compensate for respiration-induced anatomical motion, time-resolved CBCT is highly desired to capture the spatiotemporal anatomical variations but faces challenges in accuracy and efficiency due to substantial optimization needed in image reconstruction and motion modeling. We proposed a fast time-resolved CBCT reconstruction framework, based on a dynamic reconstruction and motion estimation method with new reconstructions initialized and conditioned on prior reconstructions in an adaptive fashion (DREME-adapt). DREME-adapt reconstructs a time-resolved CBCT sequence from a fractional standard CBCT scan while simultaneously generating a machine learning-based motion model that allows single-projection-driven intra-treatment CBCT estimation and motion tracking. Via DREME-adapt, a virtual fraction is generated from a pre-treatment 4D-CT set of each patient for a clean, 'cold-start' reconstruction. For subsequent fractions of the same patient, DREME-adapt uses pre-derived motion models and reference CBCTs as initializations to drive a 'warm-start' reconstruction, based on a lower-cost refining strategy. Three strategies: DREME-cs which drops the 'warm-start' component, DREME-adapt-vfx which uses a fixed initialization (virtual fraction's reconstruction results), and DREME-adapt-pro which initialize reconstructions through a progressive daisy chain scheme (virtual fraction for fraction 1, fraction 1 for fraction 2, and so on), were evaluated on a digital phantom study and a patient study. DREME-adapt allows fast and accurate time-resolved CBCT reconstruction and enhances the clinical adoption potential of the DREME framework.

基于动态重建和运动估计方法的先验适应渐进时间分辨CBCT重建。
锥形束CT (CBCT)为放射治疗中的图像引导和治疗适应提供了机载体积解剖。为了补偿呼吸引起的解剖运动,人们迫切需要时间分辨CBCT来捕捉时空解剖变化,但由于图像重建和运动建模需要大量优化,因此在准确性和效率方面面临挑战。提出了一种基于动态重建和运动估计方法的快速时间分辨CBCT重建框架,该方法以自适应方式(DREME-adapt)初始化并以先前重建为条件初始化新的重建。DREME-adapt从分数级标准CBCT扫描中重建时间分辨CBCT序列,同时生成基于机器学习的运动模型,该模型允许单投影驱动的治疗内CBCT估计和运动跟踪。通过DREME-adapt,从每个患者的治疗前4D-CT集生成虚拟分数,用于清洁,“冷启动”重建。对于同一患者的后续部分,DREME-adapt使用预先导出的运动模型和参考cbct作为初始化,以低成本的精炼策略驱动“热启动”重建。三种策略:DREME-cs(放弃“热启动”组件),DREME-adapt-vfx(使用固定初始化(虚拟分数的重建结果))和DREME-adapt-pro(通过渐进式菊链方案初始化重建(虚拟分数为分数1,分数1为分数2,等等),在数字幻影研究和患者研究中进行了评估。DREME-adapt允许快速和准确的时间分辨CBCT重建,增强了DREME框架的临床应用潜力。
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