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Joint surface reconstruction and 4D deformation estimation from sparse data and prior knowledge for marker-less Respiratory motion tracking

机译:基于稀疏数据和无标记呼吸运动跟踪的先验知识进行关节表面重建和4D变形估计

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Purpose: The intraprocedural tracking of respiratory motion has the potential to substantially improve image-guided diagnosis and interventions. The authors have developed a sparse-to-dense registration approach that is capable of recovering the patient's external 3D body surface and estimating a 4D (3D + time) surface motion field from sparse sampling data and patient-specific prior shape knowledge. Methods: The system utilizes an emerging marker-less and laser-based active triangulation (AT) sensor that delivers sparse but highly accurate 3D measurements in real-time. These sparse position measurements are registered with a dense reference surface extracted from planning data. Thereby a dense displacement field is recovered, which describes the spatio-temporal 4D deformation of the complete patient body surface, depending on the type and state of respiration. It yields both a reconstruction of the instantaneous patient shape and a high-dimensional respiratory surrogate for respiratory motion tracking. The method is validated on a 4D CT respiration phantom and evaluated on both real data from an AT prototype and synthetic data sampled from dense surface scans acquired with a structured-light scanner. Results: In the experiments, the authors estimated surface motion fields with the proposed algorithm on 256 datasets from 16 subjects and in different respiration states, achieving a mean surface reconstruction accuracy of ±0.23 mm with respect to ground truth data - down from a mean initial surface mismatch of 5.66 mm. The 95th percentile of the local residual mesh-to-mesh distance after registration did not exceed 1.17 mm for any subject. On average, the total runtime of our proof of concept CPU implementation is 2.3 s per frame, outperforming related work substantially. Conclusions: In external beam radiation therapy, the approach holds potential for patient monitoring during treatment using the reconstructed surface, and for motion-compensated dose delivery using the estimated 4D surface motion field in combination with external-internal correlation models.
机译:目的:呼吸运动的过程内跟踪可能会大大改善以图像为指导的诊断和干预措施。作者开发了一种稀疏到密集的配准方法,该方法能够恢复患者的外部3D体表并从稀疏的采样数据和患者特定的先前形状知识中估算4D(3D +时间)表面运动场。方法:该系统利用新兴的无标记和基于激光的主动三角测量(AT)传感器,可实时提供稀疏但高度准确的3D测量。这些稀疏位置测量值与从计划数据中提取的密集参考曲面对齐。因此,恢复了密集的位移场,该场描述了整个患者身体表面的时空4D变形,具体取决于呼吸的类型和状态。它既可以重建患者的即时形状,又可以提供用于呼吸运动追踪的高维呼吸替代物。该方法在4D CT呼吸体模上进行了验证,并根据AT原型的真实数据和使用结构化光扫描仪采集的密集表面扫描采样的合成数据进行了评估。结果:在实验中,作者使用提出的算法在来自不同呼吸状态的16个受试者的256个数据集上估计了表面运动场,相对于地面真实数据,平均表面重构精度为±0.23 mm,低于平均初始值表面不匹配为5.66毫米。注册后,任何对象的局部残留网格间距离的第95个百分位数均不超过1.17毫米。平均而言,我们概念验证CPU实施的总运行时间为每帧2.3 s,大大胜过相关工作。结论:在外部束放射治疗中,该方法具有使用重建的表面在治疗过程中对患者进行监测的潜力,以及使用估计的4D表面运动场与内外相关模型相结合的运动补偿剂量输送的潜力。

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