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A Bayesian approach for three-dimensional markerless tumor tracking using kV imaging during lung radiotherapy

机译:肺放疗期间使用KV成像的三维无价值肿瘤跟踪的贝叶斯方法

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摘要

The ability to monitor tumor motion without implanted markers can potentially enable broad access to more accurate and precise lung radiotherapy. A major challenge is that kilovoltage (kV) imaging based methods are rarely able to continuously track the tumor due to the inferior tumor visibility on 2D kV images. Another challenge is the estimation of 3D tumor position based on only 2D imaging information. The aim of this work is to address both challenges by proposing a Bayesian approach for markerless tumor tracking for the first time. The proposed approach adopts the framework of the extended Kalman filter, which combines a prediction and measurement steps to make the optimal tumor position update. For each imaging frame, the tumor position is first predicted by a respiratory-correlated model. The 2D tumor position on the kV image is then measured by template matching. Finally, the prediction and 2D measurement are combined based on the 3D distribution of tumor positions in the past 10s and the estimated uncertainty of template matching. To investigate the clinical feasibility of the proposed method, a total of 13 lung cancer patient datasets were used for retrospective validation, including 11 cone-beam CT scan pairs and two stereotactic ablative body radiotherapy cases. The ground truths for tumor motion were generated from the the 3D trajectories of implanted markers or beacons. The mean, standard deviation, and 95th percentile of the 3D tracking error were found to range from 1.6-2.9 mm, 0.6-1.5 mm, and 2.6-5.8 mm, respectively. Markerless tumor tracking always resulted in smaller errors compared to the standard of care. The improvement was the most pronounced in the superior-inferior (SI) direction, with up to 9.5 mm reduction in the 95th-percentile SI error for patients with >10 mm 5th-to-95th percentile SI tumor motion. The percentage of errors with 3D magnitude <5 mm was 96.5% for markerless tumor tracking and 84.1% for the standard of care. The feasibility of 3D markerless tumor tracking has been demonstrated on realistic clinical scenarios for the first time. The clinical implementation of the proposed method will enable more accurate and precise lung radiotherapy using existing hardware and workflow. Future work is focused on the clinical and real-time implementation of this method.
机译:监测没有植入标记的肿瘤运动的能力可能是可以广泛进入更准确和精确的肺放射疗法。主要挑战是,由于2D kV图像上的肿瘤可见性,千伏电压(KV)的成像方法很少能够连续跟踪肿瘤。另一个挑战是基于仅2D成像信息估计3D肿瘤位置。这项工作的目的是通过提出第一次无价值肿瘤跟踪的贝叶斯方法来解决这一挑战。所提出的方法采用扩展卡尔曼滤波器的框架,该框架结合了预测和测量步骤以使最佳肿瘤位置更新。对于每个成像框架,首先通过呼吸相关模型预测肿瘤位置。然后通过模板匹配测量KV图像上的2D肿瘤位置。最后,基于过去10s中的肿瘤位置的3D分布以及模板匹配的估计不确定性来组合预测和2D测量。为了研究该方法的临床可行性,共有13肺癌患者的数据集被用于回顾性验证,其中包括11锥束CT扫描对和两个立体定向烧蚀体放射治疗的情况下。从植入标记或信标的3D轨迹产生肿瘤运动的基础事实。 3D跟踪误差的平均值,标准偏差和第95百分位数分别为1.6-2.9 mm,0.6-1.5 mm和2.6-5.8 mm的范围。与护理标准相比,无价值肿瘤跟踪总是导致较小的误差。改善是在优越的(Si)方向上最明显的,95次百分位数的患者的高达9.5毫米,患者患者> 10mm 5至95百分位的患者SI肿瘤运动。 3D幅度<5毫米的误差百分比为无明显肿瘤跟踪的96.5%,护理标准的84.1%。第一次现实临床情景证明了3D无价值肿瘤跟踪的可行性。使用现有硬件和工作流程将使该方法的临床实施能够实现更准确和精确的肺放疗。未来的工作侧重于这种方法的临床和实时实施。

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