German Cancer Research Center (DKFZ), Im Neuenheimer Feld 280, D-69120 Heidelberg, Germany and Friedrich-Alexander-University (FAU), Henkestraße 91, D-91052 Erlangen, Germany.
Med Phys. 2013 Oct;40(10):101913. doi: 10.1118/1.4820537.
In image-guided radiation therapy (IGRT) valuable information for patient positioning, dose verification, and adaptive treatment planning is provided by an additional kV imaging unit. However, due to the limited gantry rotation speed during treatment the typical acquisition time is quite long. Tomographic images of the thorax suffer from motion blurring or, if a gated 4D reconstruction is performed, from significant streak artifacts. Our purpose is to provide a method that reliably estimates respiratory motion in presence of severe artifacts. The estimated motion vector fields are then used for motion-compensated image reconstruction to provide high quality respiratory-correlated 4D volumes for on-board cone-beam CT (CBCT) scans.
The proposed motion estimation method consists of a model that explicitly addresses image artifacts because in presence of severe artifacts state-of-the-art registration methods tend to register artifacts rather than anatomy. Our artifact model, e.g., generates streak artifacts very similar to those included in the gated 4D CBCT images, but it does not include respiratory motion. In combination with a registration strategy, the model gives an error estimate that is used to compensate the corresponding errors of the motion vector fields that are estimated from the gated 4D CBCT images. The algorithm is tested in combination with a cyclic registration approach using temporal constraints and with a standard 3D-3D registration approach. A qualitative and quantitative evaluation of the motion-compensated results was performed using simulated rawdata created on basis of clinical CT data. Further evaluation includes patient data which were scanned with an on-board CBCT system.
The model-based motion estimation method is nearly insensitive to image artifacts of gated 4D reconstructions as they are caused by angular undersampling. The motion is accurately estimated and our motion-compensated image reconstruction algorithm can correct for it. Motion artifacts of 3D standard reconstruction are significantly reduced, while almost no new artifacts are introduced.
Using the artifact model allows to accurately estimate and compensate for patient motion, even if the initial reconstructions are of very low image quality. Using our approach together with a cyclic registration algorithm yields a combination which shows almost no sensitivity to sparse-view artifacts and thus ensures both high spatial and high temporal resolution.
在图像引导放射治疗(IGRT)中,附加千伏成像单元为患者定位、剂量验证和自适应治疗计划提供了有价值的信息。然而,由于治疗过程中机架旋转速度有限,典型的采集时间相当长。胸部断层图像受到运动模糊的影响,或者如果进行门控 4D 重建,则会受到明显的条纹伪影的影响。我们的目的是提供一种方法,能够在存在严重伪影的情况下可靠地估计呼吸运动。然后,使用估计的运动矢量场进行运动补偿图像重建,以为机载锥形束 CT(CBCT)扫描提供高质量的呼吸相关 4D 容积。
所提出的运动估计方法包括一个明确解决图像伪影的模型,因为在存在严重伪影的情况下,最先进的配准方法往往会注册伪影而不是解剖结构。我们的伪影模型,例如,生成与门控 4D CBCT 图像中包含的条纹伪影非常相似的伪影,但不包括呼吸运动。与配准策略结合使用时,该模型会给出一个误差估计值,该值用于补偿从门控 4D CBCT 图像中估计的运动矢量场的相应误差。该算法与使用时间约束的循环配准方法和标准的 3D-3D 配准方法结合进行了测试。使用基于临床 CT 数据创建的模拟原始数据对运动补偿结果进行了定性和定量评估。进一步的评估包括使用机载 CBCT 系统扫描的患者数据。
基于模型的运动估计方法对门控 4D 重建的图像伪影几乎不敏感,因为它们是由角度欠采样引起的。运动被准确估计,并且我们的运动补偿图像重建算法可以对其进行校正。3D 标准重建的运动伪影显著减少,而几乎没有引入新的伪影。
使用伪影模型可以准确估计和补偿患者运动,即使初始重建的图像质量非常低。使用我们的方法与循环配准算法相结合,可以得到一种组合,该组合对稀疏视图伪影几乎没有敏感性,从而确保了高空间和高时间分辨率。