Pevsner A, Davis B, Joshi S, Hertanto A, Mechalakos J, Yorke E, Rosenzweig K, Nehmeh S, Erdi Y E, Humm J L, Larson S, Ling C C, Mageras G S
Department of Medical Physics, Memorial Sloan-Kettering Cancer Center, New York, New York 10021, USA.
Med Phys. 2006 Feb;33(2):369-76. doi: 10.1118/1.2161408.
We have evaluated an automated registration procedure for predicting tumor and lung deformation based on CT images of the thorax obtained at different respiration phases. The method uses a viscous fluid model of tissue deformation to map voxels from one CT dataset to another. To validate the deformable matching algorithm we used a respiration-correlated CT protocol to acquire images at different phases of the respiratory cycle for six patients with nonsmall cell lung carcinoma. The position and shape of the deformable gross tumor volumes (GTV) at the end-inhale (EI) phase predicted by the algorithm was compared to those drawn by four observers. To minimize interobserver differences, all observers used the contours drawn by a single observer at end-exhale (EE) phase as a guideline to outline GTV contours at EI. The differences between model-predicted and observer-drawn GTV surfaces at EI, as well as differences between structures delineated by observers at EI (interobserver variations) were evaluated using a contour comparison algorithm written for this purpose, which determined the distance between the two surfaces along different directions. The mean and 90% confidence interval for model-predicted versus observer-drawn GTV surface differences over all patients and all directions were 2.6 and 5.1 mm, respectively, whereas the mean and 90% confidence interval for interobserver differences were 2.1 and 3.7 mm. We have also evaluated the algorithm's ability to predict normal tissue deformations by examining the three-dimensional (3-D) vector displacement of 41 landmarks placed by each observer at bronchial and vascular branch points in the lung between the EE and EI image sets (mean and 90% confidence interval displacements of 11.7 and 25.1 mm, respectively). The mean and 90% confidence interval discrepancy between model-predicted and observer-determined landmark displacements over all patients were 2.9 and 7.3 mm, whereas interobserver discrepancies were 2.8 and 6.0 mm. Paired t tests indicate no significant statistical differences between model predicted and observer drawn structures. We conclude that the accuracy of the algorithm to map lung anatomy in CT images at different respiratory phases is comparable to the variability in manual delineation. This method has therefore the potential for predicting and quantifying respiration-induced tumor motion in the lung.
我们评估了一种基于在不同呼吸阶段获得的胸部CT图像来预测肿瘤和肺部变形的自动配准程序。该方法使用组织变形的粘性流体模型将一个CT数据集中的体素映射到另一个数据集。为了验证可变形匹配算法,我们使用了一种呼吸相关CT协议,为6例非小细胞肺癌患者在呼吸周期的不同阶段采集图像。将算法预测的吸气末(EI)阶段可变形大体肿瘤体积(GTV)的位置和形状与4名观察者绘制的结果进行比较。为了尽量减少观察者之间的差异,所有观察者都以一名观察者在呼气末(EE)阶段绘制的轮廓为指导,来勾勒EI阶段的GTV轮廓。使用为此编写的轮廓比较算法评估EI阶段模型预测的和观察者绘制的GTV表面之间的差异,以及观察者在EI阶段描绘的结构之间的差异(观察者间差异),该算法确定了两个表面在不同方向上的距离。所有患者和所有方向上模型预测与观察者绘制的GTV表面差异的平均值和90%置信区间分别为2.6和5.1毫米,而观察者间差异的平均值和90%置信区间为2.1和3.7毫米。我们还通过检查每位观察者在EE和EI图像集之间放置在肺部支气管和血管分支点的41个标志点的三维(3-D)矢量位移,评估了该算法预测正常组织变形的能力(平均位移和90%置信区间位移分别为11.7和25.1毫米)。所有患者中模型预测与观察者确定的标志点位移之间的平均差异和90%置信区间为2.9和7.3毫米,而观察者间差异为2.8和6.0毫米。配对t检验表明,模型预测的和观察者绘制的结构之间没有显著的统计学差异。我们得出结论,该算法在不同呼吸阶段的CT图像中映射肺部解剖结构的准确性与手动描绘的变异性相当。因此,该方法具有预测和量化肺部呼吸诱导肿瘤运动的潜力。