School of Computer Science and Technology, Center for Biomedical Imaging and Bioinformatics, Huazhong University of Science and Technology, Wuhan, Hubei, People's Republic of China. The Key Laboratory of Image Processing and Intelligent Control, Ministry of Education, Wuhan, Hubei, People's Republic of China.
Phys Med Biol. 2017 Dec 19;63(1):015017. doi: 10.1088/1361-6560/aa9473.
A robust contour propagation method is proposed to help physicians delineate lung tumors on all phase images of four-dimensional computed tomography (4D-CT) by only manually delineating the contours on a reference phase. The proposed method models the trajectory surface swept by a contour in a respiratory cycle as a tensor-product surface of two closed cubic B-spline curves: a non-uniform B-spline curve which models the contour and a uniform B-spline curve which models the trajectory of a point on the contour. The surface is treated as a deformable entity, and is optimized from an initial surface by moving its control vertices such that the sum of the intensity similarities between the sampling points on the manually delineated contour and their corresponding ones on different phases is maximized. The initial surface is constructed by fitting the manually delineated contour on the reference phase with a closed B-spline curve. In this way, the proposed method can focus the registration on the contour instead of the entire image to prevent the deformation of the contour from being smoothed by its surrounding tissues, and greatly reduce the time consumption while keeping the accuracy of the contour propagation as well as the temporal consistency of the estimated respiratory motions across all phases in 4D-CT. Eighteen 4D-CT cases with 235 gross tumor volume (GTV) contours on the maximal inhale phase and 209 GTV contours on the maximal exhale phase are manually delineated slice by slice. The maximal inhale phase is used as the reference phase, which provides the initial contours. On the maximal exhale phase, the Jaccard similarity coefficient between the propagated GTV and the manually delineated GTV is 0.881 [Formula: see text] 0.026, and the Hausdorff distance is 3.07 [Formula: see text] 1.08 mm. The time for propagating the GTV to all phases is 5.55 [Formula: see text] 6.21 min. The results are better than those of the fast adaptive stochastic gradient descent B-spline method, the 3D + t B-spline method and the diffeomorphic demons method. The proposed method is useful for helping physicians delineate target volumes efficiently and accurately.
提出了一种稳健的轮廓传播方法,通过仅在参考相位上手动描绘轮廓,帮助医生在四维 CT(4D-CT)的所有相位图像上描绘肺肿瘤。所提出的方法将轮廓在呼吸周期中扫过的轨迹表面建模为两个封闭的立方 B 样条曲线的张量积表面:一个非均匀 B 样条曲线,用于建模轮廓,一个均匀 B 样条曲线,用于建模轮廓上的点的轨迹。该表面被视为可变形实体,并通过移动其控制顶点进行优化,以使手动描绘轮廓上的采样点与其在不同相位上的对应点之间的强度相似度之和最大化。初始表面是通过用封闭的 B 样条曲线拟合参考相位上的手动描绘轮廓来构建的。通过这种方式,所提出的方法可以将配准集中在轮廓上,而不是整个图像上,以防止轮廓的变形被其周围组织平滑,并大大减少时间消耗,同时保持轮廓传播的准确性以及 4D-CT 中所有相位上估计呼吸运动的时间一致性。对 18 个 4D-CT 病例的最大吸气相位上的 235 个大体肿瘤体积(GTV)轮廓和最大呼气相位上的 209 个 GTV 轮廓进行了手动逐层描绘。最大吸气相位用作参考相位,提供初始轮廓。在最大呼气相位上,传播的 GTV 和手动描绘的 GTV 之间的 Jaccard 相似系数为 0.881 [公式:见正文] 0.026,Hausdorff 距离为 3.07 [公式:见正文] 1.08 毫米。传播 GTV 到所有相位的时间为 5.55 [公式:见正文] 6.21 分钟。结果优于快速自适应随机梯度下降 B 样条方法、3D + t B 样条方法和微分同胚恶魔方法。该方法有助于医生高效、准确地描绘靶区。