Biomedical Informatics Program, Stanford University, Stanford, CA 94305, USA.
Phys Med Biol. 2012 Aug 7;57(15):4905-30. doi: 10.1088/0031-9155/57/15/4905. Epub 2012 Jul 13.
Respiratory motion poses a major challenge in lung radiotherapy. Based on 4D CT images, a variety of intensity-based deformable registration techniques have been proposed to study the pulmonary motion. However, the accuracy achievable with these approaches can be sub-optimal because the deformation is defined globally in space. Therefore, the accuracy of the alignment of local structures may be compromised. In this work, we propose a novel method to detect a large collection of natural junction structures in the lung and use them as the reliable markers to track the lung motion. Specifically, detection of the junction centers and sizes is achieved by analysis of local shape profiles on one segmented image. To track the temporal trajectory of a junction, the image intensities within a small region of interest surrounding the center are selected as its signature. Under the assumption of the cyclic motion, we describe the trajectory by a closed B-spline curve and search for the control points by maximizing a metric of combined correlation coefficients. Local extrema are suppressed by improving the initial conditions using random walks from pair-wise optimizations. Several descriptors are introduced to analyze the motion trajectories. Our method was applied to 13 real 4D CT images. More than 700 junctions in each case are detected with an average positive predictive value of greater than 90%. The average tracking error between automated and manual tracking is sub-voxel and smaller than the published results using the same set of data.
在肺部放射治疗中,呼吸运动是一个主要的挑战。基于 4D CT 图像,已经提出了多种基于强度的变形配准技术来研究肺部运动。然而,这些方法的准确性可能并不理想,因为变形是在全局空间中定义的。因此,局部结构的对齐准确性可能会受到影响。在这项工作中,我们提出了一种新的方法来检测肺部大量的自然连接结构,并将其用作可靠的标记来跟踪肺部运动。具体来说,通过对一个分割图像的局部形状轮廓进行分析来实现连接中心和大小的检测。为了跟踪连接的时间轨迹,选择围绕中心的小感兴趣区域内的图像强度作为其特征。在循环运动的假设下,我们通过最大化相关系数的度量来描述由闭合 B 样条曲线控制的轨迹。通过从两两优化中随机游走来改进初始条件来抑制局部极值。引入了几个描述符来分析运动轨迹。我们的方法应用于 13 组真实的 4D CT 图像。在每种情况下,检测到的连接数超过 700 个,平均阳性预测值大于 90%。自动跟踪和手动跟踪之间的平均跟踪误差小于使用相同数据集的已发表结果。