A Novel Application of Principal Surfaces to Segmentation in 4D-CT for Radiation Treatment Planning

S. You, E. Cansizoglu, Deniz Erdoğmuş, J. Tanyi, Jayashree Kalpathy-Cramer
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引用次数: 3

Abstract

Radiation therapy is one of the most effective options used in the treatment of about half of all people with cancer. A critical goal in radiation therapy is to deliver optimal radiation doses to the observed tumor while sparing the surrounding healthy tissues. Radiation oncologists typically manually delineate normal and diseased structures on three-dimensional computed tomography~(3D-CT) scans. Manual delineation is a labor intensive, tedious and time-consuming task. In recent years, concerns about respiration induced motion have led to the popularity of four-dimensional computed tomography~(4D-CT) for the tracking of tumors and deformation of organs. However, as manually contouring in all phases would be prohibitively expensive, the development of fast, robust, and automatic segmentation tools has been an active area of research in 4D radiotherapy. In this paper, we describe a novel application of principal surfaces for the propagation of contours in 4D-CT studies. Regions of interest~(ROIs) are manually delineated slice-by-slice in the reference 3D-CT scans. Edges are detected on all of the slices of the target 3D-CT phase. A kernel density estimation~(KDE) based on the detected edges is then calculated. The principal surface algorithm is applied to find the ridges of the edge KDE to provide the object contours. Manually drawn contours from the reference phase are used as an initialization. Contours of ROIs are propagated recursively in all consecutive phases to complete a respiration cycle. Results are provided for a phantom data set of simulated tumor motion as well as on a de-identified data set of the lung of a patient. Evaluation of the efficacy of automatic segmentation in organs and tumors are based on the comparison between manually drawn contours and automatically delineated contours. The Dice coefficients are approximately 0.97 for the lung tumor on the phantom data sets and 0.95 for the patient data sets. The centroid distances between manually delineated lung volume and automatically segmented lung volume in each CT direction are
主曲面分割在4D-CT放射治疗规划中的新应用
放射治疗是治疗大约一半癌症患者最有效的选择之一。放射治疗的一个关键目标是向观察到的肿瘤提供最佳的辐射剂量,同时保留周围的健康组织。放射肿瘤学家通常在三维计算机断层扫描(3D-CT)上手动描绘正常和病变结构。手工描绘是一项劳动密集、繁琐且耗时的任务。近年来,由于对呼吸引起的运动的关注,四维计算机断层扫描(4D-CT)被广泛应用于肿瘤和器官变形的跟踪。然而,由于在所有阶段手动轮廓将是非常昂贵的,快速,鲁棒和自动分割工具的开发一直是4D放疗研究的活跃领域。在本文中,我们描述了主曲面在4D-CT研究中传播轮廓的新应用。在参考3D-CT扫描中,逐片手动划定感兴趣区域(roi)。在目标3D-CT阶段的所有切片上检测边缘。然后根据检测到的边缘计算核密度估计~(KDE)。采用主曲面算法求边缘KDE的脊线,给出目标轮廓。从参考阶段手动绘制的轮廓被用作初始化。roi的轮廓在所有连续阶段递归传播,以完成呼吸循环。结果提供了模拟肿瘤运动的幻影数据集以及患者肺的去识别数据集。对器官和肿瘤自动分割效果的评价是基于人工绘制的轮廓和自动绘制的轮廓的比较。幻象数据集上肺肿瘤的Dice系数约为0.97,患者数据集的Dice系数约为0.95。人工圈定的肺体积与自动分割的肺体积在各CT方向上的质心距离为
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