Cha Jungwon, Farhangi Mohammad Mehdi, Dunlap Neal, Amini Amir A
Medical Imaging Laboratory, University of Louisville, Louisville, KY, 40292, USA.
Department of Radiation Oncology, Brown Cancer Center, University of Louisville, Louisville, KY, 40202, USA.
Med Phys. 2018 Jan;45(1):297-306. doi: 10.1002/mp.12690. Epub 2017 Dec 11.
We have developed a robust tool for performing volumetric and temporal analysis of nodules from respiratory gated four-dimensional (4D) CT. The method could prove useful in IMRT of lung cancer.
We modified the conventional graph-cuts method by adding an adaptive shape prior as well as motion information within a signed distance function representation to permit more accurate and automated segmentation and tracking of lung nodules in 4D CT data. Active shape models (ASM) with signed distance function were used to capture the shape prior information, preventing unwanted surrounding tissues from becoming part of the segmented object. The optical flow method was used to estimate the local motion and to extend three-dimensional (3D) segmentation to 4D by warping a prior shape model through time. The algorithm has been applied to segmentation of well-circumscribed, vascularized, and juxtapleural lung nodules from respiratory gated CT data.
In all cases, 4D segmentation and tracking for five phases of high-resolution CT data took approximately 10 min on a PC workstation with AMD Phenom II and 32 GB of memory. The method was trained based on 500 breath-held 3D CT data from the LIDC data base and was tested on 17 4D lung nodule CT datasets consisting of 85 volumetric frames. The validation tests resulted in an average Dice Similarity Coefficient (DSC) = 0.68 for all test data. An important by-product of the method is quantitative volume measurement from 4D CT from end-inspiration to end-expiration which will also have important diagnostic value.
The algorithm performs robust segmentation of lung nodules from 4D CT data. Signed distance ASM provides the shape prior information which based on the iterative graph-cuts framework is adaptively refined to best fit the input data, preventing unwanted surrounding tissue from merging with the segmented object.
我们开发了一种强大的工具,用于对呼吸门控四维(4D)CT中的结节进行容积和时间分析。该方法可能对肺癌的调强放射治疗有用。
我们对传统的图割方法进行了改进,在有符号距离函数表示中添加了自适应形状先验以及运动信息,以允许在4D CT数据中更准确和自动地分割和跟踪肺结节。使用带有有符号距离函数的主动形状模型(ASM)来捕获形状先验信息,防止不需要的周围组织成为分割对象的一部分。光流方法用于估计局部运动,并通过随时间变形先验形状模型将三维(3D)分割扩展到4D。该算法已应用于从呼吸门控CT数据中分割边界清晰、血管化且靠近胸膜的肺结节。
在所有情况下,在配备AMD Phenom II和32GB内存的PC工作站上,对高分辨率CT数据的五个阶段进行4D分割和跟踪大约需要10分钟。该方法基于来自LIDC数据库的500个屏气3D CT数据进行训练,并在由85个容积帧组成的17个4D肺结节CT数据集中进行测试。验证测试得出所有测试数据的平均骰子相似系数(DSC)=0.68。该方法的一个重要副产品是从吸气末到呼气末的4D CT定量容积测量,这也将具有重要的诊断价值。
该算法对4D CT数据中的肺结节进行了可靠的分割。有符号距离ASM提供形状先验信息,基于迭代图割框架对其进行自适应优化,以最佳拟合输入数据,防止不需要的周围组织与分割对象合并。