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Quantifying the accuracy of automated structure segmentation in 4D CT images using a deformable image registration algorithm

机译:使用可变形图像配准算法量化4D CT图像中自动结构分割的准确性

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摘要

Four-dimensional (4D) radiotherapy is the explicit inclusion of the temporal changes in anatomy during the imaging, planning, and delivery of radiotherapy. One key component of 4D radiotherapy planning is the ability to automatically (“auto”) create contours on all of the respiratory phase computed tomography (CT) datasets comprising a 4D CT scan, based on contours manually drawn on one CT image set from one phase. A tool that can be used to automatically propagate manually drawn contours to CT scans of other respiratory phases is deformable image registration. The purpose of the current study was to geometrically quantify the difference between automatically generated contours with manually drawn contours. Four-DCT data sets of 13 patients consisting of ten three-dimensional CT image sets acquired at different respiratory phases were used for this study. Tumor and normal tissue structures [gross tumor volume (GTV), esophagus, right lung, left lung, heart and cord] were manually drawn on each respiratory phase of each patient. Large deformable diffeomorphic image registration was performed to map each CT set from the peak-inhale respiration phase to the CT image sets corresponding with subsequent respiration phases. The calculated displacement vector fields were used to deform contours automatically drawn on the inhale phase to the other respiratory phase CT image sets. The code was interfaced to a treatment planning system to view the resulting images and to obtain the volumetric, displacement, and surface congruence information; 692 automatically generated structures were compared with 692 manually drawn structures. The auto- and manual methods showed similar trends, with a smaller difference observed between the GTVs than other structures. The auto-contoured structures agree with the manually drawn structures, especially in the case of the GTV, to within published inter-observer variations. For the GTV, fractional volumes agree to within 0.2±0.1, center of mass displacements agree to within 0.5±1.5 mm, and agreement of surface congruence is 0.0±1.1 mm. The surface congruence between automatic and manual contours for the GTV, heart, left lung, right lung and esophagus was less than 5 mm in 99%, 94%, 94%, 91% and 89%, respectively. Careful assessment of the performance of automatic algorithms is needed in the presence of 4D CT artifacts.
机译:四维(4D)放射治疗是在放射治疗的成像,计划和交付过程中明确包含解剖结构的时间变化。 4D放射治疗计划的一个关键组成部分是能够基于在一个阶段的一张CT图像上手动绘制的轮廓,自动(“自动”)在包括4D CT扫描在内的所有呼吸阶段计算机断层扫描(CT)数据集上创建轮廓。可用于将手动绘制的轮廓自动传播到其他呼吸阶段的CT扫描的工具是可变形图像配准。当前研究的目的是在几何上量化自动绘制的轮廓与手动绘制的轮廓之间的差异。本研究使用13例患者的4个DCT数据集,包括在不同呼吸阶段采集的10个三维CT图像集。在每个患者的每个呼吸阶段手动绘制肿瘤和正常组织结构[大肿瘤体积(GTV),食道,右肺,左肺,心脏和脐带]。进行了较大的可变形微晶图像配准,以将每个CT集合从吸气峰值呼吸阶段映射到与后续呼吸阶段相对应的CT图像集合。计算出的位移矢量场用于将在吸气阶段自动绘制的轮廓变形为其他呼吸阶段CT图像集。该代码被连接到治疗计划系统,以查看生成的图像并获得体积,位移和表面一致性信息。将692个自动生成的结构与692个手动绘制的结构进行了比较。自动和手动方法显示出相似的趋势,与其他结构相比,GTV之间观察到的差异较小。自动轮廓化的结构与手动绘制的结构(在GTV的情况下)一致,以在已发布的观察者间变化内。对于GTV,分数体积在0.2±0.1毫米之内,质心位移中心在0.5±1.5毫米之内,表面一致性在0.0±1.1毫米。 GTV,心脏,左肺,右肺和食道的自动和手动轮廓之间的表面一致性分别小于5 mm,分别为99%,94%,94%,91%和89%。在存在4D CT伪影的情况下,需要仔细评估自动算法的性能。

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