首页> 外文期刊>International Journal of Radiation Oncology, Biology, Physics >Comparison of human and automatic segmentations of kidneys from CT images.
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Comparison of human and automatic segmentations of kidneys from CT images.

机译:从CT图像对肾脏进行人为分割和自动分割的比较。

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PURPOSE: A controlled observer study was conducted to compare a method for automatic image segmentation with conventional user-guided segmentation of right and left kidneys from planning computerized tomographic (CT) images. METHODS AND MATERIALS: Deformable shape models called m-reps were used to automatically segment right and left kidneys from 12 target CT images, and the results were compared with careful manual segmentations performed by two human experts. M-rep models were trained based on manual segmentations from a collection of images that did not include the targets. Segmentation using m-reps began with interactive initialization to position the kidney model over the target kidney in the image data. Fully automatic segmentation proceeded through two stages at successively smaller spatial scales. At the first stage, a global similarity transformation of the kidney model was computed to position the model closer to the target kidney. The similarity transformation was followed by large-scale deformations based on principal geodesic analysis (PGA). During the second stage, the medial atoms comprising the m-rep model were deformed one by one. This procedure was iterated until no changes were observed. The transformations and deformations at both stages were driven by optimizing an objective function with two terms. One term penalized the currently deformed m-rep by an amount proportional to its deviation from the mean m-rep derived from PGA of the training segmentations. The second term computed a model-to-image match term based on the goodness of match of the trained intensity template for the currently deformed m-rep with the corresponding intensity data in the target image. Human and m-rep segmentations were compared using quantitative metrics provided in a toolset called Valmet. Metrics reported in this article include (1) percent volume overlap; (2) mean surface distance between two segmentations; and (3) maximum surface separation (Hausdorff distance). RESULTS: Averaged over all kidneys the mean surface separation was 0.12 cm, the mean Hausdorff distance was 0.99 cm, and the mean volume overlap for human segmentations was 88.8%. Between human and m-rep segmentations the mean surface separation was 0.18-0.19 cm, the mean Hausdorff distance was 1.14-1.25 cm, and the mean volume overlap was 82-83%. CONCLUSIONS: Overall in this study, the best m-rep kidney segmentations were at least as good as careful manual slice-by-slice segmentations performed by two experienced humans, and the worst performance was no worse than typical segmentations from our clinical setting. The mean surface separations for human-m-rep segmentations were slightly larger than for human-human segmentations but still in the subvoxel range, and volume overlap and maximum surface separation were slightly better for human-human comparisons. These results were expected because of experimental factors that favored comparison of the human-human segmentations. In particular, m-rep agreement with humans appears to have been limited largely by fundamental differences between manual slice-by-slice and true three-dimensional segmentation, imaging artifacts, image voxel dimensions, and the use of an m-rep model that produced a smooth surface across the renal pelvis.
机译:目的:进行了一项受控的观察者研究,以比较自动图像分割的方法与常规的计算机控制的断层扫描(CT)图像的用户指导的左右肾脏的分割。方法和材料:使用称为m-reps的可变形形状模型从12个目标CT图像中自动分割右肾和左肾,并将结果与​​两名人类专家进行的仔细手动分割相比较。 M-rep模型是根据不包含目标的图像集合中的手动分割进行训练的。使用m-rep进行分割的过程从交互式初始化开始,将肾脏模型定位在图像数据中的目标肾脏上。全自动分割过程以较小的空间尺度连续经历了两个阶段。在第一阶段,计算肾脏模型的全局相似性变换,以将模型定位为更靠近目标肾脏。基于主测地线分析(PGA),相似性转换之后是大规模变形。在第二阶段,组成m-rep模型的中间原子一一变形。重复此过程,直到未观察到任何变化为止。通过用两个项优化目标函数来驱动两个阶段的变换和变形。一个术语对当前变形的m-rep的惩罚程度与其从训练分割的PGA中得出的平均m-rep的偏差成正比。第二项基于训练后的强度模板针对当前变形的m-rep与目标图像中相应强度数据的匹配程度,计算了模型与图像的匹配项。使用称为Valmet的工具集提供的定量指标比较了人类和m-rep细分。本文报道的指标包括(1)数量重叠的百分比; (2)两次分割之间的平均表面距离; (3)最大表面分离度(豪斯多夫距离)。结果:平均所有肾脏平均表面间距为0.12 cm,平均Hausdorff距离为0.99 cm,人体分割的平均体积重叠率为88.8%。在人类和m-rep分割之间,平均表面间距为0.18-0.19 cm,平均Hausdorff距离为1.14-1.25 cm,平均体积重叠率为82-83%。结论:总体而言,在这项研究中,最佳的m-rep肾分割至少与两名经验丰富的人进行的仔细的逐层手动分割一样好,并且最差的表现也不比我们临床环境中的典型分割差。人-m-rep分割的平均表面间距略大于人-人分割的平均间距,但仍在亚体素范围内,人与人之间的比较,体积重叠和最大表面间距稍好。这些结果是可预期的,因为实验因素有利于人与人分割的比较。特别是,与人类的m-rep协议似乎在很大程度上受到以下因素的限制:手动逐个切片与真正的三维分割,成像伪像,图像体素尺寸以及使用产生的m-rep模型之间的根本差异横跨肾盂的光滑表面。

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