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Locally-constrained Boundary Regression for Segmentation of Prostate and Rectum in the Planning CT Images

机译:规划CT图像中前列腺和直肠分割的局部约束边界回归

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摘要

Automatic and accurate segmentation of the prostate and rectum in planning CT images is a challenging task due to low image contrast, unpredictable organ (relative) position, and uncertain existence of bowel gas across different patients. Recently, regression forest was adopted for organ deformable segmentation on 2D medical images by training one landmark detector for each point on the shape model. However, it seems impractical for regression forest to guide 3D deformable segmentation as a landmark detector, due to large number of vertices in the 3D shape model as well as the difficulty in building accurate 3D vertex correspondence for each landmark detector. In this paper, we propose a novel boundary detection method by exploiting the power of regression forest for prostate and rectum segmentation. The contributions of this paper are as follows: >1) we introduce regression forest as a local boundary regressor to vote the entire boundary of a target organ, which avoids training a large number of landmark detectors and building an accurate 3D vertex correspondence for each landmark detector; >2) an auto-context model is integrated with regression forest to improve the accuracy of the boundary regression; >3) we further combine a deformable segmentation method with the proposed local boundary regressor for the final organ segmentation by integrating organ shape priors. Our method is evaluated on a planning CT image dataset with 70 images from 70 different patients. The experimental results show that our proposed boundary regression method outperforms the conventional boundary classification method in guiding the deformable model for prostate and rectum segmentations. Compared with other state-of-the-art methods, our method also shows a competitive performance.
机译:由于图像对比度低,器官(相对)位置无法预测以及不同患者之间肠气的不确定性,在计划CT图像中自动准确地分割前列腺和直肠是一项艰巨的任务。最近,通过对形状模型上的每个点训练一个界标检测器,将回归森林用于2D医学图像上的器官可变形分割。但是,由于3D形状模型中大量的顶点以及为每个地标检测器建立准确的3D顶点对应的困难,回归森林将3D变形分段作为地标检测器似乎是不切实际的。在本文中,我们通过利用回归森林对前列腺和直肠进行分割的功能,提出了一种新颖的边界检测方法。本文的贡献如下:> 1)我们引入回归森林作为局部边界回归器,以对目标器官的整个边界进行投票,从而避免训练大量的地标探测器并建立精确的每个界标检测器的3D顶点对应关系; > 2):将自动上下文模型与回归林集成在一起,以提高边界回归的准确性; > 3),我们还通过整合器官形状先验,将可变形分割方法与拟议的局部边界回归器相结合,用于最终的器官分割。我们的方法在一个计划的CT图像数据集上进行评估,该数据集包含来自70位不同患者的70张图像。实验结果表明,我们提出的边界回归方法在指导前列腺和直肠分割的可变形模型方面优于传统的边界分类方法。与其他最新方法相比,我们的方法还显示出竞争优势。

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