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基于特征曲线引导的全卷积网络的盆腔器官分割

Pelvic Organ Segmentation Using Distinctive Curve Guided Fully Convolutional Networks.

出版信息

IEEE Trans Med Imaging. 2019 Feb;38(2):585-595. doi: 10.1109/TMI.2018.2867837. Epub 2018 Aug 30.

Abstract

Accurate segmentation of pelvic organs (i.e., prostate, bladder, and rectum) from CT image is crucial for effective prostate cancer radiotherapy. However, it is a challenging task due to: 1) low soft tissue contrast in CT images and 2) large shape and appearance variations of pelvic organs. In this paper, we employ a two-stage deep learning-based method, with a novel distinctive curve-guided fully convolutional network (FCN), to solve the aforementioned challenges. Specifically, the first stage is for fast and robust organ detection in the raw CT images. It is designed as a coarse segmentation network to provide region proposals for three pelvic organs. The second stage is for fine segmentation of each organ, based on the region proposal results. To better identify those indistinguishable pelvic organ boundaries, a novel morphological representation, namely, distinctive curve, is also introduced to help better conduct the precise segmentation. To implement this, in this second stage, a multi-task FCN is initially utilized to learn the distinctive curve and the segmentation map separately and then combine these two tasks to produce accurate segmentation map. The final segmentation results of all three pelvic organs are generated by a weighted max-voting strategy. We have conducted exhaustive experiments on a large and diverse pelvic CT data set for evaluating our proposed method. The experimental results demonstrate that our proposed method is accurate and robust for this challenging segmentation task, by also outperforming the state-of-the-art segmentation methods.

摘要

从 CT 图像中准确分割骨盆器官(即前列腺、膀胱和直肠)对于有效的前列腺癌放射治疗至关重要。然而,由于以下两个原因,这是一项具有挑战性的任务:1)CT 图像中的软组织对比度低,2)骨盆器官的形状和外观变化大。在本文中,我们采用了一种基于两阶段深度学习的方法,使用一种新颖的具有独特曲线引导的全卷积网络(FCN)来解决上述挑战。具体来说,第一阶段是在原始 CT 图像中快速而稳健地进行器官检测。它被设计为一个粗分割网络,为三个骨盆器官提供区域建议。第二阶段是基于区域建议结果对每个器官进行精细分割。为了更好地识别那些难以区分的骨盆器官边界,我们还引入了一种新颖的形态学表示,即独特曲线,以帮助更好地进行精确分割。为此,在第二阶段,首先利用多任务 FCN 分别学习独特曲线和分割图,然后将这两个任务结合起来生成准确的分割图。最后,通过加权最大投票策略生成所有三个骨盆器官的分割结果。我们在一个大型且多样化的骨盆 CT 数据集上进行了详尽的实验,以评估我们提出的方法。实验结果表明,我们提出的方法对于这项具有挑战性的分割任务是准确和稳健的,并且优于最先进的分割方法。

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