Joint Segmentation of Multiple Thoracic Organs in CT Images with Two Collaborative Deep Architectures.

Roger Trullo, Caroline Petitjean, Dong Nie, Dinggang Shen, Su Ruan
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Abstract

Computed Tomography (CT) is the standard imaging technique for radiotherapy planning. The delineation of Organs at Risk (OAR) in thoracic CT images is a necessary step before radiotherapy, for preventing irradiation of healthy organs. However, due to low contrast, multi-organ segmentation is a challenge. In this paper, we focus on developing a novel framework for automatic delineation of OARs. Different from previous works in OAR segmentation where each organ is segmented separately, we propose two collaborative deep architectures to jointly segment all organs, including esophagus, heart, aorta and trachea. Since most of the organ borders are ill-defined, we believe spatial relationships must be taken into account to overcome the lack of contrast. The aim of combining two networks is to learn anatomical constraints with the first network, which will be used in the second network, when each OAR is segmented in turn. Specifically, we use the first deep architecture, a deep SharpMask architecture, for providing an effective combination of low-level representations with deep high-level features, and then take into account the spatial relationships between organs by the use of Conditional Random Fields (CRF). Next, the second deep architecture is employed to refine the segmentation of each organ by using the maps obtained on the first deep architecture to learn anatomical constraints for guiding and refining the segmentations. Experimental results show superior performance on 30 CT scans, comparing with other state-of-the-art methods.

Abstract Image

Abstract Image

Abstract Image

用两种协作深度架构联合分割 CT 图像中的多个胸腔器官
计算机断层扫描(CT)是放疗计划的标准成像技术。在胸部 CT 图像中划分 "危险器官"(OAR)是放疗前的必要步骤,以防止健康器官受到照射。然而,由于对比度低,多器官分割是一项挑战。在本文中,我们重点开发了一种自动划分 OAR 的新型框架。与以往分别分割每个器官的 OAR 分割工作不同,我们提出了两种协作深度架构,以联合分割所有器官,包括食管、心脏、主动脉和气管。由于大多数器官的边界不清晰,我们认为必须考虑空间关系,以克服对比度不足的问题。将两个网络结合起来的目的是利用第一个网络学习解剖学约束条件,这些约束条件将在第二个网络依次分割每个 OAR 时使用。具体来说,我们使用第一个深度架构,即深度 SharpMask 架构,将低层表征与深度高层特征有效结合,然后通过使用条件随机场(CRF)考虑器官之间的空间关系。接下来,第二个深度架构利用第一个深度架构获得的映射来学习解剖学约束条件,以指导和完善每个器官的分割。实验结果表明,与其他最先进的方法相比,该方法在 30 个 CT 扫描上的性能更优越。
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