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Combining deep learning with anatomical analysis for segmentation of the portal vein for liver SBRT planning

机译:结合深度学习与解剖分析,分析门静脉对肝脏SBRT规划的分割

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摘要

Automated segmentation of the portal vein (PV) for liver radiotherapy planning is a challenging task due to potentially low vasculature contrast, complex PV anatomy and image artifacts originated from fiducial markers and vasculature stents. In this paper, we propose a novel framework for automated segmentation of the PV from computed tomography (CT) images. We apply convolutional neural networks (CNNs) to learn the consistent appearance patterns of the PV using a training set of CT images with reference annotations and then enhance the PV in previously unseen CT images. Markov random fields (MRFs) were further used to smooth the results of the enhancement of the CNN enhancement and remove isolated mis-segmented regions. Finally, CNN-MRF-based enhancement was augmented with PV centerline detection that relied on PV anatomical properties such as tubularity and branch composition. The framework was validated on a clinical database with 72 CT images of patients scheduled for liver stereotactic body radiation therapy. The obtained accuracy of the segmentation was DSC = 0.83 and eta = 1.08 mm in terms of the median Dice coefficient and mean symmetric surface distance, respectively, when segmentation is encompassed into the PV region of interest. The obtained results indicate that CNNs and anatomical analysis can be used for the accurate segmentation of the PV and potentially integrated into liver radiation therapy planning.
机译:肝放射治疗计划的门静脉(PV)的自动分割是由于潜在的低脉管系统对比,复杂的光伏解剖和图像伪像来自基准标记和脉管系统的挑战性。在本文中,我们提出了一种新颖的框架,用于从计算机断层扫描(CT)图像的PV自动分割框架。我们应用卷积神经网络(CNNS)来学习PV的一致外观模式,使用训练集CT图像与参考注释,然后在以前看不见的CT图像中增强PV。 Markov随机字段(MRFS)进一步用于平滑CNN增强的增强结果,并去除隔离的错误分段区域。最后,基于CNN-MRF的增强增强了PV中心线检测,依赖于PV解剖学,如管状和分支组合物。该框架在临床数据库上验证,临床数据库,具有72只CT患者患者肝脏立体定向体放射治疗。当分段被分割到感兴趣的光伏区域时,分别在中值骰子系数和平均对称表面距离方面,所获得的分割的精度是DSC = 0.83和ETA = 1.08mm。所得结果表明,CNN和解剖学分析可用于PV的精确分割,并可能集成到肝脏放射治疗计划中。

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