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Low-rank and sparse decomposition based shape model and probabilistic atlas for automatic pathological organ segmentation

机译:基于低级和稀疏分解的自动病理器官分割的形状模型和概率图集

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One major limiting factor that prevents the accurate delineation of human organs has been the presence of severe pathology and pathology affecting organ borders. Overcoming these limitations is exactly what we are concerned in this study. We propose an automatic method for accurate and robust pathological organ segmentation from CT images. The method is grounded in the active shape model (ASM) framework. It leverages techniques from low-rank and sparse decomposition (LRSD) theory to robustly recover a subspace from grossly corrupted data. We first present a population-specific LRSD-based shape prior model, called LRSD-SM, to handle non-Gaussian gross errors caused by weak and misleading appearance cues of large lesions, complex shape variations, and poor adaptation to the finer local details in a unified framework. For the shape model initialization, we introduce a method based on patient-specific LRSD-based probabilistic atlas (PA), called LRSD-PA, to deal with large errors in atlas-to-target registration and low likelihood of the target organ. Furthermore, to make our segmentation framework more efficient and robust against local minima, we develop a hierarchical ASM search strategy. Our method is tested on the SLIVER07 database for liver segmentation competition, and ranks 3rd in all the published state-of-the-art automatic methods. Our method is also evaluated on some pathological organs (pathological liver and right lung) from 95 clinical CT scans and its results are compared with the three closely related methods. The applicability of the proposed method to segmentation of the various pathological organs (including some highly severe cases) is demonstrated with good results on both quantitative and qualitative experimentation; our segmentation algorithm can delineate organ boundaries that reach a level of accuracy comparable with those of human raters. (C) 2017 Elsevier B.V. All rights reserved.
机译:预防人体器官准确描绘的一个主要限制因素是存在严重病理学和病理学影响器官边界。克服这些限制正是我们在这项研究中关注的内容。我们提出了一种从CT图像中的准确且鲁棒的病理器官分段的自动方法。该方法接地为主动形状模型(ASM)框架。它利用低级别和稀疏分解(LRSD)理论的技术来强大地从严重损坏的数据中恢复子空间。我们首先介绍一个特定于人口的LRSD形状以前的模型,称为LRSD-SM,处理由大病变,复杂的形状变化的弱和误导性外观提示引起的非高斯粗略误差,以及对更精细的本地细节的适应性差统一的框架。对于形状模型初始化,我们介绍了一种基于患者特定的LRSD的概率阿特拉斯(PA)的方法,称为LRSD-PA,以处理atlas-to-target的注册和目标器官的低似然性的大错误。此外,为了使我们的分割框架更有效和稳健地对抗当地最小值,我们开发了一个分层ASM搜索策略。我们的方法在Sliver07数据库上测试了肝细分竞争,并在所有公布的最先进的自动方法中排名第3。我们的方法也在95临床CT扫描的某些病理器官(病理肝脏和右肺)上进行评估,其结果与三种密切相关的方法进行了比较。所提出的方法对各种病理器官进行分割的适用性(包括一些高度严重的病例)在定量和定性实验中表明了良好的结果;我们的分割算法可以描绘与人类评估者相当的精度达到的器官界限。 (c)2017 Elsevier B.v.保留所有权利。

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