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A Unified Level Set Framework Combining Hybrid Algorithms for Liver and Liver Tumor Segmentation in CT Images

机译:结合混合算法的统一水平集框架用于CT图像中的肝和肝肿瘤分割

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摘要

Accurate and reliable segmentation of liver tissue and liver tumor is essential for the follow-up of hepatic diagnosis. In this paper, we present a method for liver segmentation and a method for liver tumor segmentation. The two methods are grounded on a novel unified level set method (LSM), which incorporates both region information and edge information to evolve the contour. This level set framework is more resistant to edge leakage than the single-information driven LSMs for liver segmentation and surpasses many other models for liver tumor segmentation. Specifically, for liver segmentation, a hybrid image preprocessing scheme is used first to convert an input CT image into a binary image. Then with manual setting of a few seed points on the obtained binary image, the following region-growing is performed to extract a rough liver region with no leakage. The unified LSM is proposed at last to refine the segmentation result. For liver tumor segmentation, a local intensity clustering based LSM coupled with hidden Markov random field and expectation-maximization (HMRF-EM) algorithm is applied to construct an enhanced edge indicator for the unified LSM. With this development, expected segmentation results can be obtained via the unified LSM, even for complex tumors. The two methods were evaluated with various datasets containing a local hospital dataset, the public datasets SLIVER07, 3Dircadb, and MIDAS via five measures. The proposed liver segmentation method outperformed other previous semiautomatic methods on the SLIVER07 dataset and required less interaction. The proposed liver tumor segmentation method was also competitive with other state-of-the-art methods in both accuracy and efficiency on the 3Dircadb database. Our methods are evaluated to be accurate and efficient, which allows their adoptions in clinical practice.
机译:肝组织和肝肿瘤的准确而可靠的分割对于肝诊断的随访至关重要。在本文中,我们提出了一种肝分割方法和一种肝肿瘤分割方法。两种方法都基于一种新颖的统一水平集方法(LSM),该方法结合了区域信息和边缘信息以发展轮廓。这个水平集框架比用于肝分割的单信息驱动LSM更能抵抗边缘泄漏,并且超过了许多其他肝肿瘤分割模型。具体而言,对于肝分割,首先使用混合图像预处理方案将输入的CT图像转换为二进制图像。然后,在获得的二值图像上手动设置一些种子点,然后进行以下区域生长以提取出没有泄漏的粗糙肝脏区域。最后提出了统一的LSM算法,对分割结果进行了改进。对于肝肿瘤分割,基于局部强度聚类的LSM结合隐马尔可夫随机场和期望最大化(HMRF-EM)算法,可为统一LSM构建增强的边缘指标。随着这一发展,即使对于复杂的肿瘤,也可以通过统一的LSM获得预期的分割结果。这两种方法通过包含五个数据的各种数据集进行了评估,这些数据集包含本地医院数据集,公共数据集SLIVER07、3Dircadb和MIDAS。所提出的肝分割方法优于SLIVER07数据集上的其他先前的半自动方法,并且需要较少的交互。在3Dircadb数据库上,提出的肝肿瘤分割方法在准确性和效率上也与其他最新方法竞争。我们的方法被评估为准确有效,可以在临床实践中采用。

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