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Automated CT liver segmentation using improved Chan-Vese model with global shape constrained energy

机译:使用具有全局形状约束能量的改进Chan-Vese模型自动进行CT肝分割

摘要

In this paper, we propose an automated liver segmentation method to overcome the challenging issues of high degree of variations in liver shape / size and similar density distribution shared by the liver and its surrounding structures. To improve the performance of conventional statistical shape model for liver segmentation, in our method, the signed distance function is utilized so that the landmarks correspondence is not required when performing the principle component analysis. We improve the Chan-Vese model to bind the shape energy and local intensity feature to evolve the surface both globally and locally toward the closest shape driven by the PCA. In our experiments, 20 clinical CT studies were used for training and 25 clinical CT studies were used for validation. Our experimental results demonstrate that our method can achieve accurate and robust liver segmentation from both of low-contrast and high-contrast CT images.
机译:在本文中,我们提出了一种自动肝脏分割方法,以克服肝脏形状/大小高度变化以及肝脏及其周围结构共享的相似密度分布的挑战性问题。为了提高常规统计形状模型进行肝脏分割的性能,在我们的方法中,利用了有符号距离函数,因此在进行主成分分析时不需要地标对应。我们改进了Chan-Vese模型,以结合形状能量和局部强度特征,以使表面全局和局部向PCA驱动的最接近形状发展。在我们的实验中,有20项临床CT研究用于训练,有25项临床CT研究用于验证。我们的实验结果表明,我们的方法可以从低对比度和高对比度的CT图像中实现准确而鲁棒的肝分割。

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