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Fast image segmentation for pulmonary lesions using hybrid level set model

机译:混合水平集模型用于肺部病变的快速图像分割

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The lung cancer radiotherapy treatment widely depends on adequate diagnosis. The radiologists intend to reach an image segmentation efficiency in terms of accuracy and low computation cost. However, the pulmonary lesions segmentation is still considered as a challenging task due to the noise and intensity inhomogeneity present in Computed Tomography (CT). In this study, we proposed to accelerate the nonlinear adaptive level set model, using the Bayesian rule, by incorporated the double well potential in the regularization term to get accurate and fast pulmonary lesion segmentation in CT images. We have tested the proposed method on different sized and localized lesions. All the images were taken from the database without any preprocessing. The experimental results show significant speed improvement without losing the precision of segmentation.
机译:肺癌放疗的治疗很大程度上取决于充分的诊断。放射科医生打算在准确性和低计算成本方面达到图像分割效率。但是,由于计算机断层扫描(CT)中存在的噪声和强度不均匀性,肺部病变的分割仍然被认为是一项艰巨的任务。在这项研究中,我们建议使用贝叶斯规则来加速非线性自适应水平集模型,方法是在正则化项中并入双井势,以在CT图像中进行准确,快速的肺部病变分割。我们已经在不同大小和局部病变上测试了该方法。所有图像均从数据库中获取,无需任何预处理。实验结果表明,在不损失分割精度的情况下,速度有了显着提高。

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