首页> 外文会议>2007 IEEE/ICME INTERNATIONAL CONFERENCE ON COMPLEX MEDICAL ENGINEERING >Segmentation of Pulmonary Nodules Based on Statistic Features of Wavelet Coefficients and Dual Level Sets
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Segmentation of Pulmonary Nodules Based on Statistic Features of Wavelet Coefficients and Dual Level Sets

机译:基于小波系数和双水平集的统计特征的肺结节分割

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A major problem of pulmonary nodules segmentation can't be solved well by conventional methods, which is other tissue in chest CT image slices, such as blood vessels and bronchi, often overlap with the nodules and they also have the same gray scale intensity approximately, for big size (>40pixels) nodules especially. This paper presents a novel approach to solve above problem, which works in two main steps: ①Transition Region (TR ) , which is defined as the ambiguous region between nodule and background, is ascertained depending on statistic features of wavelet coefficients.② Precise boundaries of the nodule is segmented based on an improvement of dual level sets method. The validity of the proposed approach is demonstrated in the chest CT images. Experiments with real chest CT images confirm the high accuracy of our approach.
机译:常规方法无法很好地解决肺结节分割的主要问题,这是胸部CT图像切片中的其他组织,例如血管和支气管,经常与结节重叠,并且它们的灰度强度也大致相同,特别适用于大尺寸(> 40像素)结节。本文提出了一种解决上述问题的新方法,该方法主要通过两个步骤进行:①根据小波系数的统计特征确定过渡区域(TR),其被定义为结节与背景之间的模糊区域。根据双水平集方法的改进对结节进行分割。胸部CT图像证明了该方法的有效性。真实胸部CT图像的实验证实了我们方法的高精度。

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