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Classification of pulmonary nodules in thin-section CT images based on shape characterization

机译:基于形状特征的薄截面CT图像肺结节分类

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Shape characterization of small pulmonary nodules plays a significant role in differential diagnosis that discriminates malignant and benign nodules at early stages of pulmonary lesion development. This paper presents a method to characterize small pulmonary nodules based on the morphology of the development of lung lesions in thin-section CT images. The feature extraction algorithms are designed to extract the shape characteristic parameters from three-dimensional (3-D) nodule images using surface curvatures and ridge line. Experiments which show the feasibility of our method to improve the diagnostic accuracy are also demonstrated by applying the method to nodule images.
机译:小型肺结结的形状表征在鉴别诊断中起着重要作用,在肺部病变发育的早期阶段判断恶性和良性结节。本文介绍了一种基于薄截面CT图像肺病变的形态表征小型肺结节的方法。特征提取算法旨在使用表面曲线和脊线从三维(3-D)结节图像中提取形状特征参数。还通过将方法应用于结核图像来证明,表明我们的提高诊断准确度的方法的实验。

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