基于GACM的肺结节CT图像分割检测与分期分类方法

R. Manickavasagam, S. Selvan
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引用次数: 3

摘要

提出了基于梯度的活动轮廓模型(GACM),用于从数字CT(计算机断层扫描)图像中分割肺区域。在GACM中,使用活动轮廓模型提取图像中肺边界处的梯度信息。然后从归一化图像中提取形状和GLCM特征集。基于特征属性的一致性,采用主成分分析法对特征集进行最优评估。采用多类支持向量机对肺结节进行检测和分期分类,多类支持向量机利用超平面确定各类之间的决策边界。实验结果表明,该方法的阶段分类准确率和灵敏度分别为95.3%和92.17%。与现有系统相比,该系统的检测结果在精度和灵敏度上都得到了提高。
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GACM based segmentation method for Lung nodule detection and classification of stages using CT images
The GACM (Gradient based Active Contour Model) is proposed for segmenting the lung region from digital CT (Computed Tomography) images. In GACM, the gradient information present in the image at lung boundaries are extracted using active contour model. Then shape and GLCM feature sets are extracted from normalized images. The PCA is used for optimal feature set evaluation based on the consistency of the feature attributes. The lung nodules detection and stage classifications are carried out using multi class Support Vector Machine which makes the decision boundary between the various classes using hyper planes. The experiments result shows that the stage classification accuracy and sensitivity achieved by the proposed method is 95.3% and 92.17% respectively. The results of proposed system are improved when compared with existing system in terms of accuracy and sensitivity.
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