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Pulmonary Nodule Detection Model Based on SVM and CT Image Feature-Level Fusion with Rough Sets

机译:基于SVM和CT图像特征级融合的肺结节检测模型与粗糙集

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摘要

In order to improve the detection accuracy of pulmonary nodules in CT image, considering two problems of pulmonary nodules detection model, including unreasonable feature structure and nontightness of feature representation, a pulmonary nodules detection algorithm is proposed based on SVM and CT image feature-level fusion with rough sets. Firstly, CT images of pulmonary nodule are analyzed, and 42-dimensional feature components are extracted, including six new 3-dimensional features proposed by this paper and others 2-dimensional and 3-dimensional features. Secondly, these features are reduced for five times with rough set based on feature-level fusion. Thirdly, a grid optimization model is used to optimize the kernel function of support vector machine (SVM), which is used as a classifier to identify pulmonary nodules. Finally, lung CT images of 70 patients with pulmonary nodules are collected as the original samples, which are used to verify the effectiveness and stability of the proposed model by four groups’ comparative experiments. The experimental results show that the effectiveness and stability of the proposed model based on rough set feature-level fusion are improved in some degrees.
机译:为了提高在CT图像肺结节的检测精度,考虑的肺部结节检测模型的两个问题,包括不合理特征结构和特征表示的nontightness,肺结节检测算法基于SVM与CT图像特征级融合用粗糙的套装。首先,分析肺结核的CT图像,提取42维特征组分,包括本文提出的六个新的三维特征和其他二维和三维特征。其次,基于特征级融合,这些特征减少了五次的五次。第三,网格优化模型用于优化支持向量机(SVM)的内核功能,其用作识别肺结核的分类器。最后,收集了70例肺结结患者的肺CT图像作为原始样品,用于验证所提出的四组比较实验的提出模型的有效性和稳定性。实验结果表明,基于粗糙集特征级融合的提出模型的有效性和稳定性在一些程度上得到了改善。

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