A New Strategy to Detect Lung Cancer on CT Images

Lingling Li, Yuan Wu, Yi Yang, Lian Li, Binbin Wu
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引用次数: 12

Abstract

Lung cancer has a very low cure rate in the advanced stages, with effective early detection, the survival rate of lung cancer could be highly raised. Detection of lung cancer in the early stages plays a vital role for human health. Computed tomography (CT) images, which provide electronic densities of tissues, are widely applied in radiotherapy planning. The proposed system based on CT technology consists of several steps, such as image acquisition, preprocessing, feature extraction, and classification. In the preprocessing stage, RGB images are converted to grayscale images, the median filter and the Wiener filter are used to uproot noises, Otsu thresholding method is applied to convert CT images free from noise to binary images, and REGIONPROPS function is used to exact body region from binary images. In the feature extraction stage, features, like Contrast, Correlation, Energy, Homogeneity, are extracted through statistic method Gray Level Co-occurrence Matrix (GLCM). In the final stage, extracted features, together with Support Vector Machine (SVM) and Back Propagation NeuralNetwork (BPNN), are used to identify lung cancer from CT images. The performance of the proposed system shows satisfactory results of 96.32% accuracy on SVM and 83.07% accuracy on BPNN respectively.
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CT图像检测肺癌的新策略
肺癌晚期治愈率很低,如果早期有效发现,可以大大提高肺癌的生存率。肺癌的早期发现对人类健康有着至关重要的作用。计算机断层扫描(CT)图像可以提供组织的电子密度,在放射治疗计划中得到广泛应用。该系统主要包括图像采集、预处理、特征提取和分类等步骤。在预处理阶段,将RGB图像转换为灰度图像,使用中值滤波器和维纳滤波器去除噪声,使用Otsu阈值法将无噪声的CT图像转换为二值图像,并使用REGIONPROPS函数从二值图像中精确提取身体区域。在特征提取阶段,通过统计方法灰度共生矩阵(GLCM)提取对比度、相关性、能量、同质性等特征。在最后阶段,将提取的特征与支持向量机(SVM)和反向传播神经网络(BPNN)结合使用,从CT图像中识别肺癌。该系统在支持向量机和bp神经网络上的准确率分别达到96.32%和83.07%。
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