Geometrical and texture features estimation of lung cancer and TB images using chest X-ray database

S. Patil, V. Udupi, C. D. Kane, A. Wasif, J. V. Desai, A. Jadhav
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引用次数: 32

Abstract

Early detection is the most promising way to enhance a patient's chance for survival of lung cancer. One of the most important tasks in medical image analysis is to detect the absence or presence of disease in an image, without having precise delineations of pathology available for training. A computer algorithm for nodule detection in chest radiographs is presented. The algorithm consists of four main steps: (i) image acquisition (ii) image pre-processing; (iii) nodule candidate detection; (iv) feature extraction. Algorithm is applied on two main types of lung cancer images, like Small-Cell, Non-Small-Cell type and as well as on TB database. Total 75 images are used (25 from each category) during experiment to estimate geometrical and texture features. Active Shape Model (ASM) technique is used for lung field segmentation. Gray Level Co-occurrence Matrix (GLCM) technique is used to estimate texture features.
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基于胸片数据库的肺癌和结核图像几何和纹理特征估计
早期发现是提高肺癌患者生存机会的最有希望的方法。医学图像分析中最重要的任务之一是检测图像中疾病的缺失或存在,而没有精确的病理描述可用于训练。提出了一种胸片结节检测的计算机算法。该算法包括四个主要步骤:(i)图像采集;(ii)图像预处理;(iii)结节候选检测;(iv)特征提取。该算法主要应用于两种类型的肺癌图像,如小细胞肺癌、非小细胞肺癌和结核病数据库。实验中总共使用了75张图像(每类25张)来估计几何和纹理特征。采用主动形状模型(ASM)技术进行肺场分割。灰度共生矩阵(GLCM)技术用于纹理特征的估计。
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