Automatic lung segmentation in chest radiographs using shadow filter and local thresholding

P. Pattrapisetwong, W. Chiracharit
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引用次数: 7

Abstract

Lung segmentation is one of the essential steps in order to develop a Computer-aided Diagnosis (CAD) system for detection of some chest diseases in chest radiographs such as tuberculosis, lung cancer, atelectasis, etc. This paper proposes an unsupervised learning method for lung segmentation in chest radiographs based on shadow filter and local thresholding. The approach consists of three processes: pre-processing, initial lung field estimation and noise elimination. For the first step, the original images are resized and contrast enhanced. Then, each lung outlines are enhanced by shadow filter. The initial lung field estimation are obtained based on local thresholding, delete outer body regions, fill holes and filter regions from their property. However, noise has occurred in the result. To eliminate the noise, morphological operations techniques are used. To evaluate the performance, the proposed method was tested on a public JSRT dataset of 247 chest radiographs. The performance measures of proposed method (overlap, accuracy, sensitivity, specificity, precision, and F-score) are above 90%. The accuracy and overlap are 96.95% and 90.32% respectively with the average execution time of 18.68 s for 512 by 512 pixels resolutions. According to experimental results, our proposed method is unsupervised learning method, no training required and performed accurately.
基于阴影滤波和局部阈值的胸片肺自动分割
肺分割是开发计算机辅助诊断(CAD)系统以检测胸片上某些胸部疾病如肺结核、肺癌、肺不张等的重要步骤之一。提出了一种基于阴影滤波和局部阈值分割的无监督学习胸片肺分割方法。该方法包括预处理、初始肺场估计和噪声消除三个过程。第一步,调整原始图像的大小并增强对比度。然后,对每个肺的轮廓进行阴影滤波增强。初始肺场估计是基于局部阈值分割,删除外体区域,填充孔洞并根据其属性进行过滤。然而,结果却产生了噪音。为了消除噪声,采用了形态学处理技术。为了评估该方法的性能,在247张胸片的JSRT公共数据集上进行了测试。该方法的性能指标(重叠、准确性、灵敏度、特异性、精密度和f评分)均在90%以上。在512 × 512像素分辨率下,准确率和重叠度分别为96.95%和90.32%,平均执行时间为18.68 s。实验结果表明,我们提出的方法是无监督学习方法,不需要训练,执行准确。
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