A computer-aided diagnosis system for lung nodule detection in chest radiographs using a two-stage classification method based on radial gradient and template matching

R. Nagata, T. Kawaguchi, H. Miyake
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引用次数: 4

Abstract

In this paper we propose a scheme for automated detection of lung nodules in chest radiographs. The proposed scheme first segments lungs in a chest image using an active shape model. Next, the scheme detects initial nodule candidates by using a method previously reported by the authors. After that, the proposed scheme classifies nodule candidates into nodules and false positives by using a two-stage classification method proposed in this paper. For performance evaluation of the proposed nodule detection scheme, we made experiments using 125 images with nodules in the JSRT database which is a public database. We created 40 data sets by 40 randomized selection of 80 training images and 45 test images from the 125 images. As the result of experiments using these 40 data sets, the proposed scheme gave 6.6, 7.6, and 9.1 false positives per image for sensitivity values of 60.1, 64.1, and 69.7% on the average of 40 data sets. The time needed by the proposed scheme was 8.2 seconds per image on the average of 40 data sets using 3.3GHz Intel PC.
基于径向梯度和模板匹配的两阶段分类方法的胸片肺结节检测计算机辅助诊断系统
在本文中,我们提出了一种在胸片上自动检测肺结节的方案。该方案首先使用活动形状模型对胸部图像中的肺进行分割。接下来,该方案使用作者先前报道的方法检测初始候选结节。然后,采用本文提出的两阶段分类方法将候选结节分类为结节和假阳性。为了评估所提出的结节检测方案的性能,我们使用公共数据库JSRT数据库中的125张带有结节的图像进行了实验。我们从125张图像中随机选择80张训练图像和45张测试图像,创建了40个数据集。使用这40个数据集进行实验的结果是,在40个数据集的平均灵敏度值为60.1、64.1和69.7%时,所提出的方案给出了每张图像6.6、7.6和9.1个假阳性。在使用3.3GHz Intel PC的40个数据集上,该方案平均每张图像所需时间为8.2秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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