Automated identification of lung nodules

Shu Ling Alycia Lee, A. Kouzani, E. Hu
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引用次数: 17

Abstract

A system that can automatically detect nodules within lung images may assist expert radiologists in interpreting the abnormal patterns as nodules in 2D CT lung images. A system is presented that can automatically identify nodules of various sizes within lung images. The pattern classification method is employed to develop the proposed system. A random forest ensemble classifier is formed consisting of many weak learners that can grow decision trees. The forest selects the decision that has the most votes. The developed system consists of two random forest classifiers connected in a series fashion. A subset of CT lung images from the LIDC database is employed. It consists of 5721 images to train and test the system. There are 411 images that contained expert- radiologists identified nodules. Training sets consisting of nodule, non-nodule, and false-detection patterns are constructed. A collection of test images are also built. The first classifier is developed to detect all nodules. The second classifier is developed to eliminate the false detections produced by the first classifier. According to the experimental results, a true positive rate of 100%, and false positive rate of 1.4 per lung image are achieved.
肺结节的自动识别
一种可以自动检测肺图像中的结节的系统可以帮助放射科专家将2D CT肺图像中的异常模式解释为结节。提出了一种能够自动识别肺图像中不同大小结节的系统。采用模式分类方法开发了该系统。由多个弱学习器组成的随机森林集成分类器可以生长决策树。森林会选择得票最多的决定。所开发的系统由两个随机森林分类器串联而成。采用LIDC数据库中的CT肺图像子集。它由5721张图像组成,用于训练和测试系统。有411张图像包含放射专家鉴定的结节。构造了由结节、非结节和假检测模式组成的训练集。还构建了一组测试映像。第一种分类器是用来检测所有结节的。第二分类器是为了消除第一分类器产生的错误检测而开发的。实验结果表明,该方法的真阳性率为100%,每张肺图像的假阳性率为1.4。
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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