Lung Nodule Classification in CT Thorax Images Using Support Vector Machines

Hiram Madero Orozco, O. Vergara-Villegas, Humberto Ochoa Domínguez, V. Sánchez
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引用次数: 51

Abstract

In this paper a computational alternative to classify lung nodules using computed tomography (CT) thorax images is presented. The novelty of the method is the elimination of the segmentation stage. The contribution consist of several steps. After image acquisition, eight texture features were extracted from the histogram and the gray level coocurrence matrix (with four different angles) for each CT image. The features were used to train a non-parametric classifier called support vector machine (SVM), used to classify lung tissues into two classes: with lung nodules and without lung nodules. A total of 128 public clinical data set (ELCAP, NBIA) with different number of slices and diagnoses were used to train and evaluate the performance of the methodology presented. After the tests stage, five false negative (FN) and seven false positive (FP) results were obtained. The results obtained were validated by a radiologist to finally obtain a reliability index of 84%.
基于支持向量机的CT胸廓图像肺结节分类
在本文中,计算替代分类肺结节使用计算机断层扫描(CT)胸部图像提出。该方法的新颖之处在于消除了分割阶段。贡献由几个步骤组成。图像采集后,从每幅CT图像的直方图和灰度共生矩阵(4个不同角度)中提取8个纹理特征。这些特征被用来训练一种非参数分类器,称为支持向量机(SVM),用于将肺组织分为两类:有肺结节和没有肺结节。使用128个不同切片和诊断的公共临床数据集(ELCAP, NBIA)来训练和评估所提出方法的性能。经过试验阶段,获得5例假阴性(FN)和7例假阳性(FP)结果。获得的结果经放射科医生验证,最终获得84%的可靠性指数。
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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