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Computer-aided diagnosis of pulmonary nodules on CT scans: Improvement of classification performance with nodule surface features

机译:CT扫描对肺结节的计算机辅助诊断:利用结节表面特征改善分类性能

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摘要

The purpose of this work is to develop a computer-aided diagnosis (CAD) system to differentiate malignant and benign lung nodules on CT scans. A fully automated system was designed to segment the nodule from its surrounding structured background in a local volume of interest (VOI) and to extract image features for classification. Image segmentation was performed with a 3D active contour method. The initial contour was obtained as the boundary of a binary object generated by k-means clustering within the VOI and smoothed by morphological opening. A data set of 256 lung nodules (124 malignant and 132 benign) from 152 patients was used in this study. In addition to morphological and texture features, the authors designed new nodule surface features to characterize the lung nodule surface smoothness and shape irregularity. The effects of two demographic features, age and gender, as adjunct to the image features were also investigated. A linear discriminant analysis (LDA) classifier built with features from stepwise feature selection was trained using simplex optimization to select the most effective features. A two-loop leave-one-out resampling scheme was developed to reduce the optimistic bias in estimating the test performance of the CAD system. The area under the receiver operating characteristic curve, Az, for the test cases improved significantly (p<0.05) from 0.821±0.026 to 0.857±0.023 when the newly developed image features were included with the original morphological and texture features. A similar experiment performed on the data set restricted to primary cancers and benign nodules, excluding the metastatic cancers, also resulted in an improved test Az, though the improvement did not reach statistical significance (p=0.07). The two demographic features did not significantly affect the performance of the CAD system (p>0.05) when they were added to the feature space containing the morphological, texture, and new gradient field and radius features. To investigate if a support vector machine (SVM) classifier can achieve improved performance over the LDA classifier, we compared the performance of the LDA and SVMs with various kernels and parameters. Principal component analysis was used to reduce the dimensionality of the feature space for both the LDA and the SVM classifiers. When the number of selected principal components was varied, the highest test Az among the SVMs of various kernels and parameters was slightly higher than that of the LDA in one-loop leave-one-case-out resampling. However, no SVM with fixed architecture consistently performed better than the LDA in the range of principal components selected. This study demonstrated that the authors’ proposed segmentation and feature extraction techniques are promising for classifying lung nodules on CT images.
机译:这项工作的目的是开发一种计算机辅助诊断(CAD)系统,以区分CT扫描中的恶性和良性肺结节。设计了一个全自动系统,可从周围感兴趣的局部体积(VOI)中将其结节从周围的结构化背景中分割出来,并提取图像特征进行分类。使用3D主动轮廓法进行图像分割。初始轮廓是作为二进制对象的边界而获得的,该二进制对象是通过VOI中的k均值聚类生成的,并通过形态学开放进行了平滑处理。这项研究使用了来自152位患者的256个肺结节(恶性124个和良性132个)的数据集。除了形态和质地特征外,作者还设计了新的结节表面特征来表征肺结节表面的光滑度和形状不规则性。还研究了两个人口统计学特征(年龄和性别)对图像特征的影响。使用单纯形优化来训练使用逐步特征选择构建的线性判别分析(LDA)分类器,以选择最有效的特征。开发了一种两回路留一出式重采样方案,以减少估计CAD系统测试性能时的乐观偏差。当新开发的图像特征包含原始形态和纹理特征时,测试用例的接收器工作特征曲线下的面积Az显着提高(p <0.05)从0.821±0.026到0.857±0.023。在仅限于原发癌和良性结节(不包括转移癌)的数据集上进行的类似实验也导致了测试Az的改善,尽管这种改善没有达到统计学意义(p = 0.07)。将这两个人口统计特征添加到包含形态,纹理以及新的梯度场和半径特征的特征空间中时,不会显着影响CAD系统的性能(p> 0.05)。为了研究支持向量机(SVM)分类器是否可以实现比LDA分类器更高的性能,我们将LDA和SVM的性能与各种内核和参数进行了比较。主成分分析用于减少LDA和SVM分类器的特征空间的维数。当所选主成分的数量发生变化时,在单循环留一例全重采样中,各种内核和参数的SVM中的最高测试Az略高于LDA。但是,在选定的主要组件范围内,没有固定体系结构的SVM始终表现出比LDA更好的性能。这项研究表明,作者提出的分割和特征提取技术有望在CT图像上对肺结节进行分类。

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