利用 K 最近邻法比较分析各种纹理和几何特征在乳房肿块分类中的能力

4区 计算机科学 Q1 Arts and Humanities
Harmandeep Singh, Vipul Sharma, Damanpreet Singh
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引用次数: 0

摘要

本文介绍了各种纹理和几何特征在诊断乳房 X 光片上乳腺肿块方面的能力比较分析。为此研究开发了一个基于机器学习的改进框架。我们使用 INbreast 数据集中的 106 幅全场数字乳腺 X 光图像对所提出的系统进行了测试,这些图像共包含 115 个乳腺肿块病变。通过评估单个和不同组合的计算纹理和几何特征对提高分类准确率的贡献,研究了它们的能力。研究人员采用了四种最先进的基于滤波器的特征选择算法(Relief-F、皮尔逊相关系数、邻域成分分析和项方差)来选择前 20 个最具鉴别力的特征。在分类结果方面,Relief-F 算法的准确率为 85.2%,灵敏度为 82.0%,特异性为 88.0%,优于其他特征选择算法。随后,经过进一步模拟,我们从之前提到的使用 Relief-F 算法获得的 20 个特征中选出了九个最具区分度的特征。研究了六种最先进的机器学习分类器,即 k-近邻(k-NN)、支持向量机、决策树、Naive Bayes、随机森林和集合树的分类性能,结果表明,k-NN 分类器的分类效果最好(准确率 = 90.4%,灵敏度 = 92.0%,特异性 = 88.0%),其邻居数量为 k = 5,反距离权重为平方。主要发现包括从 125 个纹理和几何特征中识别出了九个最具区分度的特征,即 FD26(傅立叶描述符)、欧拉数、坚实度、平均值、FD14、FD13、周期性、偏斜度和对比度。研究结果表明,所选的九个特征可用于乳房 X 光照片中乳房肿块的分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Comparative analysis of proficiencies of various textures and geometric features in breast mass classification using k-nearest neighbor.

Comparative analysis of proficiencies of various textures and geometric features in breast mass classification using k-nearest neighbor.

Comparative analysis of proficiencies of various textures and geometric features in breast mass classification using k-nearest neighbor.

Comparative analysis of proficiencies of various textures and geometric features in breast mass classification using k-nearest neighbor.

This paper introduces a comparative analysis of the proficiencies of various textures and geometric features in the diagnosis of breast masses on mammograms. An improved machine learning-based framework was developed for this study. The proposed system was tested using 106 full field digital mammography images from the INbreast dataset, containing a total of 115 breast mass lesions. The proficiencies of individual and various combinations of computed textures and geometric features were investigated by evaluating their contributions towards attaining higher classification accuracies. Four state-of-the-art filter-based feature selection algorithms (Relief-F, Pearson correlation coefficient, neighborhood component analysis, and term variance) were employed to select the top 20 most discriminative features. The Relief-F algorithm outperformed other feature selection algorithms in terms of classification results by reporting 85.2% accuracy, 82.0% sensitivity, and 88.0% specificity. A set of nine most discriminative features were then selected, out of the earlier mentioned 20 features obtained using Relief-F, as a result of further simulations. The classification performances of six state-of-the-art machine learning classifiers, namely k-nearest neighbor (k-NN), support vector machine, decision tree, Naive Bayes, random forest, and ensemble tree, were investigated, and the obtained results revealed that the best classification results (accuracy = 90.4%, sensitivity = 92.0%, specificity = 88.0%) were obtained for the k-NN classifier with the number of neighbors having k = 5 and squared inverse distance weight. The key findings include the identification of the nine most discriminative features, that is, FD26 (Fourier Descriptor), Euler number, solidity, mean, FD14, FD13, periodicity, skewness, and contrast out of a pool of 125 texture and geometric features. The proposed results revealed that the selected nine features can be used for the classification of breast masses in mammograms.

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来源期刊
Visual Computing for Industry, Biomedicine, and Art
Visual Computing for Industry, Biomedicine, and Art Arts and Humanities-Visual Arts and Performing Arts
CiteScore
5.60
自引率
0.00%
发文量
28
审稿时长
5 weeks
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