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首页> 外文期刊>International Journal of Computational Intelligence and Applications >COMPARISON OF SUPPORT VECTOR MACHINES AND BAYESIAN NEURAL NETWORKS PERFORMANCE FOR BREAST TISSUES USING GEOSTATISTICAL FUNCTIONS IN MAMMOGRAPHIC IMAGES
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COMPARISON OF SUPPORT VECTOR MACHINES AND BAYESIAN NEURAL NETWORKS PERFORMANCE FOR BREAST TISSUES USING GEOSTATISTICAL FUNCTIONS IN MAMMOGRAPHIC IMAGES

机译:乳腺图像中的地统计功能比较支持向量机和贝叶斯神经网络对乳腺组织的性能

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摘要

Female breast cancer is a major cause of deaths in occidental countries. Computer-aided Detection (CAD) systems can aid radiologists to increase diagnostic accuracy. In this work, we present a comparison between two classifiers applied to the separation of normal and abnormal breast tissues from mammograms. The purpose of the comparison is to select the best prediction technique to be part of a CAD system. Each region of interest is classified through a Support Vector Machine (SVM) and a Bayesian Neural Network (BNN) as normal or abnormal region. SVM is a machine-learning method, based on the principle of structural risk minimization, which shows good performance when applied to data outside the training set. A Bayesian Neural Network is a classifier that joins traditional neural networks theory and Bayesian inference. We use a set of measures obtained by the application of the semivariogram, semimadogram, covariogram, and correlogram functions to the characterization of breast tissue as normal or abnormal. The results show that SVM presents best performance for the classification of breast tissues in mammographic images. The tests indicate that SVM has more generalization power than the BNN classifier. BNN has a sensibility of 76.19% and a specificity of 79.31%, while SVM presents a sensibility of 74.07% and a specificity of 98.77%. The accuracy rate for tests is 78.70% and 92.59% for BNN and SVM, respectively.
机译:在西方国家,女性乳腺癌是导致死亡的主要原因。计算机辅助检测(CAD)系统可以帮助放射科医生提高诊断准确性。在这项工作中,我们提出了两种分类器之间的比较,这些分类器用于从乳房X线照片中分离正常和异常的乳房组织。比较的目的是选择最佳预测技术作为CAD系统的一部分。通过支持向量机(SVM)和贝叶斯神经网络(BNN)将每个感兴趣的区域分类为正常或异常区域。 SVM是一种基于结构风险最小化原理的机器学习方法,当将其应用于训练集以外的数据时,它表现出良好的性能。贝叶斯神经网络是将传统神经网络理论和贝叶斯推理结合在一起的分类器。我们使用通过将半变异函数,半变异函数,协变量和相关图函数应用于将乳腺组织表征为正常或异常而获得的一组度量。结果表明,SVM在乳腺X线照片中对乳腺组织的分类表现出最佳性能。测试表明,SVM具有比BNN分类器更大的概括能力。 BNN的敏感性为76.19%,特异性为79.31%,而SVM的敏感性为74.07%,特异性为98.77%。 BNN和SVM的测试准确率分别为78.70%和92.59%。

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