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Ultrasonographic feature selection and pattern classification for cervical lymph nodes using support vector machines.

机译:使用支持向量机对宫颈淋巴结进行超声特征选择和模式分类。

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摘要

A rough margin based support vector machine (RMSVM) classifier was proposed to improve the accuracy of ultrasound diagnoses for cervical lymph nodes. Thirty-six features belonging to 10 kinds of ultrasonographic characteristics were extracted for each of 110 lymph nodes in ultrasonograms. Comparison studies were done for three classifiers--the classical support vector machine (SVM), the general regression neural network and the proposed RMSVM, with or without the feature selection by the recursive feature elimination (RFE) algorithm, respectively, based on SVMs and the mean square error discriminant. It was indicated by experimental results that all classifiers benefited from the feature selection. The best classification performance was obtained by the RMSVM using thirteen features selected by the RMSVM based RFE, which yielded the normalized area under the receiver operating characteristic curve (A(z)) of 0.859. Compared with the radiologist's performance of A(z) of 0.787, the developed computer-aided diagnosis algorithm has the potential to improve the diagnostic accuracy.
机译:为了提高超声诊断宫颈淋巴结的准确性,提出了一种基于粗糙余量的支持向量机(RMSVM)分类器。针对超声检查中的110个淋巴结分别提取了10种超声特征的36个特征。对三个分类器进行了比较研究-经典支持向量机(SVM),通用回归神经网络和建议的RMSVM,分别基于或不基于递归特征消除(RFE)算法选择特征,基于SVM和均方差判别。实验结果表明,所有分类器均受益于特征选择。 RMSVM使用基于RMSVM的RFE选择的13个特征获得了最佳分类性能,该特征在接收器工作特性曲线(A(z))下的归一化面积为0.859。与放射科医生的A(z)的0.787相比,开发的计算机辅助诊断算法具有提高诊断准确性的潜力。

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