Mammogram Mass Classification with Temporal Features and Multiple Kernel Learning

Fei Ma, Limin Yu, M. Bajger, M. Bottema
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引用次数: 2

Abstract

Based on previous work on regional temporal mammogram registration, this study investigates the combination of image features measured from single regions (single features) and image features measured from the matched regions of temporal mammograms (temporal features) for the classification of malignant masses. Three SVM kernels, the multilayer perceptron kernel, the polynomial kernel, and the gaussian radial basis function kernel, and the combination of these kernels, the multiple kernel learning method, were applied to both single and temporal features for the mass classification. To combine the two types of features, 3 combination rules, Linear combination, Max and Min, were used to combine classification results obtained on single and temporal features. The results showed that combining the MKL classification results on single features, and MKL classification results on temporal features, with Min rule produces the best classification results. The experiment result indicates that incorporating the temporal change information in mammography mass classification can improve the performance detection.
基于时间特征和多核学习的乳房x光片质量分类
在以往颞部乳房x光片区域配准工作的基础上,本研究探讨了从单一区域测量的图像特征(single features)和从颞部乳房x光片匹配区域测量的图像特征(temporal features)相结合的方法,用于恶性肿块的分类。将多层感知机核、多项式核和高斯径向基函数核三种SVM核以及这些核的组合,即多核学习方法,应用于单特征和时间特征的海量分类。为了将两种类型的特征结合起来,我们使用了3种组合规则,即线性组合、Max和Min,将单个特征和时间特征的分类结果结合起来。结果表明,将单个特征上的MKL分类结果与时间特征上的MKL分类结果相结合,Min规则的分类效果最好。实验结果表明,在乳腺肿块分类中加入时间变化信息可以提高检测性能。
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