Combining one-class classifiers for imbalanced classification of breast thermogram features

B. Krawczyk, G. Schaefer, Michal Wozniak
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引用次数: 16

Abstract

Thermography provides an interesting modality for diagnosing breast cancer as it is a non-contact, non-invasive and passive technique that is able to detect small tumors, which in turn can lead to earlier diagnosis. We perform computer-aided diagnosis of breast thermograms based on image features describing bilateral differences in regions of interest and a pattern classification approach that learns from previous examples. As is often the case in medical diagnosis, such training sets are imbalanced as typically (many) more benign cases get recorded compared to malignant cases. In this paper, we address this problem and perform classification using an ensemble of one-class classifiers. One-class classification uses samples from a single distribution to derive a decision boundary, and employing this method on the minority class can significantly boost its recognition rate and hence the sensitivity of our approach. We combine several one-class classifiers using a random subspace approach and a diversity measure to select members of the committee. We show that our proposed technique works well and leads to significantly improved performance compared to a single one-class predictor as well as compared to state-of-the-art classifier ensembles for imbalanced data.
结合单类分类器对乳房热像特征的不平衡分类
热成像为诊断乳腺癌提供了一种有趣的方式,因为它是一种非接触、非侵入性和被动的技术,能够检测到小肿瘤,从而可以导致早期诊断。我们根据描述感兴趣区域的双侧差异的图像特征和从先前示例中学习的模式分类方法,对乳房热像图进行计算机辅助诊断。正如医疗诊断中经常出现的情况一样,这种训练集是不平衡的,因为通常(许多)良性病例比恶性病例记录得更多。在本文中,我们解决了这个问题,并使用单类分类器的集合进行分类。单类分类使用来自单个分布的样本来推导决策边界,将该方法应用于少数类可以显著提高其识别率,从而提高方法的灵敏度。我们使用随机子空间方法和多样性度量组合几个单类分类器来选择委员会成员。我们表明,我们提出的技术工作得很好,并且与单个单类预测器以及与不平衡数据的最先进分类器集成相比,显著提高了性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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