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Multi-objective breast cancer classification by using multi-expression programming

机译:使用多表达式编程进行多目标乳腺癌分类

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摘要

Despite many years of research, breast cancer detection is still a difficult, but very important problem to be solved. An automatic diagnosis system could establish whether a mammography presents tumours or belongs to a healthy patient and could offer, in this way, a second opinion to a radiologist that tries to establish a diagnosis. We therefore propose a system that could contribute to lowering both the costs and the work of an imaging diagnosis centre of breast cancer and in addition to increase the trust level in that diagnosis. We present a multi-objective evolutionary approach based on Multi-Expression Programming-a linear Genetic Programming method-that could classify a mammogram starting from a raw image of the breast. The processed images are represented through Histogram of Oriented Gradients and Kernel Descriptors since these image features have been reported as being very efficient in the image recognition scientific community and they have not been applied to mammograms before. Numerical experiments are performed on freely available datasets consisting of normal and abnormal film-based and digital mammograms and show the efficiency of the proposed decision support system.
机译:尽管进行了多年的研究,但是乳腺癌的检测仍然是一个困难的问题,但却是非常重要的问题。自动诊断系统可以确定乳房X线照片是存在肿瘤还是属于健康患者,并且可以以此方式向试图建立诊断的放射科医生提供第二种意见。因此,我们提出了一种系统,该系统可以有助于降低乳腺癌影像学诊断中心的成本和工作,并可以提高诊断的信任度。我们提出了一种基于多表达式编程(一种线性遗传编程方法)的多目标进化方法,该方法可以从乳房的原始图像开始对乳房X线照片进行分类。处理过的图像通过定向梯度直方图和内核描述符来表示,因为据报道这些图像特征在图像识别科学界非常有效,并且以前从未应用于乳房X线照片。在包含正常和异常胶片的乳房X线照片和数字乳房X线照片组成的可免费获得的数据集上进行了数值实验,结果证明了所提出的决策支持系统的效率。

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