乳房x线照片中数据挖掘分类技术的挑战

Leyli Mahdikhani, M. Keyvanpour
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引用次数: 5

摘要

乳腺癌是乳房中恶性肿瘤的生长。近年来,这种疾病在妇女中的发病率显著增加。目前,早期发现是癌症治疗的一个重要因素。最有效的早期检测方法是乳房x光检查。计算机辅助诊断(CAD)系统是必不可少的,以帮助寻找可疑的迹象,或分类病变的良性或恶性类型。在本文中,我们想讨论肿块作为乳腺癌最重要的指标之一。为了对乳房x光片中的肿块进行分类和检测,使用了不同的数据挖掘技术。另一方面,乳房x光图像中肿块的分类问题给研究人员带来了许多挑战。在实施大规模分类系统之前,有必要了解现有的问题和挑战,以便选择适当的方法和分类器。因此,我们首先回顾了乳房x光片中肿块的挖掘和分类方法。常用的技术可以分为四组:基于函数的、基于概率的、基于相似性的和基于规则的技术,本文将简要讨论这些技术。然后,我们提出了在乳房x线摄影肿块分类问题的现有挑战的分类。这些挑战分为两部分:数据相关挑战和技术相关挑战。最后,根据所涉及的挑战对所提出的技术进行了评估和分析。
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Challenges of Data Mining Classification Techniques in Mammograms
Breast cancer is the growth of a malignant tumor in the breast. The incidence of this disease in women has increased significantly in recent years. Currently, early detection is an important factor in cancer treatment. The most effective method for early detection is mammography. The computer aided diagnosis (CAD) systems are essential to help searching for suspicious signs, or classifying lesions in benign or malignant types. In this paper, we want to discuss masses as one of the most important indicators of breast cancer. To classify and detect masses in mammograms, different data mining techniques have been used. On the other hand, the problem of classifying masses in mammogram images has placed many challenges for researchers. Before implementing a mass classification system, there is a need to be aware of the available problems and challenges in order to select the appropriate methods and classifiers. Hence, we first review the methods of mining and classifying masses in mammograms. Techniques that are commonly used can be categorized into four groups: Function based, probability based, similarity based and rule based techniques that are briefly discussed in this article. Then, we propose a categorization of existing challenges in the problem of mammographic mass classification. These challenges are divided into two parts: Data related and technique related challenges. Finally, the presented techniques are evaluated and analyzed according to the involved challenges.
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