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Classification of benign and malignant tumors in histopathology images

机译:病理组织学图像中良恶性肿瘤的分类

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Breast cancer leads the list of cancer that act on women worldwide. It starts when cells in the breast begin to build up beyond control. These cells normally create a tumour that can usually be seen on an x-ray or felt as a lump. Analysing and grading the tumour will take up much of a pathologist time. Pathologists have been largely diagnosing disease the same way for the past years, by manually reviewing images under a microscope. Thus, to help the pathologists improve accuracy and significantly change the way breast cancer been diagnosed, this paper presents an automated classification program. BreakHis dataset was used which build of 7909 breast tumor images gathered from 82 patients. This system is developed in order to categorize the cancer cells into two classes of cancer which are benign and malignant. The classification system compared different types of feature extractors using k-nearest neighbours classifier to efficiently observe the performance of the classification system. An extensive set of experiments showed that the overall accuracy rates range from 83% to 86%.
机译:乳腺癌在影响全球女性的癌症中名列前茅。当乳房中的细胞开始堆积而无法控制时,它开始。这些细胞通常会形成肿瘤,通常可以在X光片上看到或感觉为肿块。分析和分级肿瘤将占用病理医生的大部分时间。过去几年中,病理学家通过在显微镜下手动查看图像来很大程度上以相同的方式诊断疾病。因此,为帮助病理学家提高准确性并显着改变乳腺癌的诊断方式,本文提出了一种自动分类程序。使用BreakHis数据集,该数据集收集了来自82位患者的7909幅乳腺肿瘤图像。开发该系统是为了将癌细胞分为良性和恶性两类癌症。分类系统使用k最近邻分类器比较了不同类型的特征提取器,以有效地观察分类系统的性能。大量的实验表明,总体准确率从83%到86%不等。

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