基于深度迁移学习方法的乳腺癌组织病理学图像分类

Cemal Efe Tezcan, Berk Kiras, G. Bilgin
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引用次数: 1

摘要

在组织病理图像中检测癌细胞时,具有较高的准确率是非常重要的。由于高准确度的图像,癌细胞将被更灵敏地检测出来,并且有机会更准确和早期诊断。因此,一个非常重要的初步步骤将采取治疗癌细胞。本研究通过对四种不同类型的癌细胞(良性、正常、原位癌和浸润性癌)应用不同的方法进行分类性能对比分析。以BACH和Bioimaging作为数据集,主要通过几种图像处理方法(金字塔均值移位、直线检测、扩散)来获得所需的部分。在获得不同大小的图像后,使用VGG16、DenseNet121、ResNet50、MobileNetV2、InceptionResNetV2、CNN深度迁移学习方法对其性能进行检验。
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Classification of Breast Cancer Histopathological Images with Deep Transfer Learning Methods
It is very important to have a high accuracy rate in detecting cancerous cells in histopathological images. Thanks to high-accuracy images, cancerous cells will be detected more sensitively, and there will be a chance for more accurate and early diagnosis. Thus, a very important preliminary step will be taken in the treatment of cancerous cells. In this study, classification performances were comparatively analyzed by applying various methods to four different cancer cell types (benign, normal, carcinoma in situ and invasive carcinoma). By using BACH and Bioimaging as datasets, the desired parts are tried to be obtained primarily by several image processing methods (pyramid mean shifting, line detection, spreading). After obtaining images of different sizes, their performances are examined by using VGG16, DenseNet121, ResNet50, MobileNetV2, InceptionResNetV2, CNN deep transfer learning methods.
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