Transforming Breast Cancer Identification: An In-Depth Examination of Advanced Machine Learning Models Applied to Histopathological Images

Rejon Kumar Ray, Ahmed Ali Linkon, Mohammad Shafiquzzaman Bhuiyan, Rasel Mahmud Jewel, Nishat Anjum, Bishnu Padh Ghosh, Md Tuhin Mia, Badruddowza, Md Shohail Uddin Sarker, Mujiba Shaima
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Abstract

Breast cancer stands as one of the most prevalent and perilous forms of cancer affecting both women and men. The detection and treatment of breast cancer benefit significantly from histopathological images, which carry crucial phenotypic information. To enhance accuracy in breast cancer detection, Deep Neural Networks (DNNs) are commonly utilized. Our research delves into the analysis of pre-trained deep transfer learning models, including ResNet50, ResNet101, VGG16, and VGG19, for identifying breast cancer using a dataset comprising 2453 histopathology images. The dataset categorizes images into two groups: those featuring invasive ductal carcinoma (IDC) and those without IDC. Through our analysis of transfer learning models, we observed that ResNet50 outperformed the other models, achieving impressive metrics such as accuracy rates of 92.2%, Area under Curve (AUC) rates of 91.0%, recall rates of 95.7%, and a minimal loss of 3.5%.
变革乳腺癌鉴定:深入研究应用于组织病理学图像的先进机器学习模型
乳腺癌是影响女性和男性的最常见、最危险的癌症之一。组织病理学图像具有重要的表型信息,对乳腺癌的检测和治疗大有裨益。为了提高乳腺癌检测的准确性,深度神经网络(DNN)被广泛应用。我们的研究深入分析了预先训练好的深度迁移学习模型,包括 ResNet50、ResNet101、VGG16 和 VGG19,这些模型利用由 2453 张组织病理学图像组成的数据集来识别乳腺癌。该数据集将图像分为两组:有浸润性导管癌(IDC)的图像和没有 IDC 的图像。通过对迁移学习模型的分析,我们发现 ResNet50 的表现优于其他模型,达到了令人印象深刻的指标,如 92.2% 的准确率、91.0% 的曲线下面积 (AUC)、95.7% 的召回率和 3.5% 的最小损失。
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