BCCHI-HCNN:使用混合深度 CNN 模型从组织病理学图像进行乳腺癌分类。

Saroj Kumar Pandey, Yogesh Kumar Rathore, Manoj Kumar Ojha, Rekh Ram Janghel, Anurag Sinha, Ankit Kumar
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摘要

乳腺癌是全球妇女最常见的癌症,死亡率高,给全球公共卫生造成了沉重负担。世界卫生组织的数据显示,每年新发病例近 230 万,令人震惊,引起了患者、医护人员和政府的关注。本研究旨在通过对组织病理学图片的检查,利用基于深度卷积神经网络(CNN)模型的功能,彻底改变乳腺癌的早期精确识别方法。利用迁移学习技术,将支持向量机 (SVM)、决策树和 K 近邻 (KNN) 等多种分类器纳入模型,从而提高了模型的性能。研究包括评估两个独立的特征向量,一个有主成分分析(PCA),一个没有主成分分析(PCA)。研究还进行了广泛的比较,以衡量该模型与当前深度学习模型的性能,包括假阳性率、真阳性率、准确率、精确度和召回率等关键指标。数据显示,带有 PCA 特征的 SVM 算法实现了出色的速度和准确性,准确率达到了惊人的 99.5%。此外,决策树模型虽然比 SVM 略慢,但在没有 PCA 的情况下,其准确率也高达 99.4%。这项研究为改善早期乳腺癌诊断提出了可行的策略,为更有效的医疗治疗和更好的患者预后开辟了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BCCHI-HCNN: Breast Cancer Classification from Histopathological Images Using Hybrid Deep CNN Models.

Breast cancer is the most common cancer in women globally, imposing a significant burden on global public health due to high death rates. Data from the World Health Organization show an alarming annual incidence of nearly 2.3 million new cases, drawing the attention of patients, healthcare professionals, and governments alike. Through the examination of histopathological pictures, this study aims to revolutionize the early and precise identification of breast cancer by utilizing the capabilities of a deep convolutional neural network (CNN)-based model. The model's performance is improved by including numerous classifiers, including support vector machine (SVM), decision tree, and K-nearest neighbors (KNN), using transfer learning techniques. The studies include evaluating two separate feature vectors, one with and one without principal component analysis (PCA). Extensive comparisons are made to measure the model's performance against current deep learning models, including critical metrics such as false positive rate, true positive rate, accuracy, precision, and recall. The data show that the SVM algorithm with PCA features achieves excellent speed and accuracy, with an amazing accuracy of 99.5%. Furthermore, although being somewhat slower than SVM, the decision tree model has the greatest accuracy of 99.4% without PCA. This study suggests a viable strategy for improving early breast cancer diagnosis, opening the path for more effective healthcare treatments and better patient outcomes.

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