Computer-aided diagnosis of breast cancer from mammogram images using deep learning algorithms

Emmanuel Gbenga Dada, David Opeoluwa Oyewola, Sanjay Misra
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Abstract

Even though accurate detection of dangerous malignancies from mammogram images is mostly dependent on radiologists' experience, specialists occasionally differ in their assessments. Computer-aided diagnosis provides a better solution for image diagnosis that can help experts make more reliable decisions. In medical applications for diagnosing cancerous growths from mammogram images, computerized and accurate classification of breast cancer mammogram images is critical. The deep learning approach has been widely applied in medical image processing and has had considerable success in biological image classification. The Convolutional Neural Network (CNN), Inception, and EfficientNet are proposed in this paper. The proposed models attain better performance compared to the conventional CNN. The models are used to automatically classify breast cancer mammogram images from Kaggle into benign and malignant. Simulation results demonstrated that EfficientNet, with an accuracy between 97.13 and 99.27%, and overall accuracy of 98.29%, perform better than the other models in this paper.
利用深度学习算法从乳房 X 光图像中对乳腺癌进行计算机辅助诊断
尽管从乳房 X 光图像中准确检测出危险的恶性肿瘤主要依赖于放射科医生的经验,但专家们的评估意见偶尔也会出现分歧。计算机辅助诊断为图像诊断提供了更好的解决方案,可以帮助专家做出更可靠的决定。在通过乳房 X 光图像诊断癌变的医疗应用中,对乳腺癌乳房 X 光图像进行计算机化的准确分类至关重要。深度学习方法已广泛应用于医学图像处理,并在生物图像分类方面取得了相当大的成功。本文提出了卷积神经网络(CNN)、Inception 和 EfficientNet。与传统的 CNN 相比,所提出的模型具有更好的性能。这些模型被用于将 Kaggle 中的乳腺癌乳房 X 光图像自动分类为良性和恶性。仿真结果表明,EfficientNet 的准确率介于 97.13% 和 99.27% 之间,总体准确率为 98.29%,表现优于本文中的其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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