Classification of Breast Cancer with Transfer Learning on Convolutional Neural Network Models

Bayu Angga Wijaya, Mesrawati Hulu, Resel Resel, Nestina Halawa, Angki Angkota Tarigan
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Abstract

Breast cancer is a serious medical condition and a leading cause of death among women. Early and accurate diagnosis is crucial for improving patient outcomes. This study explores the use of Convolutional Neural Networks (CNNs) with Transfer Learning using DenseNet121 and ResNet50 models to enhance breast cancer classification via mammography. Transfer Learning enables CNN models to leverage knowledge learned from larger datasets such as ImageNet to improve performance on specific breast cancer datasets. The dataset comprised medical images with three breast variations: benign, malignant, and normal, totaling 531 data points. Data was split with a 70% training and 30% validation ratio. Two CNN models, AlexNet and ResNet50, were evaluated to compare their performance in classifying these breast cancer types. The experimental results show that AlexNet achieved a training accuracy of 98.01%, while ResNet50 achieved 64.07%. AlexNet demonstrated superior performance in identifying complex patterns in mammography images, resulting in more accurate classification of different breast cancer types. These findings highlight the potential of deep learning applications to support more precise and effective medical diagnostics for breast cancer. This research contributes significantly to the development of AI technologies in healthcare aimed at improving early detection of breast cancer. The implications of this study could expand our understanding of Transfer Learning applications in medical contexts, driving further advancements in this field to enhance patient care and prognosis
利用卷积神经网络模型的迁移学习对乳腺癌进行分类
乳腺癌是一种严重的疾病,也是妇女死亡的主要原因。早期准确诊断对改善患者预后至关重要。本研究利用 DenseNet121 和 ResNet50 模型探索了卷积神经网络 (CNN) 与迁移学习的结合使用,以增强乳腺 X 射线照相术的乳腺癌分类能力。迁移学习使 CNN 模型能够利用从 ImageNet 等大型数据集中学到的知识,提高在特定乳腺癌数据集上的性能。数据集包括三种乳房变化的医学图像:良性、恶性和正常,共计 531 个数据点。数据以 70% 的训练和 30% 的验证比例进行分割。对 AlexNet 和 ResNet50 这两种 CNN 模型进行了评估,以比较它们在对这些乳腺癌类型进行分类时的性能。实验结果表明,AlexNet 的训练准确率为 98.01%,而 ResNet50 为 64.07%。AlexNet 在识别乳腺 X 射线图像中的复杂模式方面表现出色,从而能更准确地对不同的乳腺癌类型进行分类。这些发现凸显了深度学习应用在支持更精确、更有效的乳腺癌医疗诊断方面的潜力。这项研究极大地促进了旨在改善乳腺癌早期检测的医疗领域人工智能技术的发展。这项研究的意义可以拓展我们对转移学习在医疗领域应用的理解,推动该领域的进一步发展,从而改善患者护理和预后。
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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