使用深度学习模型将迁移学习应用于乳腺癌检测。

IF 7.7
PLOS digital health Pub Date : 2025-06-16 eCollection Date: 2025-06-01 DOI:10.1371/journal.pdig.0000907
Frimpong Twum, Charlyne Carol Eyram Ahiable, Stephen Opoku Oppong, Linda Banning, Kwabena Owusu-Agyemang
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引用次数: 0

摘要

乳腺癌仍然是一个严重的全球健康问题,影响着全世界无数人的生命。早期和准确的检测在改善患者预后方面起着至关重要的作用。挑战在于传统诊断方法在准确性方面的局限性。本研究提出了一种基于四个预训练深度学习模型(Mobilenetv2、Inceptionv3、ResNet50和VGG16)的新模型,这些模型也被用作特征提取器,并使用BUSI数据集对多个监督学习模型进行反馈。Mobiletnetv2、inceptionv3、ResNet50和VGG16的准确率分别为85.6%、90.8%、89.7%和88.06%,其中Logistic回归和Light Gradient Boosting Machine是表现最好的分类器。使用迁移学习,模型的顶层被冻结,附加层被添加。采用GlobalAveragePooling2D层对输入图像进行空间降维。经过训练和基于准确率的测试,ResNet50表现最好,达到95.5%,其次是Inceptionv3 92.5%, VGG16 86.5%,最后是Mobilenetv2 84%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Employing transfer learning for breast cancer detection using deep learning models.

Breast cancer remains a critical global health concern, affecting countless lives worldwide. Early and accurate detection plays a vital role in improving patient outcomes. The challenge lies with the limitations of traditional diagnostic methods in terms of accuracy. This study proposes a novel model based on the four pretrained deep learning models, Mobilenetv2, Inceptionv3, ResNet50, and VGG16, which were also used as feature extractors and fed on multiple supervised learning models using the BUSI dataset. Mobiletnetv2, inceptionv3, ResNet50 and VGG16 achieved an accuracy of 85.6%, 90.8%, 89.7% and 88.06%, respectively, with Logistic Regression and Light Gradient Boosting Machine being the best performing classifiers. Using transfer learning, the top layers of the model were frozen, and additional layers were added. A GlobalAveragePooling2D layer was employed to reduce spatial dimensions of the input image. After training and testing based on the accuracy, ResNet50 performed the best with 95.5%, followed by Inceptionv3 92.5%, VGG16 86.5% and lastly Mobilenetv2 84%.

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