医学文献 >>
  • 检索发现
  • 增强检索
知识库 >>
  • 临床诊疗知识库
  • 中医药知识库
评价分析 >>
  • 机构
  • 作者
默认
×
热搜词:
换一批
论文 期刊
取消
高级检索

检索历史 清除

Application of transfer learning and ensemble learning in image-level classification for breast histopathology

Application of transfer learning and ensemble learning in image-level classification for breast histopathology

摘要Background:Breast cancer has the highest prevalence among all cancers in women globally. The classification of histopathological images in the diagnosis of breast cancers is an area of clinical concern. In computer-aided diagnosis, most traditional classification models use a single network to extract features, although this approach has significant limitations. Moreover, many networks are trained and optimized on patient-level datasets, ignoring lower-level data labels.Methods:This paper proposed a deep ensemble model based on image-level labels for the binary classification of breast histopathological images of benign and malignant lesions. First, the BreaKHis dataset was randomly divided into training, validation, and test sets. Then, data augmentation techniques were used to balance the numbers of benign and malignant samples. Third, based on their transfer learning performance and the complementarity between networks, VGG16, Xception, ResNet50, and DenseNet201 were selected as base classifiers.Results:In a ensemble network model with accuracy as the weight, the image-level binary classification achieved an accuracy of 98 .90%. To verify the capabilities of our method, it was experimentally compared with the latest transformer and multilayer perception (MLP) models on the same dataset. Our ensemble model showed a 5%–20% advantage, emphasizing its far-reaching abilities in classification tasks. Conclusions:This research focuses on improving the performance of a classification model with an ensemble algorithm. Transfer learning has an essential role in classification of small datasets, improving training speed and accuracy. Our model may outperform many existing approaches with respect to accuracy and has applications in the field of auxiliary medical diagnosis.

更多
广告
作者 Zheng Yuchao [1] Li Chen [1] Zhou Xiaomin [1] Chen Haoyuan [1] Xu Hao [1] Li Yixin [1] Zhang Haiqing [1] Li Xiaoyan [2] Sun Hongzan [2] Huang Xinyu [3] Grzegorzek Marcin [3] 学术成果认领
作者单位 Microscopic Image and Medical Image Analysis Group, College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, Liaoning 110819 China [1] China Medical University, Shenyang, Liaoning 110122 China [2] Institute of Medical Informatics, University of Luebeck, Luebeck, Germany [3]
栏目名称
DOI 10.1016/j.imed.2022.05.004
发布时间 2025-12-28(万方平台首次上网日期,不代表论文的发表时间)
  • 浏览5
  • 下载0
智慧医学(英文)

加载中!

相似文献

  • 中文期刊
  • 外文期刊
  • 学位论文
  • 会议论文

加载中!

加载中!

加载中!

加载中!

特别提示:本网站仅提供医学学术资源服务,不销售任何药品和器械,有关药品和器械的销售信息,请查阅其他网站。

  • 客服热线:4000-115-888 转3 (周一至周五:8:00至17:00)

  • |
  • 客服邮箱:yiyao@wanfangdata.com.cn

  • 违法和不良信息举报电话:4000-115-888,举报邮箱:problem@wanfangdata.com.cn,举报专区

官方微信
万方医学小程序
new医文AI 翻译 充值 订阅 收藏 移动端

官方微信

万方医学小程序

使用
帮助
Alternate Text
调查问卷