实用肿瘤学杂志 ›› 2024, Vol. 38 ›› Issue (3): 179-183.doi: 10.11904/j.issn.1002-3070.2024.03.006

• 临床研究 • 上一篇    下一篇

深度学习MMV-Net模型对乳腺X线良性和恶性肿块的分类效能

李家豪1, 柏家和1, 兰婕1, 李海霞2, 张岩4, 孙江宏3   

  1. 1.哈尔滨医科大学附属肿瘤医院(哈尔滨 150081);
    2.哈尔滨医科大学附属肿瘤医院超声科;
    3.哈尔滨医科大学附属肿瘤医院影像中心;
    4.哈尔滨工业大学生命科学与技术学院
  • 收稿日期:2023-12-26 修回日期:2024-03-08 出版日期:2024-06-28 发布日期:2024-07-30
  • 通讯作者: 孙江宏,E-mail:jianghong713@sina.cn
  • 作者简介:李家豪,男,(2002-),本科,从事乳腺癌影像学的相关研究。
  • 基金资助:
    大学生创新训练国家级一般项目资助(国家级编号:202310226066;校级编号:202310226023)

The classification performance of MMV-Net model for benign and malignant masses on X-ray mammography using deep learning

LI Jiahao1, BAI Jiahe1, LAN Jie1, LI Haixia2, ZHANG Yan4, SUN Jianghong3   

  1. 1. Harbin Medical University Cancer Hospital,Harbin 150081,China;
    2. Ultrasound Department,Harbin Medical University Cancer Hospital;
    3. Imaging Department,Harbin Medical University Cancer Hospital;
    4. School of Life Science and Technology,Harbin Institute of Technology
  • Received:2023-12-26 Revised:2024-03-08 Online:2024-06-28 Published:2024-07-30

摘要: 目的 构建基于乳腺X线多视图的深度学习框架(Network based on mammography multiple views,MMV-Net),评价模型对乳腺良性和恶性肿块的分类效能。方法 回顾性分析2018-2020年哈尔滨医科大学附属肿瘤医院1 585例乳腺X线图像数据集,其中良性806例,恶性779例,按8∶2分为训练集(n=1 268)和测试集(n=317),并按照5折交叉验证对训练集进行分层,采用集成的DDSM数据集和INBreast数据集作为外部测试集(n=1 645)来评估模型性能。输入层每个病例包含4个视图,通过删除ResNet22网络模型的最后两层网络结构并加入平均池化层作为特征提取层,以及分别加入全连接层和softmax激活函数作为决策层构建MMV-Net模型,使用贝叶斯超参数优化。比较MMV-Net、MFA-Net和集成Inception V4模型在AUC值、准确率、精确率、召回率和F1分数上的表现。结果 MMV-Net模型在测试集上区分良性和恶性肿块的AUC值为0.913,MFA-Net的AUC为0.882,Inception V4的AUC为0.865;MMV-Net模型的准确率和精确率等评估指标也高于其他两种模型。结论 基于乳腺X线多视图的深度学习MMV-Net模型有助于乳腺良性和恶性肿块的分类。

关键词: 深度学习, MMV-Net模型, 乳腺X线摄影, 肿块, 分类

Abstract: Objective The MMV-Net,a deep learning framework based on mammogram multiple views,was constructed to evaluate the classification performance of the model for benign and malignant masses. Methods A retrospective analysis was conducted on a dataset of 1 585 breast X-ray images from Harbin Medical University Cancer Hospital from 2018 to 2020,including 806 benign cases and 779 malignant cases.The dataset was divided into the training set(n=1 268)and the test set(n=317)according to an 8∶2 ratios,and the training set was stratified according to the 5-fold cross validation.The integrated DDSM dataset and INBreast dataset were used as external test sets(n=1 645)to evaluate the model performance.Each case in the input layer contained 4 views.The MMV-Net model was constructed by removing the last two layers of the ResNet22 network structure and adding an average pooling layer as the feature extraction layer,as well as fully connection layer and softmax activation function as the decision layers.Bayesian hyperparameter optimization was used.The performance of MMV-Net,MFA Net,and ensemble inception V4 models in AUC values,accuracy,precision,recall and F1 scores were compared. Results The AUC values of MMV-Net model for distinguishing benign and malignant masses on the test set were 0.913,0.882 for MFA-Net,and 0.865 for inception V4.The accuracy and precision evaluation metrics of the MMV-Net model were also higher than the other two models. Conclusion The deep learning MMV-Net model based on multiple views of mammogram is helpful for the classification of benign and malignant breast masses.

Key words: Deep learning, MMV-Net model, Mammography, Tumor, Classification

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