Automatic detection of breast lesions in automated 3D breast ultrasound with cross-organ transfer learning

被引:0
|
作者
Lingyun BAO [1 ]
Zhengrui HUANG [2 ]
Zehui LIN [2 ]
Yue SUN [2 ]
Hui CHEN [3 ]
You LI [4 ]
Zhang LI [5 ,6 ]
Xiaochen YUAN [2 ]
Lin XU [7 ]
Tao TAN [2 ]
机构
[1] Affiliated Hangzhou First People's Hospital , School of Medicine, Westlake University
[2] Faculty of Applied Sciences, Macao Polytechnic University
[3] Pathology Department, Changsha First Hospital
[4] Radiology Department, Changsha First Hospital
[5] College of Aerospace Science and Engineering, National University of Defense Technology
[6] Hunan Provincial Key Laboratory of Image Measurement and Vision Navigation
[7] School of Information Science and Technology, Shanghaitech
关键词
D O I
暂无
中图分类号
R737.9 [乳腺肿瘤]; TP391.41 []; TP18 [人工智能理论];
学科分类号
080203 ; 081104 ; 0812 ; 0835 ; 1405 ;
摘要
Background Deep convolutional neural networks have garnered considerable attention in numerous machine learning applications, particularly in visual recognition tasks such as image and video analyses. There is a growing interest in applying this technology to diverse applications in medical image analysis. Automated threedimensional Breast Ultrasound is a vital tool for detecting breast cancer, and computer-assisted diagnosis software, developed based on deep learning, can effectively assist radiologists in diagnosis. However, the network model is prone to overfitting during training, owing to challenges such as insufficient training data. This study attempts to solve the problem caused by small datasets and improve model detection performance. Methods We propose a breast cancer detection framework based on deep learning(a transfer learning method based on cross-organ cancer detection) and a contrastive learning method based on breast imaging reporting and data systems(BI-RADS). Results When using cross organ transfer learning and BIRADS based contrastive learning, the average sensitivity of the model increased by a maximum of 16.05%. Conclusion Our experiments have demonstrated that the parameters and experiences of cross-organ cancer detection can be mutually referenced, and contrastive learning method based on BI-RADS can improve the detection performance of the model.
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页码:239 / 251
页数:13
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