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Auto-DenseUNet: Searchable neural network architecture for mass segmentation in 3D automated breast ultrasound
2022-11
发表期刊MEDICAL IMAGE ANALYSIS (IF:10.7[JCR-2023],11.9[5-Year])
ISSN1361-8415
EISSN1361-8423
卷号82
发表状态已发表
DOI10.1016/j.media.2022.102589
摘要

Accurate segmentation of breast mass in 3D automated breast ultrasound (ABUS) plays an important role in breast cancer analysis. Deep convolutional networks have become a promising approach in segmenting ABUS images. However, designing an effective network architecture is time-consuming, and highly relies on specialist's experience and prior knowledge. To address this issue, we introduce a searchable segmentation network (denoted as Auto-DenseUNet) based on the neural architecture search (NAS) to search the optimal architecture automatically for the ABUS mass segmentation task. Concretely, a novel search space is designed based on a densely connected structure to enhance the gradient and information flows throughout the network. Then, to encourage multiscale information fusion, a set of searchable multiscale aggregation nodes between the down-sampling and up-sampling parts of the network are further designed. Thus, all the operators within the dense connection structure or between any two aggregation nodes can be searched to find the optimal structure. Finally, a novel decoupled search training strategy during architecture search is also introduced to alleviate the memory limitation caused by continuous relaxation in NAS. The proposed Auto-DenseUNet method has been evaluated on our ABUS dataset with 170 volumes (from 107 patients), including 120 training volumes and 50 testing volumes split at patient level. Experimental results on testing volumes show that our searched architecture performed better than several human-designed segmentation models on the 3D ABUS mass segmentation task, indicating the effectiveness of our proposed method. © 2022 Elsevier B.V.

关键词Deep neural networks Image segmentation Medical imaging Statistical tests Structural optimization Ultrasonics Automated breast ultrasound image Breast mass Breast mass segmentation Breast ultrasound Breast ultrasound images Deep learning Mass segmentation Neural architecture search Neural architectures Neural network architecture
收录类别SCIE ; EI
语种英语
出版者Elsevier B.V.
EI入藏号20223712715688
EI主题词Network architecture
EI分类号461.1 Biomedical Engineering ; 461.4 Ergonomics and Human Factors Engineering ; 746 Imaging Techniques ; 753.1 Ultrasonic Waves ; 921.5 Optimization Techniques ; 922.2 Mathematical Statistics
原始文献类型Journal article (JA)
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文献类型期刊论文
条目标识符https://kms.shanghaitech.edu.cn/handle/2MSLDSTB/229863
专题生物医学工程学院_PI研究组_沈定刚组
通讯作者Li, Yanfeng
作者单位
1.School of Electronic and Information Engineering, Beijing Jiaotong University, Beijing; 100044, China;
2.Peking University People's Hospital, Beijing; 100044, China;
3.Department of Computer Science, University of Georgia, Athens; GA; 30602, United States;
4.School of Biomedical Engineering, ShanghaiTech University, Shanghai, China;
5.Shanghai United Imaging Intelligence Co., Ltd., Shanghai, China
推荐引用方式
GB/T 7714
Cao, Xuyang,Chen, Houjin,Li, Yanfeng,et al. Auto-DenseUNet: Searchable neural network architecture for mass segmentation in 3D automated breast ultrasound[J]. MEDICAL IMAGE ANALYSIS,2022,82.
APA Cao, Xuyang.,Chen, Houjin.,Li, Yanfeng.,Peng, Yahui.,Zhou, Yue.,...&Shen, Dinggang.(2022).Auto-DenseUNet: Searchable neural network architecture for mass segmentation in 3D automated breast ultrasound.MEDICAL IMAGE ANALYSIS,82.
MLA Cao, Xuyang,et al."Auto-DenseUNet: Searchable neural network architecture for mass segmentation in 3D automated breast ultrasound".MEDICAL IMAGE ANALYSIS 82(2022).
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