Literature DB >> 31722327

AUNet: attention-guided dense-upsampling networks for breast mass segmentation in whole mammograms.

Hui Sun1, Cheng Li, Boqiang Liu, Zaiyi Liu, Meiyun Wang, Hairong Zheng, David Dagan Feng, Shanshan Wang.   

Abstract

Mammography is one of the most commonly applied tools for early breast cancer screening. Automatic segmentation of breast masses in mammograms is essential but challenging due to the low signal-to-noise ratio and the wide variety of mass shapes and sizes. Existing methods deal with these challenges mainly by extracting mass-centered image patches manually or automatically. However, manual patch extraction is time-consuming and automatic patch extraction brings errors that could not be compensated in the following segmentation step. In this study, we propose a novel attention-guided dense-upsampling network (AUNet) for accurate breast mass segmentation in whole mammograms directly. In AUNet, we employ an asymmetrical encoder-decoder structure and propose an effective upsampling block, attention-guided dense-upsampling block (AU block). Especially, the AU block is designed to have three merits. Firstly, it compensates the information loss of bilinear upsampling by dense upsampling. Secondly, it designs a more effective method to fuse high- and low-level features. Thirdly, it includes a channel-attention function to highlight rich-information channels. We evaluated the proposed method on two publicly available datasets, CBIS-DDSM and INbreast. Compared to three state-of-the-art fully convolutional networks, AUNet achieved the best performances with an average Dice similarity coefficient of 81.8% for CBIS-DDSM and 79.1% for INbreast.

Entities:  

Year:  2020        PMID: 31722327     DOI: 10.1088/1361-6560/ab5745

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  7 in total

1.  Deep learning-based GTV contouring modeling inter- and intra- observer variability in sarcomas.

Authors:  Thibault Marin; Yue Zhuo; Rita Maria Lahoud; Fei Tian; Xiaoyue Ma; Fangxu Xing; Maryam Moteabbed; Xiaofeng Liu; Kira Grogg; Nadya Shusharina; Jonghye Woo; Ruth Lim; Chao Ma; Yen-Lin E Chen; Georges El Fakhri
Journal:  Radiother Oncol       Date:  2021-11-19       Impact factor: 6.280

2.  Automatic recognition of micronucleus by combining attention mechanism and AlexNet.

Authors:  Weiyi Wei; Hong Tao; Wenxia Chen; Xiaoqin Wu
Journal:  BMC Med Inform Decis Mak       Date:  2022-05-18       Impact factor: 3.298

3.  Connected-UNets: a deep learning architecture for breast mass segmentation.

Authors:  Asma Baccouche; Begonya Garcia-Zapirain; Cristian Castillo Olea; Adel S Elmaghraby
Journal:  NPJ Breast Cancer       Date:  2021-12-02

4.  Connected-SegNets: A Deep Learning Model for Breast Tumor Segmentation from X-ray Images.

Authors:  Mohammad Alkhaleefah; Tan-Hsu Tan; Chuan-Hsun Chang; Tzu-Chuan Wang; Shang-Chih Ma; Lena Chang; Yang-Lang Chang
Journal:  Cancers (Basel)       Date:  2022-08-20       Impact factor: 6.575

5.  Breast Cancer Classification Using FCN and Beta Wavelet Autoencoder.

Authors:  Hussah Nasser AlEisa; Wajdi Touiti; Amel Ali ALHussan; Najib Ben Aoun; Ridha Ejbali; Mourad Zaied; Ayesha Saadia
Journal:  Comput Intell Neurosci       Date:  2022-06-23

Review 6.  Breast Cancer Segmentation Methods: Current Status and Future Potentials.

Authors:  Epimack Michael; He Ma; Hong Li; Frank Kulwa; Jing Li
Journal:  Biomed Res Int       Date:  2021-07-20       Impact factor: 3.411

7.  Contour-enhanced attention CNN for CT-based COVID-19 segmentation.

Authors:  R Karthik; R Menaka; Hariharan M; Daehan Won
Journal:  Pattern Recognit       Date:  2022-01-19       Impact factor: 7.740

  7 in total

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