A Deep Neural CNN Model with CRF For Breast Mass Segmentation in Mammograms

Author(s):  
Ridhi Arora ◽  
Balasubramanian Raman
Author(s):  
Yutong Yan ◽  
Pierre-Henri Conze ◽  
Gwenolé Quellec ◽  
Mathieu Lamard ◽  
Beatrice Cochener ◽  
...  

Author(s):  
Wenwei Zhao ◽  
Meng Lou ◽  
Yunliang Qi ◽  
Yiming Wang ◽  
Chunbo Xu ◽  
...  

2020 ◽  
Vol 61 ◽  
pp. 102027
Author(s):  
Michal Byra ◽  
Piotr Jarosik ◽  
Aleksandra Szubert ◽  
Michael Galperin ◽  
Haydee Ojeda-Fournier ◽  
...  

Author(s):  
Arianna Mencattini ◽  
Giulia Rabottino ◽  
Marcello Salmeri ◽  
Roberto Lojacono ◽  
Emanuele Colini

Author(s):  
Hsien-Chi Kuo ◽  
Maryellen L. Giger ◽  
Ingrid Reiser ◽  
John M. Boone ◽  
Karen K. Lindfors ◽  
...  

PLoS ONE ◽  
2021 ◽  
Vol 16 (8) ◽  
pp. e0256830
Author(s):  
Yeheng Sun ◽  
Yule Ji

Accurate segmentation of breast masses is an essential step in computer aided diagnosis of breast cancer. The scarcity of annotated training data greatly hinders the model’s generalization ability, especially for the deep learning based methods. However, high-quality image-level annotations are time-consuming and cumbersome in medical image analysis scenarios. In addition, a large amount of weak annotations is under-utilized which comprise common anatomy features. To this end, inspired by teacher-student networks, we propose an Anatomy-Aware Weakly-Supervised learning Network (AAWS-Net) for extracting useful information from mammograms with weak annotations for efficient and accurate breast mass segmentation. Specifically, we adopt a weakly-supervised learning strategy in the Teacher to extract anatomy structure from mammograms with weak annotations by reconstructing the original image. Besides, knowledge distillation is used to suggest morphological differences between benign and malignant masses. Moreover, the prior knowledge learned from the Teacher is introduced to the Student in an end-to-end way, which improves the ability of the student network to locate and segment masses. Experiments on CBIS-DDSM have shown that our method yields promising performance compared with state-of-the-art alternative models for breast mass segmentation in terms of segmentation accuracy and IoU.


2019 ◽  
Vol 30 (7-8) ◽  
pp. 1111-1122 ◽  
Author(s):  
Shenghua Gu ◽  
Yi Chen ◽  
Fangqing Sheng ◽  
Tianming Zhan ◽  
Yunjie Chen

2021 ◽  
Author(s):  
Caixia Zhang ◽  
Jing Lian ◽  
Ruifeng Huang ◽  
Mingxuan Zhang

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