4.6 Article

Attention-Guided Multi-Branch Convolutional Neural Network for Mitosis Detection From Histopathological Images

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2020.3027566

关键词

Mitotic detection; attention mechanism; deep learning

资金

  1. National Natural Science Foundation of China [61871274, 61801305, 81571758]
  2. National Natural Science Foundation of Guangdong Province [2020A1515010649, 2019A1515111205]
  3. Guangdong Pre-national project [2014GKXM054]
  4. Guangdong Province Key Laboratory of Popular High Performance Computers [2017B030314073]
  5. Guangdong Laboratory of Artificial Intelligence and Cyber-Economics (SZ), Shenzhen Peacock Plan [KQTD2016053112051497, KQTD2015033016104926]
  6. Shenzhen Key Basic Research Project [JCYJ201-80507184647636, JCYJ20190808165209410, 20190808145011259, JCYJ20180507184647636, GJHZ20190822095414576, JCYJ20170302153337765, JCYJ20170302150411789, JCYJ20170302142515949, GCZX2017040715180580, GJHZ20180418190529516, JSGG20180507183215520]
  7. NTUTSZU Joint Research Program [2020003]

向作者/读者索取更多资源

The text discusses a method using deep convolutional neural networks to automatically detect mitosis, identifying mitotic candidates for screening and achieving the best detection results on the dataset of the International Pattern Recognition Conference (ICPR) 2012 Mitosis Detection Competition.
Mitotic count is an important indicator for assessing the invasiveness of breast cancers. Currently, the number of mitoses is manually counted by pathologists, which is both tedious and time-consuming. To address this situation, we propose a fast and accurate method to automatically detect mitosis from the histopathological images. The proposed method can automatically identify mitotic candidates from histological sections for mitosis screening. Specifically, our method exploits deep convolutional neural networks to extract high-level features of mitosis to detect mitotic candidates. Then, we use spatial attention modules to re-encode mitotic features, which allows the model to learn more efficient features. Finally, we use multi-branch classification subnets to screen the mitosis. Compared to existing related methods in literature, our method obtains the best detection results on the dataset of the International Pattern Recognition Conference (ICPR) 2012 Mitosis Detection Competition. Code has been made available at: https://github.com/liushaomin/MitosisDetection.

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