| Literature DB >> 33681291 |
Hongliang He1,2, Chi Zhang1,2, Jie Chen1,2, Ruizhe Geng1, Luyang Chen3, Yongsheng Liang4, Yanchang Lu5, Jihua Wu6, Yongjie Xu6.
Abstract
Nuclear segmentation of histopathological images is a crucial step in computer-aided image analysis. There are complex, diverse, dense, and even overlapping nuclei in these histopathological images, leading to a challenging task of nuclear segmentation. To overcome this challenge, this paper proposes a hybrid-attention nested UNet (Han-Net), which consists of two modules: a hybrid nested U-shaped network (H-part) and a hybrid attention block (A-part). H-part combines a nested multi-depth U-shaped network and a dense network with full resolution to capture more effective features. A-part is used to explore attention information and build correlations between different pixels. With these two modules, Han-Net extracts discriminative features, which effectively segment the boundaries of not only complex and diverse nuclei but also small and dense nuclei. The comparison in a publicly available multi-organ dataset shows that the proposed model achieves the state-of-the-art performance compared to other models.Entities:
Keywords: Dilated convolution; Histopathological image; Hybrid attention; Nested UNet; Nuclear segmentation
Year: 2021 PMID: 33681291 PMCID: PMC7925890 DOI: 10.3389/fmolb.2021.614174
Source DB: PubMed Journal: Front Mol Biosci ISSN: 2296-889X