Peipei ZhiJianzhi DengZhenxiao Zhong
Although deep learning plays an important role in cell nucleus segmentation, it still faces problems such as difficulty in extracting subtle features and blurring of nucleus edges in pathological diagnosis. Aiming at the above problems, a nuclear segmentation network combined with attention mechanism is proposed. The network uses UNet network as the basic structure and the depth separable residual (DSRC) module as the feature encoding to avoid losing the boundary information of the cell nucleus. The feature decoding uses the coordinate attention (CA) to enhance the long-range distance in the feature space and highlights the key information of the nuclear position. Finally, the semantics information fusion (SIF) module integrates the feature of deep and shallow layers to improve the segmentation effect. The experiments were performed on the 2018 data science bowl (DSB2018) dataset and the triple negative breast cancer (TNBC) dataset. For the two datasets, the accuracy of the proposed method was 92.01% and 89.80%, the sensitivity was 90.09% and 91.10%, and the mean intersection over union was 89.01% and 89.12%, respectively. The experimental results show that the proposed method can effectively segment the subtle regions of the nucleus, improve the segmentation accuracy, and provide a reliable basis for clinical diagnosis.
Haoran 请. WangKun YuQiangqiang LiQianjun GuanShihong Gao
Hongyan ChenDonghui YinZhentao QinQiong Wu
Lingjing QinWenxin HuJun ZhengA ZhaoG BalakrishnanFr Do DurandJohn GuttagAdrian DalcaC ChenQ DouH ChenJ QinP HengX HeS YangG LiH LiH ChangY YuJ LongE ShelhamerT DarrellO RonnebergerP FischerT BroxKedir Kamu SirurYe PengZhang QinchuanYao-Tien ChenKatta Sreedhar KollemRama LingaDuggirala Srinivasa ReddyRaoArshad JavedWang ChaiAbdulhameed Rakan AleneziNarayan KulathuramaiyerChi-Man PunPan NgR KorezB LikarF PernusTT BroschL TangY YooD LiA TraboulseeR TamH NohS HongB HanI GoodfellowJ Pouget-AbadieM MirzaB XuD Warde-FarleyS OzairA CourvilleY BengioA RadfordL MetzS ChintalaT SalimansI GoodfellowW ZarembaV CheungA RadfordX ChenI GulrajaniF AhmedM ArjovskyV DumoulinA CourvilleL IttiC KochE NieburR RensinkM CorbettaG ShulmanJ HuL ShenG SunF WangM JiangC QianS YangC LiH ZhangX WangX TangZ ZhouM SiddiqueeN TajbakhshJ LiangS PereiraA PintoV AlvesC SilvaY XueT XuH ZhangL LongX Huang
Huadeng WangJin LiuBingbing LiXipeng PanZ M LiuRushi LanXiaonan Luo
Yuxiang ZhouXin KangFuji RenHuimin LuSatoshi NakagawaShan Xiao