Large-scale gastric cancer screening and localization using multi-task deep neural network

Gastric cancer is one of the most common cancers, which ranks third among the leading causes of cancer death. Biopsy of gastric mucosa is a standard procedure in gastric cancer screening test. However, manual pathological inspection is labor-intensive and time-consuming. Besides, it is challenging f...

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Veröffentlicht in:Neurocomputing (Amsterdam) 2021-08, Vol.448, p.290-300
Hauptverfasser: Yu, Hong, Zhang, Xiaofan, Song, Lingjun, Jiang, Liren, Huang, Xiaodi, Chen, Wen, Zhang, Chenbin, Li, Jiahui, Yang, Jiji, Hu, Zhiqiang, Duan, Qi, Chen, Wanyuan, He, Xianglei, Fan, Jinshuang, Jiang, Weihai, Zhang, Li, Qiu, Chengmin, Gu, Minmin, Sun, Weiwei, Zhang, Yangqiong, Peng, Guangyin, Shen, Weiwei, Fu, Guohui
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Sprache:eng
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Zusammenfassung:Gastric cancer is one of the most common cancers, which ranks third among the leading causes of cancer death. Biopsy of gastric mucosa is a standard procedure in gastric cancer screening test. However, manual pathological inspection is labor-intensive and time-consuming. Besides, it is challenging for an automated algorithm to locate the small lesion regions in the gigapixel whole-slide image and make the decision correctly. To tackle these issues, we collected large-scale whole-slide image dataset with detailed lesion region annotation and designed a whole-slide image analyzing framework consisting of 3 networks which could not only determine the screening result but also present the suspicious areas to the pathologist for reference. Experiments demonstrated that our proposed framework achieves sensitivity of 97.05% and specificity of 92.72% in screening task and Dice coefficient of 0.8331 in segmentation task. Furthermore, we tested our best model in real-world scenario on 10,315 whole-slide images collected from 4 medical centers.
ISSN:0925-2312
1872-8286
DOI:10.1016/j.neucom.2021.03.006