GasHisSDB: A new gastric histopathology image dataset for computer aided diagnosis of gastric cancer
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Marcin Grzegorzek | Chen Li | Jiquan Ma | Md Mamunur Rahaman | Yudong Yao | Xiaoyan Li | Yong Zhang | Wanli Liu | Hongzan Sun | Weiming Hu | Haoyuan Chen | Changhao Sun | Chen Li | M. Rahaman | Yudong Yao | Hao Chen | Weiming Hu | Wanli Liu | M. Grzegorzek | Hongzan Sun | Xiaoyan Li | Changhao Sun | Yong Zhang | Jiquan Ma | Weiming Hu
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