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zadetkov: 3
1.
  • A loss-based patch label de... A loss-based patch label denoising method for improving whole-slide image analysis using a convolutional neural network
    Ashraf, Murtaza; Robles, Willmer Rafell Quiñones; Kim, Mujin ... Scientific reports, 01/2022, Letnik: 12, Številka: 1
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    This paper proposes a deep learning-based patch label denoising method (LossDiff) for improving the classification of whole-slide images of cancer using a convolutional neural network (CNN). ...
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2.
  • Improving quality control i... Improving quality control in the routine practice for histopathological interpretation of gastrointestinal endoscopic biopsies using artificial intelligence
    Ko, Young Sin; Choi, Yoo Mi; Kim, Mujin ... PloS one, 12/2022, Letnik: 17, Številka: 12
    Journal Article
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    Colorectal and gastric cancer are major causes of cancer-related deaths. In Korea, gastrointestinal (GI) endoscopic biopsy specimens account for a high percentage of histopathologic examinations. ...
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3.
  • A predicted-loss based acti... A predicted-loss based active learning approach for robust cancer pathology image analysis in the workplace
    Kim, Mujin; Quiñones Robles, Willmer Rafell; Ko, Young Sin ... BMC medical imaging, 01/2024, Letnik: 24, Številka: 1
    Journal Article
    Recenzirano
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    Convolutional neural network-based image processing research is actively being conducted for pathology image analysis. As a convolutional neural network model requires a large amount of image data ...
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