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Research of Deep Learning on Gastric Cancer Diagnosis

机译:深度学习对胃癌诊断的研究

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Gastroscopy is the first method to check gastrointestinal cancer and related diseases. Traditional manual methods have the disadvantages of time-consuming, high missed diagnosis and misdiagnosis rates. Image recognition technology based on deep learning has great potential in improving diagnosis efficiency and accuracy. We summarize the latest advances in deep learning in gastric cancer diagnosis from the aspects of data sets, image preprocessing, and classification algorithms. Most research teams cooperate with hospitals to build small data sets, and preprocess the images using threshold-based filters and other methods. In terms of gastric cancer and gastric disease classification, the DenseNet model has the highest ACC, F1 score and specific SP.
机译:胃镜检查是一种检查胃肠癌和相关疾病的第一种方法。传统的手动方法具有耗时,高错失的诊断和误诊率的缺点。基于深度学习的图像识别技术具有提高诊断效率和准确性的巨大潜力。我们总结了数据集,图像预处理和分类算法的各个方面的胃癌诊断中深入学习的最新进展。大多数研究团队与医院合作建立小数据集,并使用基于阈值的过滤器和其他方法预处理图像。就胃癌和胃病分类而言,DenSenet模型具有最高的ACC,F1分数和特定SP。

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