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An improved deep learning approach and its applications on colonic polyp images detection

机译:一种改进的深度学习方法及其对结肠息肉图像检测的应用

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Colonic polyps are more likely to be cancerous, especially those with large diameter, large number and atypical hyperplasia. If colonic polyps cannot be treated in early stage, they are likely to develop into colon cancer. Colonoscopy is easily limited by the operator’s experience, and factors such as inexperience and visual fatigue will directly affect the accuracy of diagnosis. Cooperating with Hunan children’s hospital, we proposed and improved a deep learning approach with global average pooling (GAP) in colonoscopy for assisted diagnosis. Our approach for assisted diagnosis in colonoscopy can prompt endoscopists to pay attention to polyps that may be ignored in real time, improve the detection rate, reduce missed diagnosis, and improve the efficiency of medical diagnosis. We selected colonoscopy images from the gastrointestinal endoscopy room of Hunan children’s hospital to form the colonic polyp datasets. And we applied the image classification method based on Deep Learning to the classification of Colonic Polyps. The classic networks we used are VGGNets and ResNets. By using global average pooling, we proposed the improved approaches: VGGNets-GAP and ResNets-GAP. The accuracies of all models in datasets exceed 98%. The TPR and TNR are above 96 and 98% respectively. In addition, VGGNets-GAP networks not only have high classification accuracies, but also have much fewer parameters than those of VGGNets. The experimental results show that the proposed approach has good effect on the automatic detection of colonic polyps. The innovations of our method are in two aspects: (1) the detection accuracy of colonic polyps has been improved. (2) our approach reduces the memory consumption and makes the model lightweight. Compared with the original VGG networks, the parameters of our VGG19-GAP networks are greatly reduced.
机译:结肠息肉更容易被癌变,尤其是具有大直径,大量和非典型增生的癌症。如果在早期不能治疗结肠息肉,它们可能会发展成结肠癌。结肠镜检查容易受到操作员的经验的限制,诸如缺乏经验和视觉疲劳等因素将直接影响诊断的准确性。与湖南儿童医院合作,我们提出并改善了具有全球平均水平汇集(间隙)的深入学习方法,以辅助诊断。我们对结肠镜检查的辅助诊断方法可以提示内窥镜手要注意可能实时忽略的息肉,提高检测率,减少错过诊断,提高医学诊断的效率。我们从湖南儿童医院的胃肠内窥镜接地中选择了结肠镜检查,形成了结肠息肉数据集。我们应用了基于深度学习的图像分类方法对结肠息肉分类。我们使用的经典网络是VGGNETS和RESNET。通过使用全局平均池,我们提出了改进的方法:VGGNets-Gap和Resnet-Gap。数据集中所有型号的准确性超过98%。 TPR和TNR分别高于96和98%。此外,VGGNets-Gap网络不仅具有高分类精度,而且比VGGNets的参数更少。实验结果表明,该方法对结肠息肉的自动检测具有良好影响。我们方法的创新有两个方面:(1)结肠息肉的检测精度得到了改善。 (2)我们的方法会降低内存消耗,使模型轻量级。与原来的VGG网络相比,我们的VGG19-GAP网络的参数大大降低。

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