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A Novel Gastric Ulcer Differentiation System Using Convolutional Neural Networks

机译:基于卷积神经网络的新型胃溃疡分化系统

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Gastric cancer can present itself as a gastric ulcer, which can mimic a benign gastric ulcer. In this paper, we introduce an objective and precise gastric ulcer differentiation system based on deep convolutional neural network (CNN) which can support the specialists by improving the diagnostic accuracy of the endoscopic examination of gastric ulcers. We first generated a new dataset consisting of endoscopic images of gastric ulcers and their corresponding type labels obtained by biopsy. We then design various ulcer differentiation models using classification or detection networks, and evaluate the performance of the models on the new dataset. Experimental results confirm that the classification network-based method shows performance comparable to doctors' diagnosis, and the detection network-based one, which first detects ulcer regions and then determines the type of ulcer based on the detection results, exhibits the best performance. The proposed method provides an unbiased diagnosis and it outperforms endoscopic diagnoses performed by the specialists in terms of total accuracy.
机译:胃癌可表现为胃溃疡,可模仿良性胃溃疡。本文介绍了一种基于深度卷积神经网络(CNN)的客观,精确的胃溃疡分化系统,该系统可通过提高内镜检查胃溃疡的诊断准确性来为专家提供支持。我们首先生成了一个新的数据集,该数据集由胃溃疡的内窥镜图像及其通过活检获得的相应类型标记组成。然后,我们使用分类或检测网络设计各种溃疡分化模型,并在新数据集上评估模型的性能。实验结果证实,基于分类网络的方法具有与医生诊断相当的性能,而基于检测网络的方法首先检测溃疡区域,然后根据检测结果确定溃疡的类型,表现出最佳的性能。所提出的方法提供了无偏见的诊断,并且在总体准确性方面胜过了专家进行的内窥镜诊断。

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