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GastroNet: Abnormalities Recognition in Gastrointestinal Tract through Endoscopic Imagery using Deep Learning Techniques

机译:Gastronet:使用深层学习技术通过内窥镜图像胃肠道异常识别

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The human gastrointestinal (GI) tract may be infected by various diseases. If not detected at early stages, these abnormalities have the possibility to progress into gastric cancer, which is a common type of malignancies with yearly global cases exceeding one million. Endoscopy is a routinely used strategy for the examination of gastrointestinal tract diseases. During the examination, and due to many reasons like irregular morphologies, a huge number of frames, and exhaustion, gastrologists can miss some abnormalities. Thus, the automated classification of anomalies in endoscopic images is becoming necessary to assist medical diagnosis and reduce the cost and time of the medical process. Recent advances and high performance of deep learning techniques make it the best choice to adopt as a computer-aided-diagnosis strategy. In this paper, a novel deep learning model based deep convolutional neural network is proposed. Our model aims to automatically detect diseases from endoscopic images. The newly designed architecture is validated on the publicly available dataset KVASIR, which contains 8000 images. The results of our CNN approach compared to other well known pre-trained models showed important improvement and achieved 96.89% in terms of accuracy. The experiments demonstrated that the system can perform a high detection level without any human intervention.
机译:人胃肠道(GI)道可能受到各种疾病的感染。如果未在早期阶段检测到,这些异常有可能进化到胃癌,这是一年大的全球案例超过一百万的常见恶性肿瘤。内窥镜检查是一种常规使用的胃肠道疾病的策略。在考试期间,由于许多原因如不规则的形态,大量的框架和疲惫,胃泌素家都会错过一些异常。因此,内窥镜图像中的异常自动分类是有必要帮助医疗诊断并降低医疗过程的成本和时间。深度学习技术的最新进展和高性能使其成为一种通过作为计算机辅助诊断策略采用的最佳选择。本文提出了一种基于深度卷积神经网络的新型深度学习模型。我们的模型旨在自动检测内窥镜图像的疾病。新设计的架构在公开的数据集kvasir上验证,其中包含8000个图像。与其他众所周知的预训练模型相比,我们的CNN方法的结果表明,在准确性方面表现出重要的改进和实现了96.89%。实验表明,该系统可以在没有任何人为干预的情况下执行高检测水平。

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