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Fine-tuning Pre-trained Convolutional Neural Networks for Gastric Precancerous Disease Classification on Magnification Narrow-band Imaging Images

机译:微调预训练卷曲神经网络,用于胃癌癌癌癌的分类窄带成像图像

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Gastric cancer(GC) is the fourth leading cause of cancer death worldwide. To prevent the occurrence of advanced GCs, there is a need for immediate detection and treatment of gastric precancerous and early cancerous lesions. Magnification endoscopy with narrow-band imaging (M-NBI) system as an advanced diagnostic imaging technology is widely used in evaluating gastric lesion types, which can interpret gastric lesion characteristics by enhancing contrasts between vessels and mucosal surfaces. Based on microvascular morphologies presented on M-NBI images, physicians can manually diagnose gastric lesions; but this is a tough work for unexperienced doctors and it is lacking of objectivity. In this study, we propose a transfer learning framework by fine-tuning pre-trained convolutional neural networks (CNNs) to classify gastric M-NBI images into three classes: chronic gastritis (CGT), low grade neoplasia (LGN) and early gastric cancer (EGC). The method we choose is used to compare with three kinds of traditional handcraft texture feature extraction methods and CNN models trained directly by our dataset. Results show that the performance of fine-tuned CNNs outperforms traditional handcraft features and trained CNNs. Experiments also illustrate that ResNet50 can achieve 0.96 accuracy, 0.92, 0.91 and 0.99 f1-scores for classifying M-NBI images into CGT, LGN and EGC. In conclusion, the proposed framework is suit for multi-classification tasks of gastric M-NBI images. (c) 2019 Elsevier B.V. All rights reserved.
机译:胃癌(GC)是全世界癌症死亡的第四个主要原因。为了防止先进的GCS发生,需要立即检测和治疗胃癌癌前和早期癌变病变。具有窄带成像(M-NBI)系统作为先进的诊断成像技术的倍率内窥镜,广泛用于评估胃病变类型,其可以通过增强容器和粘膜表面之间的对比来解释胃损病变特征。基于M-NBI图像上呈现的微血管形态,医生可以手动诊断胃病变;但这对未经经验的医生来说,这是一个艰苦的工作,它缺乏客观性。在这项研究中,我们提出了通过微调预先训练的卷积神经网络(CNNS)来转移学习框架,以将胃M-NBI图像分类为三类:慢性胃炎(CGT),低级瘤瘤(LGN)和早期胃癌(EGC)。我们选择的方法用于与我们数据集直接培训的三种传统手工纹理特征提取方法和CNN型号进行比较。结果表明,微调CNNS的性能优于传统的手工特征和培训的CNN。实验还说明Reset50可以实现0.96的精度,0.92,0.91和0.99 F1分数,用于将M-NBI图像分类为CGT,LGN和EGC。总之,所提出的框架适用于胃部M-NBI图像的多分类任务。 (c)2019 Elsevier B.v.保留所有权利。

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