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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Deep Transfer Learning for Histopathological Diagnosis of Cervical Cancer Using Convolutional Neural Networks with Visualization Schemes
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Deep Transfer Learning for Histopathological Diagnosis of Cervical Cancer Using Convolutional Neural Networks with Visualization Schemes

机译:利用可视化方案使用卷积神经网络宫颈癌组织病理学诊断的深度转移学习

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摘要

This study aimed to propose a deep transfer learning framework for histopathological image analysis by using convolutional neural networks (CNNs) with visualization schemes, and to evaluate its usage for automated and interpretable diagnosis of cervical cancer. First, in order to examine the potential of the transfer learning for classifying cervix histopathological images, we pre-trained three state-of-the-art CNN architectures on large-size natural image datasets and then fine-tuned them on small-size histopathological datasets. Second, we investigated the impact of three learning strategies on classification accuracy. Third, we visualized both the multiple-layer convolutional kernels of CNNs and the regions of interest so as to increase the clinical interpretability of the networks. Our method was evaluated on a database of 4993 cervical histological images (2503 benign and 2490 malignant). The experimental results demonstrated that our method achieved 95.88% sensitivity, 98.93% specificity, 97.42% accuracy, 94.81% Youden's index and 99.71% area under the receiver operating characteristic curve. Our method can reduce the cognitive burden on pathologists for cervical disease classification and improve their diagnostic efficiency and accuracy. It may be potentially used in clinical routine for histopathological diagnosis of cervical cancer.
机译:本研究旨在通过使用可视化方案使用卷积神经网络(CNNS)来提出用于组织病理学图像分析的深度转移学习框架,并评估其对宫颈癌的自动化和可解释诊断的用法。首先,为了检查转移学习的转移学习,用于分类子宫颈病理学图像,我们在大尺寸的自然图像数据集上预先训练了三个最先进的CNN架构,然后在小尺寸的组织病理学上进行微调。数据集。其次,我们调查了三种学习策略对分类准确性的影响。第三,我们可视化CNN的多层卷积核和感兴趣的区域,以提高网络的临床可解释性。我们的方法评估了4993个宫颈组织学图像(2503良性和2490恶性)的数据库。实验结果表明,我们的方法敏感度为95.88%,特异性为98.93%,精度为97.42%,17.81%的尺寸为94.81%,在接收器运行特征曲线下的99.71%的区域。我们的方法可以降低宫颈病分类病理学家的认知负担,提高其诊断效率和准确性。可能有可能用于临床常规用于宫颈癌的组织病理学诊断。

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  • 作者单位

    Shanghai Univ Shanghai Inst Adv Commun &

    Data Sci Shanghai 200444 Peoples R China;

    Hubei Univ Arts &

    Sci Xiangyang Cent Hosp Dept Obstet &

    Gynecol Xiangyang 491021 Hubei Peoples R China;

    Shanghai Univ Shanghai Inst Adv Commun &

    Data Sci Shanghai 200444 Peoples R China;

    Shanghai Univ Shanghai Inst Adv Commun &

    Data Sci Shanghai 200444 Peoples R China;

    Shanghai Univ Shanghai Inst Adv Commun &

    Data Sci Shanghai 200444 Peoples R China;

    Hubei Univ Arts &

    Sci Xiangyang Cent Hosp Dept Obstet &

    Gynecol Xiangyang 491021 Hubei Peoples R China;

    Hubei Univ Arts &

    Sci Xiangyang Cent Hosp Dept Obstet &

    Gynecol Xiangyang 491021 Hubei Peoples R China;

    Hubei Univ Arts &

    Sci Xiangyang Cent Hosp Dept Obstet &

    Gynecol Xiangyang 491021 Hubei Peoples R China;

    Shanghai Univ Shanghai Inst Adv Commun &

    Data Sci Shanghai 200444 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 放射卫生;
  • 关键词

    Convolutional Neural Network; Cervical Cancer; Histopathology; Transfer Learning;

    机译:卷积神经网络;宫颈癌;组织病理学;转移学习;

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