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首页> 外文期刊>European radiology >Deep learning for fully automated tumor segmentation and extraction of magnetic resonance radiomics features in cervical cancer
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Deep learning for fully automated tumor segmentation and extraction of magnetic resonance radiomics features in cervical cancer

机译:深度学习,用于宫颈癌宫颈癌磁共振射频分割及磁共振辐射瘤的提取

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摘要

Objective To develop and evaluate the performance of U-Net for fully automated localization and segmentation of cervical tumors in magnetic resonance (MR) images and the robustness of extracting apparent diffusion coefficient (ADC) radiomics features. Methods This retrospective study involved analysis of MR images from 169 patients with cervical cancer stage IB-IVA captured; among them, diffusion-weighted (DW) images from 144 patients were used for training, and another 25 patients were recruited for testing. A U-Net convolutional network was developed to perform automated tumor segmentation. The manually delineated tumor region was used as the ground truth for comparison. Segmentation performance was assessed for various combinations of input sources for training. ADC radiomics were extracted and assessed using Pearson correlation. The reproducibility of the training was also assessed. Results Combining b0, b1000, and ADC images as a triple-channel input exhibited the highest learning efficacy in the training phase and had the highest accuracy in the testing dataset, with a dice coefficient of 0.82, sensitivity 0.89, and a positive predicted value 0.92. The first-order ADC radiomics parameters were significantly correlated between the manually contoured and fully automated segmentation methods (p < 0.05). Reproducibility between the first and second training iterations was high for the first-order radiomics parameters (intraclass correlation coefficient = 0.70-0.99). Conclusion U-Net-based deep learning can perform accurate localization and segmentation of cervical cancer in DW MR images. First-order radiomics features extracted from whole tumor volume demonstrate the potential robustness for longitudinal monitoring of tumor responses in broad clinical settings. U-Net-based deep learning can perform accurate localization and segmentation of cervical cancer in DW MR images.
机译:目的开发和评估U-Net在磁共振(MR)图像中宫颈肿瘤的全自动定位和分割性能的性能和提取表观扩散系数(ADC)射频特征的鲁棒性。方法采用169例宫颈癌阶段IB-IVA患者捕获的169例宫颈癌患者MR图像的分析;其中,来自144名患者的扩散加权(DW)图像用于培训,另外25名患者被招募进行测试。开发了U-Net卷积网络以进行自动肿瘤分割。手动描绘的肿瘤区被用作比较的原始真理。分割性能分摊表现为培训的各种组合。利用Pearson相关提取和评估ADC射线瘤。还评估了培训的再现性。结果组合B0,B1000和ADC图像作为三通道输入的结果表现出训练阶段的最高学习效果,并且在测试数据集中具有最高的精度,骰子系数为0.82,灵敏度0.89,阳性预测值0.92 。手动轮廓和全自动分割方法之间的一阶ADC射频参数显着相关(P <0.05)。第一阶射频参数的第一和第二训练迭代之间的再现性(脑关联系数= 0.70-0.99)很高。结论基于U-Net的深度学习可以在DW MR图像中进行准确定位和宫颈癌的分割。从整个肿瘤卷中提取的一级辐射瘤特征表明了广泛的临床环境中肿瘤反应纵向监测的潜在稳健性。基于U-Net的深度学习可以在DW MR图像中进行准确定位和宫颈癌的分割。

著录项

  • 来源
    《European radiology》 |2020年第3期|共9页
  • 作者单位

    Chang Gung Mem Hosp Linkou Dept Med Imaging &

    Intervent 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Mem Hosp Linkou Dept Med Imaging &

    Intervent 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Mem Hosp Linkou Dept Med Imaging &

    Intervent 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Mem Hosp Linkou Dept Med Imaging &

    Intervent 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Mem Hosp Linkou Dept Med Imaging &

    Intervent 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Mem Hosp Linkou Dept Med Imaging &

    Intervent 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Mem Hosp Linkou Dept Med Imaging &

    Intervent 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Mem Hosp Linkou Inst Radiol Res Imaging Core Lab 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Univ 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Mem Hosp Linkou Inst Radiol Res Imaging Core Lab 5 Fuhsing St Taoyuan 33382 Taiwan;

    Chang Gung Mem Hosp Linkou Dept Med Imaging &

    Intervent 5 Fuhsing St Taoyuan 33382 Taiwan;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 放射医学;
  • 关键词

    Apparent diffusion coefficient; Diffusion-weighted imaging; Uterine cervical neoplasm; Deep learning; Radiomics;

    机译:表观扩散系数;扩散加权成像;子宫宫颈肿瘤;深入学习;辐射瘤;

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