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Deep learning with ultrasonography: automated classification of liver fibrosis using a deep convolutional neural network

机译:超声检查深入学习:使用深卷积神经网络自动分类肝纤维化

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摘要

Objectives The aim of this study was to develop a deep convolutional neural network (DCNN) for the prediction of the METAVIR score using B-mode ultrasonography images. Methods Datasets from two tertiary academic referral centers were used. A total of 13,608 ultrasonography images from 3446 patients who underwent surgical resection, biopsy, or transient elastography were used for training a DCNN for the prediction of the METAVIR score. Pathological specimens or estimated METAVIR scores derived from transient elastography were used as a reference standard. A four-class model (F0 vs. F1 vs. F23 vs. F4) was developed. Diagnostic performance of the algorithm was validated on a separate internal test set of 266 patients with 300 images and external test set of 572 patients with 1232 images. Performance in classification of cirrhosis was compared between the DCNN and five radiologists. Results The accuracy of the four-class model was 83.5% and 76.4% on the internal and external test set, respectively. The area under the receiver operating characteristic curve (AUC) for classification of cirrhosis (F4) was 0.901 (95% confidence interval [CI], 0.865-0.937) on the internal test set and 0.857 (95% CI, 0.825-0.889) on the external test set, respectively. The AUC of the DCNN for classification of cirrhosis (0.857) was significantly higher than that of all five radiologists (AUC range, 0.656-0.816; p value < 0.05) using the external test set. Conclusions The DCNN showed high accuracy for determining METAVIR score using ultrasonography images and achieved better performance than that of radiologists in the diagnosis of cirrhosis.
机译:目的本研究的目的是开发一种深度卷积神经网络(DCNN),用于使用B模式超声图像预测Metavir分数。方法使用来自两个第三学术推荐中心的数据集。共有13,608个超声图像图像,来自3446名接受手术切除,活组织检查或瞬态弹性摄影的患者用于训练DCNN以预测Metavir得分。从瞬态弹性造影源自衍生自瞬态弹性术的病理标本或估计的荟萃评分用作参考标准。开发了四类模型(F0与F1对F23与F4)。算法的诊断性能在266名患者的266名患者的单独内部测试组和572名患者1232次患者中进行了诊断性能。在DCNN和五种放射科学家之间比较了肝硬化分类的性能。结果分别在内部和外部测试集中的四类模型的准确性为83.5%和76.4%。用于分类的接收器操作特性曲线(AUC)的区域为肝硬化(F4)的分类为0.901(95%置信区间[CI],0.865-0.937),0.857(95%CI,0.825-0.889)外部测试集分别。用于肝硬化分类的DCNN的AUC(0.857)显着高于所有五个放射科学家(AUC范围,0.656-0.816; P值<0.05)的act。结论DCNN展示了使用超声图像测定的Metavir评分的高精度,并在肝硬化诊断中实现比放射科学家的表现更好。

著录项

  • 来源
    《European radiology》 |2020年第2期|共10页
  • 作者单位

    Sungkyunkwan Univ Sch Med Samsung Med Ctr Dept Radiol 81 Irwon Ro Seoul 06351 South Korea;

    Seoul Natl Univ Coll Med Seoul Natl Univ Hosp Dept Radiol Seoul South Korea;

    Sungkyunkwan Univ Sch Med Samsung Med Ctr Dept Radiol 81 Irwon Ro Seoul 06351 South Korea;

    Sungkyunkwan Univ Dept Med Samsung Med Ctr Sch Med Seoul South Korea;

    Sungkyunkwan Univ Dept Med Samsung Med Ctr Sch Med Seoul South Korea;

    Sungkyunkwan Univ Sch Med Dept Pathol Samsung Med Ctr Seoul South Korea;

    Samsung Med Ctr Res Inst Future Med Stat &

    Data Ctr Seoul South Korea;

    Samsung Elect Co Ltd Hlth &

    Med Equipment Business Med Imaging R&

    D Grp Seoul South Korea;

    Samsung Elect Co Ltd Hlth &

    Med Equipment Business Med Imaging R&

    D Grp Seoul South Korea;

    Samsung Elect Co Ltd Hlth &

    Med Equipment Business Med Imaging R&

    D Grp Seoul South Korea;

    Samsung Elect Co Ltd Hlth &

    Med Equipment Business Med Imaging R&

    D Grp Seoul South Korea;

  • 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

    Liver; Ultrasonography; Fibrosis; Deep learning;

    机译:肝脏;超声检查;纤维化;深入学习;

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