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首页> 外文期刊>European radiology >Deep learning for liver tumor diagnosis part II: convolutional neural network interpretation using radiologic imaging features
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Deep learning for liver tumor diagnosis part II: convolutional neural network interpretation using radiologic imaging features

机译:深度学习肝肿瘤诊断第II部分:利用放射学成像特征的卷积神经网络解释

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摘要

ObjectivesTo develop a proof-of-concept interpretable deep learning prototype that justifies aspects of its predictions from a pre-trained hepatic lesion classifier.MethodsA convolutional neural network (CNN) was engineered and trained to classify six hepatic tumor entities using 494 lesions on multi-phasic MRI, described in Part 1. A subset of each lesion class was labeled with up to four key imaging features per lesion. A post hoc algorithm inferred the presence of these features in a test set of 60 lesions by analyzing activation patterns of the pre-trained CNN model. Feature maps were generated that highlight regions in the original image that correspond to particular features. Additionally, relevance scores were assigned to each identified feature, denoting the relative contribution of a feature to the predicted lesion classification.ResultsThe interpretable deep learning system achieved 76.5% positive predictive value and 82.9% sensitivity in identifying the correct radiological features present in each test lesion. The model misclassified 12% of lesions. Incorrect features were found more often in misclassified lesions than correctly identified lesions (60.4% vs. 85.6%). Feature maps were consistent with original image voxels contributing to each imaging feature. Feature relevance scores tended to reflect the most prominent imaging criteria for each class.ConclusionsThis interpretable deep learning system demonstrates proof of principle for illuminating portions ofa pre-trained deep neural network's decision-making, by analyzing inner layers and automatically describing features contributing to predictions.Key Points center dot An interpretable deep learning system prototypecan explain aspects of its decision-making by identifying relevant imaging features and showing where these features are found on an image, facilitating clinical translation.center dot By providing feedback on the importance of various radiological features in performing differential diagnosis, interpretable deep learning systems have the potential to interface with standardized reporting systems such as LI-RADS, validating ancillary features and improving clinical practicality.center dot An interpretable deep learning system could potentially add quantitative data to radiologic reports and serve radiologists with evidence-based decision support.
机译:Objectivesto制定概念验证可解释的深度学习原型,证明其从预先训练的肝病变分类器的预测的方面证明了其预测的方面。方法是在多个 - 第1部分中描述的阶段MRI。每个病变类的子集标有最多四个每个病变的关键成像特征。后HOC算法通过分析预先训练的CNN模型的激活模式,推断出60个病变的测试组中的这些特征。生成特征映射,其在原始图像中突出显示与特定功能相对应的区域。另外,将相关性分配给每个识别的特征,表示特征对预测的病变分类的相对贡献。可以解释的深度学习系统在确定每个测试病变中存在的正确放射性特征来实现76.5%的阳性预测值和82.9%的灵敏度。该模型错误分类了12%的病变。比正确鉴定的病变更常见的特征比正确鉴定的病变更常见(60.4%vs.85.6%)。特征映射与贡献每个成像功能的原始图像体素相一致。特征相关性分数趋于反映每个类别的最突出的成像标准.Conclusionsthis解释的深度学习系统通过分析内层并自动描述有助于预测的功能来展示训练的深度神经网络的决策的部分原理证明。关键点中心点解释的深度学习系统原型通过识别相关的成像特征并显示在图像上发现这些功能的位置,促进临床翻译,通过提供关于各种放射功能的重要性的反馈来解释其决策的方面.Center Dot执行鉴别诊断,可解释的深度学习系统具有与Li-RAD等标准化报告系统的界面接口,验证辅助特征和改善临床实用性。Center Dot可解释的深度学习系统可能会将定量数据添加到Radiol ogic报告和提供基于证据的决策支持的放射科医生。

著录项

  • 来源
    《European radiology》 |2019年第7期|共10页
  • 作者单位

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

    Yale Sch Med Dept Radiol &

    Biomed Imaging 333 Cedar St New Haven CT 06520 USA;

  • 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 cancer; Artificial intelligence; Deep learning;

    机译:肝癌;人工智能;深入学习;

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