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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Can a Machine Learn from Radiologists' Visual Search Behaviour and Their Interpretation of Mammograms-a Deep-Learning Study
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Can a Machine Learn from Radiologists' Visual Search Behaviour and Their Interpretation of Mammograms-a Deep-Learning Study

机译:一台机器可以从放射科医师的视觉搜索行为中学习及其对乳房X光检查的解释 - 深度学习研究

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Visual search behaviour and the interpretation of mammograms have been studied for errors in breast cancer detection. We aim to ascertain whether machine-learning models can learn about radiologists' attentional level and the interpretation of mammograms. We seek to determine whether these models are practical and feasible for use in training and teaching programmes. Eight radiologists of varying experience levels in reading mammograms reviewed 120 two-view digital mammography cases (59 cancers). Their search behaviour and decisions were captured using a head-mounted eye-tracking device and software allowing them to record their decisions. This information from radiologists was used to build an ensembled machine-learning model using top-down hierarchical deep convolution neural network. Separately, a model to determine type of missed cancer (search, perception or decision-making) was also built. Analysis and comparison of variants of these models using different convolution networks with and without transfer learning were also performed. Our ensembled deep-learning network architecture can be trained to learn about radiologists' attentional level and decisions. High accuracy (95%, p value approximately equal to 0 [better than dumb/random model]) and high agreement between true and predicted values (kappa = 0.83) in such modelling can be achieved. Transfer learning techniques improve by < 10% with the performance of this model. We also show that spatial convolution neural networks are insufficient in determining the type of missed cancers. Ensembled hierarchical deep convolution machine-learning models are plausible in modelling radiologists' attentional level and their interpretation of mammograms. However, deep convolution networks fail to characterise the type of false-negative decisions.
机译:研究了乳腺癌检测中的误差研究了视觉搜索行为和乳房X线照片的解释。我们的目标是确定机器学习模式是否可以了解放射科注意力水平和乳房X光检查的解释。我们寻求确定这些模型是否实用,可用于培训和教学计划。八个辐射学家庭在阅读乳房X光线照片中的不同体验水平评估了120个两视图数字乳房摄影病例(59个癌症)。他们的搜索行为和决策是使用头戴式的眼跟踪设备和软件捕获的,允许它们记录其决定。来自放射科医生的信息用于使用自上而下的分层深度卷积神经网络来构建合奏的机器学习模型。另外,还建立了一种确定错过癌症类型的模型(搜索,感知或决策)。还执行了使用不同卷积网络的这些模型变形的分析和比较,但没有转移学习。我们可以培训我们合奏的深度学习网络架构,以了解放射学家的注意力水平和决策。可以实现高精度(95%,P值大约等于0 [优于愚蠢/随机模型]),并且可以在这种建模中实现真实和预测值(Kappa = 0.83)之间的高协议。转移学习技术通过该模型的性能提高<10%。我们还表明空间卷积神经网络在确定错过的癌症类型时不足。合奏的等级深度卷积机学习模型是既理辐射学家的注意力水平和对乳房X光检查的诠释。但是,深度卷积网络未能表征虚假否定决策的类型。

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