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Paying Per-Label Attention for Multi-label Extraction from Radiology Reports

机译:从放射学报告中支付用于多标签提取的每个标签注意

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摘要

Training medical image analysis models requires large amounts of expertly annotated data which is time-consuming and expensive to obtain. Images are often accompanied by free-text radiology reports which are a rich source of information. In this paper, we tackle the automated extraction of structured labels from head CT reports for imaging of suspected stroke patients, using deep learning. Firstly, we propose a set of 31 labels which correspond to radiographic findings (e.g. hyperdensity) and clinical impressions (e.g. haemorrhage) related to neurological abnormalities. Secondly, inspired by previous work, we extend existing state-of-the-art neural network models with a label-dependent attention mechanism. Using this mechanism and simple synthetic data augmentation, we are able to robustly extract many labels with a single model, classified according to the radiologist's reporting (positive, uncertain, negative). This approach can be used in further research to effectively extract many labels from medical text.
机译:培训医学图像分析模型需要大量的专业注释数据,该数据是耗时和昂贵的。图像通常伴随着自由文本放射学报告,这些报告是丰富的信息来源。在本文中,我们使用深入学习,解决来自Head CT报告的结构化标签的自动提取,用于疑似中风患者的成像。首先,我们提出了一组31个标签,其对应于与神经异常有关的射线照相发现(例如高度最高)和临床印象(例如,出血)。其次,受到以前的工作的启发,我们通过标签依赖性关注机制扩展了现有的最先进的神经网络模型。使用这种机制和简单的合成数据增强,我们能够通过单一模型强大地提取许多标签,根据放射科学专家的报告(正,不确定,负)分类。这种方法可以用于进一步的研究,以有效地从医学文本中提取许多标签。

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