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A Deep Learning Method for ICD-10 Coding of Free-Text Death Certificates

机译:ICD-10自由文本死亡证书编码的深度学习方法

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The assignment of disease codes to clinical texts has a wide range of applications, including epidemiological studies or disease surveillance. We address the task of automatically assigning the ICD-10 codes for the underlying cause of death, from the free-text descriptions included in death certificates obtained from the Portuguese Ministry of Health. We specifically propose to leverage a deep neural network based on a two-level hierarchy of recurrent nodes together with attention mechanisms. The first level uses recurrent nodes for modeling the sequences of words given in individual fields of the death certificates, together with attention to weight the contribution of each word, producing intermediate representations for the contents of each field. The second level uses recurrent nodes to model a sequence of fields, using the representations produced by the first level and also leveraging attention in order to weight the contributions of the different fields. The paper reports on experiments with a dataset of 115,406 death certificates, presenting the results of an evaluation of the predictive accuracy of the proposed method, for different ICD-10 levels (i.e., chapter, block, or full code) and for particular causes of death. We also discuss how the neural attention mechanisms can help in interpreting the classification results.
机译:疾病代码在临床文本中的分配具有广泛的应用,包括流行病学研究或疾病监测。我们根据从葡萄牙卫生部获得的死亡证明中包含的自由文本描述,解决了自动为潜在的死因分配ICD-10代码的任务。我们特别建议利用基于递归节点的两级层次结构以及注意机制的深度神经网络。第一级使用递归节点对死亡证书的各个字段中给出的单词序列进行建模,并注意权重每个单词的贡献,从而为每个字段的内容生成中间表示。第二级使用递归节点,使用第一级产生的表示来建模字段序列,并利用注意力来加权不同字段的贡献。该论文报告了使用115,406个死亡证书的数据集进行的实验,介绍了针对不同ICD-10级别(即章,块或完整代码)以及特定原因导致的拟议方法的预测准确性的评估结果。死亡。我们还将讨论神经注意力机制如何帮助解释分类结果。

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