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Medical Coding Classification by Leveraging Inter-Code Relationships

机译:利用代码间关系进行医学编码分类

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Medical coding or classification is the process of transforming information contained in patient medical records into standard predefined medical codes. There are several worldwide accepted medical coding conventions associated with diagnoses and medical procedures; however, in the United States the Ninth Revision of ICD (ICD-9) provides the standard for coding clinical records. Accurate medical coding is important since it is used by hospitals for insurance billing purposes. Since after discharge a patient can be assigned or classified to several ICD-9 codes, the coding problem can be seen as a multi-label classification problem. In this paper, we introduce a multi-label large-margin classifier that automatically teams the underlying inter-code structure and allows the controlled incorporation of prior knowledge about medical code relationships. In addition to refining and learning the code relationships, our classifier can also utilize this shared information to improve its performance. Experiments on a publicly available dataset containing clinical free text and their associated medical codes showed that our proposed multi-label classifier outperforms related multi-label models in this problem.
机译:医疗编码或分类是将患者医疗记录中包含的信息转换为标准的预定义医疗编码的过程。有几种与诊断和医疗程序相关的全球公认的医学编码约定;但是,在美国,ICD的第九修订版(ICD-9)提供了编码临床记录的标准。准确的医疗编码很重要,因为医院将其用于保险计费。由于出院后可以为患者分配或分类为几个ICD-9代码,因此编码问题可以看作是多标签分类问题。在本文中,我们介绍了一种多标签大利润分类器,该分类器可自动对基础代码间的结构进行分组,并允许对有关医疗代码关系的先验知识进行可控制的合并。除了改进和学习代码关系之外,我们的分类器还可以利用此共享信息来提高其性能。在包含临床免费文本及其相关医学代码的可公开获取的数据集上进行的实验表明,在此问题中,我们提出的多标签分类器优于相关的多标签模型。

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