Enhancing Automatic ICD-9-CM Code Assignment for Medical Texts with PubMed

Danchen Zhang, Daqing He, Sanqiang Zhao, Lei Li
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引用次数: 21

Abstract

Assigning a standard ICD-9-CM code to disease symptoms in medical texts is an important task in the medical domain. Automating this process could greatly reduce the costs. However, the effectiveness of an automatic ICD-9-CM code classifier faces a serious problem, which can be triggered by unbalanced training data. Frequent diseases often have more training data, which helps its classification to perform better than that of an infrequent disease. However, a disease’s frequency does not necessarily reflect its importance. To resolve this training data shortage problem, we propose to strategically draw data from PubMed to enrich the training data when there is such need. We validate our method on the CMC dataset, and the evaluation results indicate that our method can significantly improve the code assignment classifiers’ performance at the macro-averaging level.
利用PubMed增强医学文本的ICD-9-CM代码自动分配
为医学文本中的疾病症状分配标准ICD-9-CM代码是医学领域的一项重要任务。自动化这个过程可以大大降低成本。然而,ICD-9-CM代码自动分类器的有效性面临着一个严重的问题,即训练数据的不平衡。常见疾病通常有更多的训练数据,这有助于其分类比不常见疾病的分类表现更好。然而,一种疾病的发生频率并不一定反映其重要性。为了解决这一训练数据不足的问题,我们提出在有需要的时候战略性地从PubMed中提取数据来丰富训练数据。我们在CMC数据集上验证了我们的方法,评估结果表明我们的方法可以显著提高代码分配分类器在宏观平均水平上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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