结合深度学习和模糊逻辑从临床记录中预测罕见的ICD-10代码

T. Chomutare, A. Budrionis, H. Dalianis
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引用次数: 1

摘要

计算机辅助编码(CAC)临床文本到标准化分类,如ICD-10是一个重要的挑战。对于经常使用的ICD-10代码,深度学习方法已经相当成功。然而,对于稀有代码,这个问题仍然很突出。为了提高罕见代码的性能,提出了一种利用ICD-10代码层次结构的管道,将深度学习的语义能力与模糊逻辑的灵活性相结合。使用的数据是瑞典语胃肠疾病医学专业的出院摘要。利用该方法,减少了模糊匹配的计算时间,提高了罕见码前10次匹配的准确性。虽然这种方法很有前途,但在管道成为可用原型的一部分之前,还需要进一步的工作。代码存储库:https://github.com/icd-coding/zeroshot。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining deep learning and fuzzy logic to predict rare ICD-10 codes from clinical notes
Computer assisted coding (CAC) of clinical text into standardized classifications such as ICD-10 is an important challenge. For frequently used ICD-10 codes, deep learning approaches have been quite successful. For rare codes, however, the problem is still outstanding. To improve performance for rare codes, a pipeline is proposed that takes advantage of the ICD-10 code hierarchy to combine semantic capabilities of deep learning and the flexibility of fuzzy logic. The data used are discharge summaries in Swedish in the medical speciality of gastrointestinal diseases. Using our pipeline, fuzzy matching computation time is reduced and accuracy of the top 10 hits of the rare codes is also improved. While the method is promising, further work is required before the pipeline can be part of a usable prototype. Code repository: https://github.com/icd-coding/zeroshot.
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