用于预测国际疾病分类代码的人工智能

Kaitlyn Wallace, Jakir Hossain Bhuiyan Masud
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引用次数: 0

摘要

背景:使用ICD(国际疾病分类)代码对电子医疗记录进行自动编码是一个令人感兴趣的领域,因为它有可能提高效率并简化计费和结果跟踪等流程。人工智能(AI),特别是卷积神经网络(CNN),已经被认为是自动编码的可能机制。为此,我们进行了一项快速审查,以评估CNN在从电子医疗记录中预测ICD代码方面的当前使用情况。方法:在筛选PubMed、IEEE Xplore、Scopus和Google Scholar后,分析了11项关于CNN在预测ICD代码中的应用的研究。我们在搜索策略中使用了人工智能和ICD预测作为关键词。结果:该分析建议进一步探索和研究CNN框架,将其与单词嵌入和/或神经迁移学习相结合,作为自动ICD编码的一个有前途的方向,同时保持对各种人工智能技术的研究开放。结论:CNN框架有望从临床笔记中预测ICD编码。Bangabandhu Sheikh Mujib医科大学学报2023;16(2):118-123
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Artificial intelligence for prediction of International Classification of Disease codes
Background: The automatic coding of electronic medical records with ICD (International Classification of Diseases) codes is an area of interest due to its potential in improving efficiency and streamlining processes such as billing and outcome tracking. artificial intelligence (AI), and particularly convolutional neural networks (CNN), have been suggested as a possible mechanism for automatic coding. To this end, a rapid review has been undertaken in order to assess the current use of CNN in predicting ICD codes from electronic medical records. Methods: After screening PubMed, IEEE Xplore, Scopus, and Google Scholar, 11 studies were analyzed for the use of CNN in predicting ICD codes. We used artificial intelligence and ICD prediction as keywords in the search strategy. Results: The analysis yielded a recommendation to further explore and research CNN frameworks as a promising lead to automatic ICD coding when paired with word embedding and/or neural transfer learning, while keeping research open to a wide variety of AI techniques. Conclusion: CNN frameworks are promising for the prediction of ICD codes from clinical notes. Bangabandhu Sheikh Mujib Medical University Journal 2023;16(2): 118-123
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12 weeks
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