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A Hybrid Normalization Method for Medical Concepts in Clinical Narrative using Semantic Matching

机译:基于语义匹配的临床叙事医学概念混合归一化方法

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摘要

Normalization maps clinical terms in medical notes to standardized medical vocabularies. In order to capture semantic similarity between different surface expressions of the same clinical concept, we develop a hybrid normalization system that incorporates a deep learning model to complement the traditional dictionary lookup ap- proach. We evaluate our system against the ShARe/CLEF 2013 challenge data in which 30% of the mentions have no concept mapping. When evaluating against the mentions which may be normalized to existing concepts, our hybrid system achieves 90.6% accuracy, obtaining a statistically significant improvement of 2.6% over a strong edit-distance and dictionary lookup combined baseline. Our analysis of semantic similarity between concepts and mentions reveals existing inconsistencies in ShARe/CLEF data, as well as problematic ambiguities in the UMLS. Our results suggest the potential of the proposed deep learning approach to further improve the performance of normalization by utilizing semantic similarity.
机译:规范化将医学笔记中的临床术语映射到标准化的医学词汇表。为了捕获同一临床概念的不同表面表达之间的语义相似性,我们开发了一种混合归一化系统,该系统结合了深度学习模型以补充传统的字典查找方法。我们根据ShARe / CLEF 2013挑战数据评估了我们的系统,其中有30%的提及没有概念映射。当针对可能被归类为现有概念的提及进行评估时,我们的混合系统可达到90.6%的准确性,与强大的编辑距离和字典查找组合基线相比,统计上的显着改善为2.6%。我们对概念与提及之间的语义相似性的分析揭示了ShARe / CLEF数据中存在的不一致之处,以及UMLS中存在问题的歧义。我们的结果表明,所提出的深度学习方法有可能通过利用语义相似性进一步提高规范化性能。

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