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TAKELAB: Medical Information Extraction and Linking with MINERAL

机译:TAKELAB:医学信息的提取和与矿物的链接

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摘要

Medical texts are filled with mentions of diseases, disorders, and other clinical conditions, with many different surface forms relating to the same condition. We describe MINERAL, a system for extraction and normalization of disease mentions in clinical text, with which we participated in the Task 14 of SemEval 2015 evaluation campaign. MINERAL relies on a conditional random fields-based model with a rich set of features for mention detection, and a semantic textual similarity measure for entity linking. MINERAL reaches joint extraction and linking performance of 75.9% relaxed F_1-score (strict score of 72.7%) and ranks fourth among 16 participating teams.
机译:医学文献中充斥着关于疾病,病症和其他临床状况的提及,涉及相同状况的许多不同表面形式。我们描述了MINERAL,这是一种用于提取临床文献中提及的疾病并将其标准化的系统,我们参与了SemEval 2015评估活动的任务14。 MINERAL依赖于基于条件的基于随机字段的模型,该模型具有用于提及检测的丰富功能集以及用于实体链接的语义文本相似性度量。 MINERAL达到75.9%的轻松F_1得分(严格得分为72.7%)的联合提取和链接性能,在16个参赛团队中排名第四。

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