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à la recherche du temps perdu: Extracting temporal relations from medical text in the 2012 i2b2 NLP challenge

机译:寻找丢失的时间:在2012 i2b2 NLP挑战中从医学文本中提取时间关系

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Objective: An analysis of the timing of events is critical for a deeper understanding of the course of events within a patient record. The 2012 i2b2 NLP challenge focused on the extraction of temporal relationships between concepts within textual hospital discharge summaries. Materials and methods: The team from the National Research Council Canada (NRC) submitted three system runs to the second track of the challenge: typifying the time-relationship between pre-annotated entities. The NRC system was designed around four specialist modules containing statistical machine learning classifiers. Each specialist targeted distinct sets of relationships: local relationships, 'sectime'-type relationships, non-local overlap-type relationships, and non-local causal relationships. Results: The best NRC submission achieved a precision of 0.7499, a recall of 0.6431, and an F1 score of 0.6924, resulting in a statistical tie for first place. Post hoc improvements led to a precision of 0.7537, a recall of 0.6455, and an F1 score of 0.6954, giving the highest scores reported on this task to date. Discussion and conclusions: Methods for general relation extraction extended well to temporal relations, and gave top-ranked state-of-the-art results. Careful ordering of predictions within result sets proved critical to this success.
机译:目的:对事件的时间进行分析对于深入了解患者记录中的事件过程至关重要。 2012 i2b2 NLP挑战集中在文本出院摘要中概念之间的时间关系提取。材料和方法:来自加拿大国家研究委员会(NRC)的团队向挑战的第二轨道提交了三个系统运行:定义预先注释的实体之间的时间关系。 NRC系统是围绕包含统计机器学习分类器的四个专业模块设计的。每个专家都针对不同的关系集:本地关系,“秒”型关系,非本地重叠型关系和非本地因果关系。结果:最佳NRC提交的精度为0.7499,召回率为0.6431,F1得分为0.6924,在统计上均排名第一。事后的改进导致精度为0.7537,召回率为0.6455,F1得分为0.6954,是迄今为止该任务的最高得分。讨论和结论:一般关系提取的方法很好地扩展到时间关系,并给出了最新的最新结果。结果集中对预测的仔细排序被证明对成功至关重要。

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