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首页> 外文期刊>BMC Medical Informatics and Decision Making >Identifying direct temporal relations between time and events from clinical notes
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Identifying direct temporal relations between time and events from clinical notes

机译:从临床记录中识别时间和事件之间的直接时间关系

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Most of the current work on clinical temporal relation identification follows the convention developed in the general domain, aiming to identify a comprehensive set of temporal relations from a document including both explicit and implicit relations. While such a comprehensive set can represent temporal information in a document in a complete manner, some of the temporal relations in the comprehensive set may not be essential depending on the clinical application of interest. Moreover, as the types of evidence that should be used to identify explicit and implicit relations are different, current clinical temporal relation identification systems that target both explicit and implicit relations still show low performances for practical use. In this paper, we propose to focus on a sub-task of conventional temporal relation identification task in order to provide insight into building practical temporal relation identification modules for clinical text. We focus on identification of direct temporal relations, a subset of temporal relations that is chosen to minimize the amount of inference required to identify the relations. A corpus on direct temporal relations between time expressions and event mentions is constructed, and an automatic system tailored for direct temporal relations is developed. It is shown that the direct temporal relations constitute a major category of temporal relations that contain important information needed for clinical applications. The system optimized for direct temporal relations achieves better performance than the state-of-the-art system developed with comprehensive set of both explicit and implicit relations in mind. We expect direct temporal relations to facilitate the development of practical temporal information extraction tools in clinical domain.
机译:当前有关临床时态关系识别的大多数工作都遵循在通用领域开发的惯例,旨在从文档中识别出一套全面的时态关系,包括显式和隐式关系。尽管这样一个全面的集合可以以完整的方式表示文档中的时间信息,但是取决于感兴趣的临床应用,该全面的集合中的某些时间关系可能不是必需的。此外,由于应用于识别显式和隐式关系的证据类型不同,当前针对显式和隐式关系的临床时态关系识别系统仍然显示出较低的实用性。在本文中,我们建议将重点放在常规时间关系识别任务的子任务上,以便为构建实用的临床文本时间关系识别模块提供见解。我们专注于直接时间关系的识别,直接时间关系是选择的时间关系子集,以最大程度地减少识别关系所需的推理量。构造了一个关于时间表达与事件提及之间的直接时间关系的语料库,并开发了为直接时间关系量身定制的自动系统。结果表明,直接时间关系构成了时间关系的主要类别,其中包含临床应用所需的重要信息。与直接考虑时态关系和隐式关系的综合集而开发的最新系统相比,针对直接时间关系进行了优化的系统具有更好的性能。我们期望直接的时态关系能够促进临床领域实用时态信息提取工具的发展。

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