Typed Markers and Context for Clinical Temporal Relation Extraction.

Cheng Cheng, Jeremy C Weiss
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Abstract

Reliable extraction of temporal relations from clinical notes is a growing need in many clinical research domains. Our work introduces typed markers to the task of clinical temporal relation extraction. We demonstrate that the addition of medical entity information to clinical text as tags with context sentences then input to a transformer-based architecture can outperform more complex systems requiring feature engineering and temporal reasoning. We propose several strategies of typed marker creation that incorporate entity type information at different granularities, with extensive experiments to test their effectiveness. Our system establishes the best result on I2B2, a clinical benchmark dataset for temporal relation extraction, with a F1 at 83.5% that provides a substantial 3.3% improvement over the previous best system.

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用于临床时空关系提取的类型标记和上下文。
从临床笔记中可靠地提取时间关系是许多临床研究领域日益增长的需求。我们的工作将类型化标记引入到临床时间关系提取任务中。我们证明,将医学实体信息作为带有上下文句子的标记添加到临床文本中,然后输入到基于转换器的架构中,其效果优于需要特征工程和时间推理的更复杂系统。我们提出了几种结合不同粒度实体类型信息的类型化标记创建策略,并通过大量实验来测试其有效性。我们的系统在时间关系提取的临床基准数据集 I2B2 上取得了最佳结果,F1 为 83.5%,比之前的最佳系统大幅提高了 3.3%。
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