Defining and Learning Refined Temporal Relations in the Clinical Narrative

Kristin Wright-Bettner, Chen Lin, T. Miller, Steven Bethard, Dmitriy Dligach, Martha Palmer, James H. Martin, G. Savova
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引用次数: 8

Abstract

We present refinements over existing temporal relation annotations in the Electronic Medical Record clinical narrative. We refined the THYME corpus annotations to more faithfully represent nuanced temporality and nuanced temporal-coreferential relations. The main contributions are in re-defining CONTAINS and OVERLAP relations into CONTAINS, CONTAINS-SUBEVENT, OVERLAP and NOTED-ON. We demonstrate that these refinements lead to substantial gains in learnability for state-of-the-art transformer models as compared to previously reported results on the original THYME corpus. We thus establish a baseline for the automatic extraction of these refined temporal relations. Although our study is done on clinical narrative, we believe it addresses far-reaching challenges that are corpus- and domain- agnostic.
临床叙事中精细时间关系的定义与学习
我们提出了改进现有的时间关系注解在电子病历临床叙述。我们改进了THYME语料库注释,以便更忠实地表示细微的时间性和细微的时间-共指关系。主要贡献在于将CONTAINS和OVERLAP关系重新定义为CONTAINS、CONTAINS- subbevent、OVERLAP和note - on。我们证明,与先前在原始THYME语料库上报告的结果相比,这些改进导致了最先进的变压器模型的可学习性的实质性提高。因此,我们为自动提取这些精细的时间关系建立了一个基线。虽然我们的研究是在临床叙事上完成的,但我们相信它解决了语料库和领域不可知论的深远挑战。
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