Hierarchical Annotation for Building A Suite of Clinical Natural Language Processing Tasks: Progress Note Understanding.

Yanjun Gao, Dmitriy Dligach, Timothy Miller, Samuel Tesch, Ryan Laffin, Matthew M Churpek, Majid Afshar
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Abstract

Applying methods in natural language processing on electronic health records (EHR) data is a growing field. Existing corpus and annotation focus on modeling textual features and relation prediction. However, there is a paucity of annotated corpus built to model clinical diagnostic thinking, a process involving text understanding, domain knowledge abstraction and reasoning. This work introduces a hierarchical annotation schema with three stages to address clinical text understanding, clinical reasoning, and summarization. We created an annotated corpus based on an extensive collection of publicly available daily progress notes, a type of EHR documentation that is collected in time series in a problem-oriented format. The conventional format for a progress note follows a Subjective, Objective, Assessment and Plan heading (SOAP). We also define a new suite of tasks, Progress Note Understanding, with three tasks utilizing the three annotation stages. The novel suite of tasks was designed to train and evaluate future NLP models for clinical text understanding, clinical knowledge representation, inference, and summarization.

构建一套临床自然语言处理任务的分层注释:进度说明理解。
将自然语言处理方法应用于电子健康记录(EHR)数据是一个新兴的领域。现有的语料库和标注侧重于文本特征建模和关系预测。然而,临床诊断思维是一个涉及文本理解、领域知识抽象和推理的过程,缺乏用于模拟临床诊断思维的带注释的语料库。这项工作介绍了一个分层注释模式,分为三个阶段,以解决临床文本理解,临床推理和总结。我们基于大量公开可用的每日进度记录创建了一个带注释的语料库,这是一种以面向问题的格式按时间序列收集的EHR文档。进度记录的常规格式遵循主观、客观、评估和计划标题(SOAP)。我们还定义了一套新的任务,Progress Note Understanding,其中有三个任务利用了三个注释阶段。这套新的任务被设计用来训练和评估未来用于临床文本理解、临床知识表示、推理和总结的NLP模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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