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Ensembles of NLP Tools for Data Element Extraction from Clinical Notes

机译:用于从临床笔记中提取数据元素的NLP工具集合

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摘要

Natural Language Processing (NLP) is essential for concept extraction from narrative text in electronic health records (EHR). To extract numerous and diverse concepts, such as data elements (i.e., important concepts related to a certain medical condition), a plausible solution is to combine various NLP tools into an ensemble to improve extraction performance. However, it is unclear to what extent ensembles of popular NLP tools improve the extraction of numerous and diverse concepts. Therefore, we built an NLP ensemble pipeline to synergize the strength of popular NLP tools using seven ensemble methods, and to quantify the improvement in performance achieved by ensembles in the extraction of data elements for three very different cohorts. Evaluation results show that the pipeline can improve the performance of NLP tools, but there is high variability depending on the cohort.
机译:自然语言处理(NLP)对于从电子健康记录(EHR)的叙述文字中提取概念至关重要。为了提取大量多样的概念,例如数据元素(即,与某种疾病相关的重要概念),可行的解决方案是将各种NLP工具组合成一个整体以提高提取性能。但是,尚不清楚流行的NLP工具的集成在多大程度上改善了对众多不同概念的提取。因此,我们建立了一个NLP集成管道,以使用7种集成方法来协同流行的NLP工具的强度,并量化通过集成为三个非常不同的队列提取数据元素而实现的性能改进。评估结果表明,该管道可以提高NLP工具的性能,但是根据同类人群的差异很大。

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