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自然语言处理在急诊科分诊中的应用:叙事性综述。

Applications of natural language processing at emergency department triage: A narrative review.

机构信息

School of Medicine, The University of Western Australia, Crawley, Western Australia, Australia.

Harry Perkins Institute of Medical Research, Murdoch, Western Australia, Australia.

出版信息

PLoS One. 2023 Dec 14;18(12):e0279953. doi: 10.1371/journal.pone.0279953. eCollection 2023.

Abstract

INTRODUCTION

Natural language processing (NLP) uses various computational methods to analyse and understand human language, and has been applied to data acquired at Emergency Department (ED) triage to predict various outcomes. The objective of this scoping review is to evaluate how NLP has been applied to data acquired at ED triage, assess if NLP based models outperform humans or current risk stratification techniques when predicting outcomes, and assess if incorporating free-text improve predictive performance of models when compared to predictive models that use only structured data.

METHODS

All English language peer-reviewed research that applied an NLP technique to free-text obtained at ED triage was eligible for inclusion. We excluded studies focusing solely on disease surveillance, and studies that used information obtained after triage. We searched the electronic databases MEDLINE, Embase, Cochrane Database of Systematic Reviews, Web of Science, and Scopus for medical subject headings and text keywords related to NLP and triage. Databases were last searched on 01/01/2022. Risk of bias in studies was assessed using the Prediction model Risk of Bias Assessment Tool (PROBAST). Due to the high level of heterogeneity between studies and high risk of bias, a metanalysis was not conducted. Instead, a narrative synthesis is provided.

RESULTS

In total, 3730 studies were screened, and 20 studies were included. The population size varied greatly between studies ranging from 1.8 million patients to 598 triage notes. The most common outcomes assessed were prediction of triage score, prediction of admission, and prediction of critical illness. NLP models achieved high accuracy in predicting need for admission, triage score, critical illness, and mapping free-text chief complaints to structured fields. Incorporating both structured data and free-text data improved results when compared to models that used only structured data. However, the majority of studies (80%) were assessed to have a high risk of bias, and only one study reported the deployment of an NLP model into clinical practice.

CONCLUSION

Unstructured free-text triage notes have been used by NLP models to predict clinically relevant outcomes. However, the majority of studies have a high risk of bias, most research is retrospective, and there are few examples of implementation into clinical practice. Future work is needed to prospectively assess if applying NLP to data acquired at ED triage improves ED outcomes when compared to usual clinical practice.

摘要

简介

自然语言处理(NLP)使用各种计算方法来分析和理解人类语言,并已应用于急诊科分诊中获取的数据,以预测各种结果。本范围综述的目的是评估 NLP 如何应用于急诊科分诊中获取的数据,评估基于 NLP 的模型在预测结果时是否优于人类或当前的风险分层技术,以及评估与仅使用结构化数据的预测模型相比,纳入自由文本是否可以提高模型的预测性能。

方法

所有应用 NLP 技术分析急诊科分诊中获取的自由文本的英文同行评审研究都符合纳入标准。我们排除了仅关注疾病监测的研究和仅使用分诊后信息的研究。我们使用与 NLP 和分诊相关的医学主题词和文本关键字,在电子数据库 MEDLINE、Embase、Cochrane 系统评价数据库、Web of Science 和 Scopus 中进行了搜索。数据库的最后一次搜索时间为 2022 年 1 月 1 日。使用预测模型风险偏倚评估工具(PROBAST)评估研究的偏倚风险。由于研究之间存在高度异质性和高偏倚风险,因此未进行荟萃分析。而是提供了叙述性综合。

结果

共筛选出 3730 篇研究,纳入了 20 项研究。研究人群规模差异很大,从 180 万患者到 598 份分诊记录不等。评估的最常见结局包括分诊评分预测、入院预测和危重病预测。NLP 模型在预测入院需求、分诊评分、危重病和将自由文本主要主诉映射到结构化字段方面具有很高的准确性。与仅使用结构化数据的模型相比,同时使用结构化数据和自由文本数据可以提高结果。然而,大多数研究(80%)被评估为具有高偏倚风险,只有一项研究报告了 NLP 模型在临床实践中的部署。

结论

NLP 模型已使用非结构化自由文本分诊记录来预测临床相关结局。然而,大多数研究存在高偏倚风险,大多数研究为回顾性研究,且将其应用于临床实践的示例很少。需要前瞻性评估将 NLP 应用于急诊科分诊中获取的数据是否可以改善与常规临床实践相比的急诊科结局。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f88d/10721204/70673e6e01d9/pone.0279953.g001.jpg

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