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利用自然语言处理技术辅助急救电话的院前电话分诊。

Using natural language processing in facilitating pre-hospital telephone triage of emergency calls.

作者信息

Gormley Kevin, Lockhart Katy, Isaac Jolly

机构信息

Mohammed Bin Rashid University of Medicine and Health Sciences.

NHS Digital.

出版信息

Br Paramed J. 2022 Sep 1;7(2):31-37. doi: 10.29045/14784726.2022.09.7.2.31.

Abstract

INTRODUCTION

Natural language processing (NLP) is an area of computer science that involves the use of computers to understand human language and semantics (meaning) and to offer consistent and reliable responses. There is good evidence of significant advancement in the use of NLP technology in dealing with acutely ill patients in hospital (such as differential diagnosis assistance, clinical decision-making and treatment options). Further technical development and research into the use of NLP could enable further improvements in the quality of pre-hospital emergency care. The aim of this literature review was to explore the opportunities and potential obstacles in implementing NLP during this phase of emergency care and to question if NLP could contribute towards improving the process of nature of call screening (NoCS) to enable earlier recognition of life-threatening situations during telephone triage of emergency calls.

METHODS

A systematic search strategy using two electronic databases (CINAHL and MEDLINE) was conducted in December 2021. The PRISMA systematic approach was used to conduct a review of the literature, and selected studies were identified and used to support a critical review of the actual and potential use of NLP for the call-taking phase of emergency care.

RESULTS

An initial search offered 204 records: 23 remained after eliminating duplicates and a consideration of title and abstracts. A further 16 full-text articles were deemed ineligible (not related to the subject under investigation), leaving seven included studies. Following a thematic review of these studies two themes emerged, that are considered individually and together: (i) use of NLP for dealing with out-of-hospital cardiac arrest and (ii) responding to increased accuracy of NLP.

CONCLUSIONS

NLP has the potential to reduce or eliminate human bias during the emergency triage assessment process and contribute towards improving triage accuracy in pre-hospital decision-making and an early identification and categorisation of life-threatening conditions. Evidence to date is mostly linked to cardiac arrest identification; this review proposes that during the call-taking phase NLP should be extended to include further medical emergencies (including fracture/trauma, stroke and ketoacidosis). Further research is indicated to test the reliability of these findings and a proportionate introduction of NLP simultaneous with increased quality and reliability.

摘要

引言

自然语言处理(NLP)是计算机科学的一个领域,涉及利用计算机来理解人类语言和语义(含义),并提供一致且可靠的回应。有充分证据表明,NLP技术在处理医院中的急危重症患者方面(如辅助鉴别诊断、临床决策和治疗方案)取得了重大进展。对NLP应用的进一步技术开发和研究可以进一步提高院前急救的质量。这篇文献综述的目的是探讨在急救的这一阶段实施NLP的机会和潜在障碍,并质疑NLP是否有助于改进呼叫性质筛查(NoCS)流程,以便在紧急呼叫的电话分诊过程中更早地识别危及生命的情况。

方法

2021年12月使用两个电子数据库(CINAHL和MEDLINE)进行了系统的检索策略。采用PRISMA系统方法对文献进行综述,并确定和选用选定的研究来支持对NLP在急救接警阶段的实际和潜在应用的批判性综述。

结果

初步检索得到204条记录:在去除重复记录并考虑标题和摘要后,剩下23条。另有16篇全文文章被认为不符合要求(与所研究的主题无关),最终纳入7项研究。对这些研究进行主题综述后出现了两个主题,分别进行考虑并综合起来:(i)使用NLP处理院外心脏骤停,以及(ii)应对NLP准确性的提高。

结论

NLP有可能在紧急分诊评估过程中减少或消除人为偏差,并有助于提高院前决策中的分诊准确性,以及早期识别和分类危及生命的状况。迄今为止的证据大多与心脏骤停的识别有关;本综述建议在接警阶段,NLP应扩展到包括更多的医疗紧急情况(包括骨折/创伤、中风和酮症酸中毒)。需要进一步研究来检验这些发现的可靠性,并在提高质量和可靠性的同时适当引入NLP。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/60c9/9662158/5acb4674ff5f/BPJ-2022-7-2-31-g001.jpg

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