用于检测药物不良事件的自然语言处理:系统评价方案。

NIHR open research Pub Date : 2024-12-10 eCollection Date: 2023-01-01 DOI:10.3310/nihropenres.13504.2
Imane Guellil, Jinge Wu, Aryo Pradipta Gema, Farah Francis, Yousra Berrachedi, Nidhaleddine Chenni, Richard Tobin, Clare Llewellyn, Stella Arakelyan, Honghan Wu, Bruce Guthrie, Beatrice Alex
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引用次数: 0

摘要

背景:药物不良事件检测是一个新兴的研究领域,引起了研究界的极大兴趣。对诱发因素进行更好的预期管理对改善预后具有相当大的潜力。使用自然语言处理(NLP)自动提取ade具有极大的潜力,可以显著促进这些知识的高效和有效的蒸馏,从而更好地理解和预测不良事件的风险。方法:系统综述了6个数据库(Embase、Medline、Web Of Science Core Collection、ACM Guide to Computing literature、IEEE Digital Library和Scopus)的6篇文献。在标题之后,将对纳入的研究和资源的摘要和全文筛选、特征和主要发现进行制表和总结。使用PROBAST工具评估偏倚风险和报告质量。结果:我们制定了搜索策略并收集了所有相关出版物。截至2024年7月,我们已经完成了系统审查的所有阶段。我们通过学术文献检索(从所有论文中提取数据)确定了178项研究。现在,我们正在撰写系统综述论文,综合不同的发现。自2022年8月以来,一直在进一步完善资格标准和数据提取。结论:在本系统综述中,我们将识别和整合与现有NLP方法和工具的使用和有效性相关的信息和证据,这些方法和工具用于从自由文本(出院摘要、全科医生笔记、社交媒体等)中自动检测ade。我们的研究结果将提高对使用NLP提取ade的现状的理解。它将导致对诱发因素的更好的预期管理,并有可能大大改善结果。我们的研究结果对于开发提取ade方法的NLP研究人员,以及将NLP用于此目的的转化/临床研究人员和一般医疗保健领域的研究人员也很有价值。例如,从我们对研究的初步分析中,我们可以得出结论,大多数提出的工作都是关于从文本中检测(提取)ade。研究的一个重要部分还集中在文本的二进制分类(用于突出显示是否包含ade)。研究论文还提到了与不平衡数据集,缩写和首字母缩略词以及罕见ade的较低结果相关的不同挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Natural language processing for detecting adverse drug events: A systematic review protocol.

Background: Detecting Adverse Drug Events (ADEs) is an emerging research area, attracting great interest in the research community. Better anticipatory management of predisposing factors has considerable potential to improve outcomes. Automatic extraction of ADEs using Natural Language Processing (NLP) has a great potential to significantly facilitate efficient and effective distillation of such knowledge, to better understand and predict risk of adverse events.

Methods: This systematic review follows the six-stage including the literature from 6 databases (Embase, Medline, Web Of Science Core Collection, ACM Guide to Computing Literature, IEEE Digital Library and Scopus). Following the title, abstract and full-text screenings, characteristics and main findings of the included studies and resources will be tabulated and summarized. The risk of bias and reporting quality was assessed using the PROBAST tool.

Results: We developed our search strategy and collected all relevant publications. As of December 2024, we have completed all the stages of the systematic review. We identified 178 studies for inclusion through the academic literature search (where data was extracted from all of the papers). Right now, we are writing up the systematic review paper where we are synthesising the different findings. Further refinement of the eligibility criteria and data extraction has been ongoing since August 2022.

Conclusion: In this systematic review, we will identify and consolidate information and evidence related to the use and effectiveness of existing NLP approaches and tools for automatically detecting ADEs from free text (discharge summaries, General Practitioner notes, social media, etc.). Our findings will improve the understanding of the current landscape of the use of NLP for extracting ADEs. It will lead to better anticipatory management of predisposing factors with the potential to improve outcomes considerably. Our results will also be valuable both to NLP researchers developing methods to extract ADEs and to translational/clinical researchers who use NLP for this purpose and in healthcare in general. For example, from our initial analysis of the studies, we can conclude that the majority of the proposed works are about the detection (extraction) of ADEs from text. An important portion of studies also focus on the binary classification of text (for highlighting if it includes or not ADEs). Different challenges related to the unbalanced dataset, abbreviations and acronyms but also to the lower results with rare ADEs were also mentioned by the studied papers.

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