文本挖掘在自杀研究中的应用综述。

3区 医学
Current Epidemiology Reports Pub Date : 2022-01-01 Epub Date: 2022-07-26 DOI:10.1007/s40471-022-00293-w
Jennifer M Boggs, Julie M Kafka
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引用次数: 6

摘要

综述目的:将文本挖掘应用于自杀研究具有很大的前景。在本文中,对使用电子健康记录、社交媒体数据和死亡记录的文本挖掘项目从2019年到2021年的文献进行了严格审查。最近的发现:文本挖掘有助于确定一般人群和特定人群(如老年人)的自杀风险因素,并与电子病历中的结构化变量相结合,以预测自杀风险,并已用于跟踪人群层面事件(如COVID-19,名人自杀)后社交媒体自杀话语的趋势。简介:未来的研究应该利用文本挖掘和数据链接方法来获取跨数据源(例如,结合死亡记录和电子病历)的风险因素和结果的更完整的信息,评估基于nlp的干预项目的有效性,使用自杀风险预测,建立文本挖掘项目报告准确性的标准,以便进行研究间的比较,并结合实施科学来理解可行性、可接受性。还有技术方面的考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Critical Review of Text Mining Applications for Suicide Research.

Purpose of review: Applying text mining to suicide research holds a great deal of promise. In this manuscript, literature from 2019 to 2021 is critically reviewed for text mining projects that use electronic health records, social media data, and death records.

Recent findings: Text mining has helped identify risk factors for suicide in general and specific populations (e.g., older adults), has been combined with structured variables in EHRs to predict suicide risk, and has been used to track trends in social media suicidal discourse following population level events (e.g., COVID-19, celebrity suicides).

Summary: Future research should utilize text mining along with data linkage methods to capture more complete information on risk factors and outcomes across data sources (e.g., combining death records and EHRs), evaluate effectiveness of NLP-based intervention programs that use suicide risk prediction, establish standards for reporting accuracy of text mining programs to enable comparison across studies, and incorporate implementation science to understand feasibility, acceptability, and technical considerations.

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来源期刊
Current Epidemiology Reports
Current Epidemiology Reports OTORHINOLARYNGOLOGY-
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