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The use of narrative text for injury surveillance research: A systematic review

机译:叙述文本在伤害监测研究中的应用:系统综述

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摘要

Objective: To summarise the extent to which narrative text fields in administrative health data are used to gather information about the event resulting in presentation to a health care provider for treatment of an injury, and to highlight best practise approaches to conducting narrative text interrogation for injury surveillance purposes. Design: Systematic review.rnData sources: Electronic databases searched included CINAHL, Google Scholar, Medline, Proquest, PubMed and PubMed Central. Snowballing strategies were employed by searching the bibliographies of retrieved references to identify relevant associated articles.rnSelection criteria: Papers were selected if the study used a health-related database and if the study objectives were to a) use text field to identify injury cases or use text fields to extract additional information on injury circumstances not available from coded data or b) use text fields to assess accuracy of coded data fields for injury-related cases or c) describe methods/approaches for extracting injury information from text fields.rnMethods: The papers identified through the search were independently screened by two authors for inclusion, resulting in 41 papers selected for review. Due to heterogeneity between studies meta-analysis was not performed.rnResults: The majority of papers reviewed focused on describing injury epidemiology trends using coded data and text fields to supplement coded data (28 papers), with these studies demonstrating the value of text data for providing more specific information beyond what had been coded to enable case selection or provide circumstantial information. Caveats were expressed in terms of the consistency and completeness of recording of text information resulting in underestimates when using these data. Four coding validation papers were reviewed with these studies showing the utility of text data for validating and checking the accuracy of coded data. Seven studies (9 papers) described methods for interrogating injury text fields for systematic extraction of information, with a combination of manual and semi-automated methods used to refine and develop algorithms for extraction and classification of coded data from text. Quality assurance approaches to assessing the robustness of the methods for extracting text data was only discussed in 8 of the epidemiology papers, and 1 of the coding validation papers. All of the text interrogation methodology papers described systematic approaches to ensuring the quality of the approach.rnConclusions: Manual review and coding approaches, text search methods, and statistical tools have been utilised to extract data from narrative text and translate it into useable, detailed injury event information. These techniques can and have been applied to administrative datasets to identify specific injury types and add value to previously coded injury datasets. Only a few studies thoroughly described the methods which were used for text mining and less than half of the studies which were reviewed used/described quality assurance methods for ensuring the robustness of the approach. New techniques utilising semi-automated computerised approaches and Bayesian/clustering statistical methods offer the potential to further develop and standardise the analysis of narrative text for injury surveillance.
机译:目的:总结行政健康数据中的叙述性文本字段在多大程度上用于收集有关事件的信息,从而将结果呈现给医疗保健提供者以处理伤害,并重点介绍针对伤害性进行叙述性文本询问的最佳实践方法监视目的。设计:系统审查。数据来源:搜索的电子数据库包括CINAHL,Google Scholar,Medline,Proquest,PubMed和PubMed Central。滚雪球策略是通过检索检索参考文献的书目来确定相关的相关文章。选择标准:如果研究使用与健康相关的数据库并且研究目标是a)使用文本字段来识别伤害病例或使用方法,则选择论文。文本字段以提取无法从编码数据中获取的有关伤害情况的其他信息,或者b)使用文本字段评估与伤害有关的案件的编码数据字段的准确性,或者c)描述从文本字段中提取伤害信息的方法/方法。通过搜索确定的论文均由两名作者独立筛选以纳入,导致有41篇论文被选中进行审查。由于研究之间的异质性,因此未进行荟萃分析。rn结果:大部分被综述的论文侧重于使用编码数据和文本字段补充编码数据来描述伤害流行病学趋势(28篇论文),这些研究证明了文本数据对于评估数据的价值除了可以进行案例选择或提供环境信息的编码内容之外,还提供其他更具体的信息。需要说明的是,文本信息记录的一致性和完整性会导致使用这些数据时被低估。这些研究回顾了四篇编码验证文件,这些文件显示了文本数据用于验证和检查编码数据准确性的实用性。七项研究(9篇论文)描述了询问伤害文本字段以系统地提取信息的方法,并结合了手动和半自动方法来完善和开发从文本中提取和分类编码数据的算法。仅在8篇流行病学论文和1篇编码验证论文中讨论了用于评估文本数据提取方法的鲁棒性的质量保证方法。所有文本询问方法学论文都描述了确保方法质量的系统方法。结论:人工审阅和编码方法,文本搜索方法和统计工具已用于从叙述性文本中提取数据并将其转化为可用的详细伤害事件信息。这些技术可以并且已经应用​​于管理数据集,以识别特定的伤害类型并为以前编码的伤害数据集增加价值。只有少数研究彻底描述了用于文本挖掘的方法,而少于一半的研究被复述过使用/描述了确保方法鲁棒性的质量保证方法。利用半自动计算机化方法和贝叶斯/聚类统计方法的新技术为进一步开发和标准化用于伤害监视的叙事文本分析提供了潜力。

著录项

  • 来源
    《Accident Analysis and Prevention》 |2010年第2期|354-363|共10页
  • 作者单位

    National Centre for Classification in Health, School of Public Health, Queensland University of Technology, KELVIN GROVE 4059, Queensland,Australia;

    National Centre for Health Information Research and Training, Queensland University of Technology, Brisbane, Queensland, Australia;

    National Centre for Health Information Research and Training, Queensland University of Technology, Brisbane, Queensland, Australia;

    Monash University Accident Research Centre, Monash University, Melbourne, Victoria, Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    narrative text; injury surveillance; text mining; health data;

    机译:叙述文本;伤害监测;文本挖掘;健康数据;

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