医院事故定性数据的全系统分析:半自动化内容分析揭示见解的可行性。

Teyl Engstrom, Danelle Kenny, Wallace Grimmett, Mary-Anne Ramis, Chris Foley, Clair Sullivan, Jason D Pole
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引用次数: 0

摘要

背景:技术的进步使医院事故报告更加便捷,从而产生了大量的定性描述数据。医疗服务机构几乎没有大规模分析这些数据并将其纳入常规报告的经验:我们旨在探索将半自动内容分析(SACA)工具(Leximancer™)应用于全系统医院事故定性描述的可行性,以便深入了解各级医疗服务机构的安全问题:方法:使用 SACA 工具分析了澳大利亚医院网络中报告的 1245 起事故的数据。方法:使用 SACA 工具对澳大利亚医院网络中报告的 1245 起事故的数据进行分析,并使用归纳法和演绎法等多种技术生成摘要,以提取数据中的关键概念:结果:分析是可行的,并对数据中报告的事件类型进行了可操作的总结;可视化界面允许用户探索基本文本,以加深理解。演绎分析用于探索特定的关注领域,分层分析揭示了更详细的概念。SACA 工具比手动流程更有效率;但是,由于事件描述中存在上下文,因此仍需要大量时间、阅读和主题专业知识来完善分析:半自动化工具通过对大量数据集进行快速内容分析,为改善患者安全文化和实践提供了机会。需要进一步开展研究,评估系统用户的实用性:定性数据比比皆是,全系统范围的分析对于形成可操作的见解至关重要。
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System-wide analysis of qualitative hospital incident data: Feasibility of semi-automated content analysis to uncover insights.

Background: Advances in technology have increased the ease of reporting hospital incidents, resulting in large amounts of qualitative descriptive data. Health services have little experience analysing these data at scale to incorporate into routine reporting.

Objective: We aimed to explore the feasibility of applying a semi-automated content analysis (SACA) tool (Leximancer™) to qualitative descriptions of system-wide hospital incidents to provide insights into safety issues at all health service levels.

Method: Data from 1245 incidents reported across a network of hospitals in Australia were analysed using the SACA tool. Summaries were generated using a variety of techniques, including inductive and deductive approaches to extract key concepts in the data.

Results: The analysis was feasible and provided an actionable summary of the types of incidents reported in the data; the visual interface allowed users to explore the underlying text for a deeper understanding. Deductive analysis was utilised to explore specific areas of interest, and stratified analysis revealed more detailed concepts. The SACA tool was more efficient than manual processes; however, due to the context present in the incident descriptions, significant time, reading and subject matter expertise is still required to refine the analysis.

Conclusion: Semi-automated tools provide an opportunity for improving patient safety culture and practices by providing rapid content analysis of vast datasets that can be customised for specific organisational contexts and deployed at scale. Further research is required to assess usefulness with system users.

Implications: Qualitative data abound and system-wide analysis is essential to creating actionable insights.

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