Australian Centre for Health Services Innovation and Centre for Healthcare Translation, School of Public Health and Social Work, Queensland University of Technology, Kelvin Grove, Queensland, Australia
Australian Centre for Health Services Innovation and Centre for Healthcare Translation, School of Public Health and Social Work, Queensland University of Technology, Kelvin Grove, Queensland, Australia.
BMJ Open. 2021 Sep 13;11(9):e051047. doi: 10.1136/bmjopen-2021-051047.
Falls remain one of the most prevalent adverse events in hospitals and are associated with substantial negative health impacts and costs. Approaches to assess patients' fall risk have been implemented in hospitals internationally, ranging from brief screening questions to multifactorial risk assessments and complex prediction models, despite a lack of clear evidence of effect in reducing falls in acute hospital environments. The increasing digitisation of hospital systems provides new opportunities to understand and predict falls using routinely recorded data, with potential to integrate fall prediction models into real-time or near-real-time computerised decision support for clinical teams seeking to mitigate fall risk. However, the use of non-traditional approaches to fall risk prediction, including machine learning using integrated electronic medical records, has not yet been reviewed relative to more traditional fall prediction models. This scoping review will summarise methodologies used to develop existing hospital fall prediction models, including reporting quality assessment.
This scoping review will follow the Arksey and O'Malley framework and its recent advances, and will be reported using Preferred Reporting Items for Systematic Reviews and Meta-Analyses extension for Scoping Reviews recommendations. Four electronic databases (CINAHL via EBSCOhost, PubMed, IEEE Xplore and Embase) will be initially searched for studies up to 12 November 2020, and searches may be updated prior to final reporting. Additional studies will be identified by reference list review and citation analysis of included studies. No restriction will be placed on the date or language of identified studies. Screening of search results and extraction of data will be performed by two independent reviewers. Reporting quality will be assessed by the adherence to the Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis.
Ethical approval is not required for this study. Findings will be disseminated through peer-reviewed publication and scientific conferences.
跌倒仍是医院最常见的不良事件之一,与重大的健康负面影响和医疗费用相关。国际上已经实施了各种评估患者跌倒风险的方法,从简短的筛查问题到多因素风险评估和复杂的预测模型,尽管在减少急性医院环境中的跌倒方面缺乏明确的效果证据。医院系统的数字化程度不断提高,为使用常规记录数据了解和预测跌倒提供了新的机会,有可能将跌倒预测模型集成到实时或接近实时的计算机化临床团队决策支持中,以降低跌倒风险。然而,包括使用集成电子病历的机器学习在内的非传统跌倒风险预测方法尚未与更传统的跌倒预测模型进行比较。本范围综述将总结用于开发现有医院跌倒预测模型的方法,包括报告质量评估。
本范围综述将遵循阿特塞和奥马利框架及其最新进展,并按照系统评价和荟萃分析扩展的首选报告项目建议进行报告。最初将在四个电子数据库(CINAHL 通过 EBSCOhost、PubMed、IEEE Xplore 和 Embase)中搜索截至 2020 年 11 月 12 日的研究,并且在最终报告之前可能会更新搜索。还将通过参考列表审查和纳入研究的引文分析来确定其他研究。不会对确定研究的日期或语言进行限制。搜索结果的筛选和数据提取将由两名独立的评审员进行。报告质量将通过对个体预后或诊断的多变量预测模型的透明报告的遵守情况进行评估。
本研究无需伦理批准。研究结果将通过同行评审出版物和科学会议进行传播。