Gajewski Byron J, Mahnken Jonathan D, Dunton Nancy
Department of Biostatistics, School of Medicine, University of Kansas Medical Center, Kansas City, KS, USA.
BMC Med Res Methodol. 2008 Nov 18;8:77. doi: 10.1186/1471-2288-8-77.
The National Database for Nursing Quality Indicators (NDNQI) was established in 1998 to assist hospitals in monitoring indicators of nursing quality (eg, falls and pressure ulcers). Hospitals participating in NDNQI transmit data from nursing units to an NDNQI data repository. Data are summarized and published in reports that allow participating facilities to compare the results for their units with those from other units across the nation. A disadvantage of this reporting scheme is that the sampling variability is not explicit. For example, suppose a small nursing unit that has 2 out of 10 (rate of 20%) patients with pressure ulcers. Should the nursing unit immediately undertake a quality improvement plan because of the rate difference from the national average (7%)?
In this paper, we propose approximating 95% credible intervals (CrIs) for unit-level data using statistical models that account for the variability in unit rates for report cards.
Bayesian CrIs communicate the level of uncertainty of estimates more clearly to decision makers than other significance tests.
A benefit of this approach is that nursing units would be better able to distinguish problematic or beneficial trends from fluctuations likely due to chance.
国家护理质量指标数据库(NDNQI)于1998年建立,旨在协助医院监测护理质量指标(如跌倒和压疮)。参与NDNQI的医院将护理单元的数据传输至NDNQI数据储存库。数据经汇总后发表在报告中,使参与的机构能够将其各单元的结果与全国其他单元的结果进行比较。这种报告方案的一个缺点是抽样变异性不明确。例如,假设有一个小型护理单元,10名患者中有2名发生压疮(发生率为20%)。该护理单元是否应因与全国平均水平(7%)的发生率差异而立即实施质量改进计划?
在本文中,我们建议使用统计模型为单元级数据近似95%可信区间(CrIs),该模型考虑了报告卡中单元发生率的变异性。
与其他显著性检验相比,贝叶斯CrIs能更清晰地向决策者传达估计的不确定性水平。
这种方法的一个好处是,护理单元将更有能力从可能因偶然因素导致的波动中区分出有问题的或有益的趋势。