1 Norwegian Institute of Public Health Oslo Norway.
J Am Heart Assoc. 2019 Jul 16;8(14):e010148. doi: 10.1161/JAHA.118.010148. Epub 2019 Jul 15.
Background Thirty-day mortality after hospitalization for stroke is commonly reported as a quality indicator. However, the impact of adjustment for individual and/or neighborhood sociodemographic status ( SDS ) has not been well documented. This study aims to evaluate the role of individual and contextual sociodemographic determinants in explaining the variation across hospitals in Norway and determine the impact when testing for hospitals with low or high mortality. Methods and Results Patient Administrative System data on all 45 448 patients admitted to hospitals in Norway with an incident stroke diagnosis from 2005 to 2009 were included. The data were merged with data from several databases to obtain information on vital status (dead/alive) and individual SDS variables. Logistic regression models were compared to estimate the predictive effect of individual and neighborhood SDS on 30-day mortality and to determine outlier hospitals. All individual SDS factors, except travel time, were statistically significant predictors of 30-day mortality. Of the municipal variables, only the municipal variable proportion of low income was statistically significant as a predictor of 30-day mortality. Including sociodemographic characteristics of the individual and other characteristics of the municipality improved the model fit. However, performance classification was only changed for 1 (out of 56) hospital, from "significantly high mortality" to "nonoutlier." Conclusions Our study showed that those stroke patients with a lower SDS have higher odds of dying after 30 days compared with those with a higher SDS , although this did not have a substantial impact when classifying providers as performing as expected, better than expected, or worse than expected.
住院治疗后的 30 天死亡率通常被报道为质量指标。然而,调整个人和/或社区社会人口统计学状况(SDS)的影响尚未得到充分记录。本研究旨在评估个体和背景社会人口决定因素在解释挪威医院间死亡率差异方面的作用,并确定在测试死亡率低或高的医院时的影响。
纳入了 2005 年至 2009 年期间因首次中风住院的所有 45448 名挪威患者的患者行政系统数据。将数据与来自多个数据库的数据合并,以获取有关生存状态(死亡/存活)和个体 SDS 变量的信息。使用逻辑回归模型来估计个体和社区 SDS 对 30 天死亡率的预测效果,并确定异常值医院。除了旅行时间之外,所有个体 SDS 因素均为 30 天死亡率的统计学显著预测因素。在市政变量中,只有低收入人群比例的市政变量是 30 天死亡率的统计学显著预测因素。纳入个体的社会人口统计学特征和其他市政特征提高了模型拟合度。然而,仅对 1 家(56 家)医院的绩效分类进行了更改,从“死亡率明显较高”变为“非异常值”。
我们的研究表明,与 SDS 较高的患者相比,SDS 较低的中风患者在 30 天后死亡的可能性更高,尽管这在将提供者分类为表现预期、表现优于预期或表现不如预期时并没有产生实质性影响。