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与急诊科患者未就诊即离开相关的医院因素。

Hospital factors associated with emergency center patients leaving without being seen.

作者信息

Hobbs D, Kunzman S C, Tandberg D, Sklar D

机构信息

University of New Mexico School of Medicine, Department of Emergency Medicine, Albuquerque, USA.

出版信息

Am J Emerg Med. 2000 Nov;18(7):767-72. doi: 10.1053/ajem.2000.18075.

Abstract

We developed a statistical model that would identify and quantify the relative contributions of different factors hypothesized to impact the frequency of emergency center (EC) patients who leave without being seen (LWBS). We performed an analysis of the daily counts of patients that registered in our EC during a 21-month period who then LWBS. Candidate predictor variables included the number of patients seen, and the number admitted to the hospital, for each area of our EC, as well as the hours of faculty double coverage, and the day of the week. Univariate analyses were performed using standard methods. Multivariate analysis was performed using the general linear model. A backward selection procedure was used to eliminate statistically insignificant variables until all remaining independent variables had P-values < or = .05. External validation and analysis of the stability of the estimated regression coefficients of the model were evaluated using bootstrap methods. Two-tailed tests and a type I error of 0.05 were used. During the period studied, 133,666 patients were registered in the EC and 9,894 (7.4%) left. Multivariate analysis identified six variables that were significantly associated with LWBS. The fitted model containing all six variables explained 52.8% of the variability observed in LWBS frequency. The most powerful predictor of LWBS was total number of patients cared for in the main ED. This accounted for 46.4% of the observed variation in LWBS. The total number of trauma and resuscitation patients, and the total number of observation unit admissions to the hospital were also associated with increased LWBS. More pediatric cases seen in the main ED, weekends, and additional faculty coverage were associated with fewer patients leaving. Efforts to decrease the LWBS rate will be most successful if they address the issue of main ED volume.

摘要

我们开发了一种统计模型,该模型可以识别并量化不同因素的相对贡献,这些因素被假设会影响急诊中心(EC)未经诊治即离开(LWBS)的患者频率。我们对在21个月期间在我们的急诊中心登记然后LWBS的患者每日计数进行了分析。候选预测变量包括我们急诊中心每个区域的就诊患者数量、入院患者数量、教员双重值班时长以及星期几。使用标准方法进行单变量分析。使用一般线性模型进行多变量分析。采用向后选择程序消除统计上不显著的变量,直到所有剩余的自变量P值≤0.05。使用自助法评估模型估计回归系数的外部验证和稳定性分析。使用双侧检验和0.05的I型错误率。在研究期间,133,666名患者在急诊中心登记,9,894名(7.4%)离开。多变量分析确定了六个与LWBS显著相关的变量。包含所有六个变量的拟合模型解释了LWBS频率中观察到的52.8%的变异性。LWBS最有力的预测因素是主急诊科护理的患者总数。这占LWBS观察到的变异的46.4%。创伤和复苏患者总数以及观察病房入院患者总数也与LWBS增加有关。主急诊科中更多的儿科病例、周末以及额外的教员值班与离开的患者较少有关。如果努力解决主急诊科工作量问题,降低LWBS率的措施将最成功。

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