Slonim Anthony D, Marcin James P, Turenne Wendy, Hall Matt, Joseph Jill G
Center for Clinical Effectiveness, The George Washington University School of Medicine, 111 Michigan Avenue, NW, Suite 3-100, Washington, DC, USA.
Health Serv Res. 2007 Dec;42(6 Pt 1):2275-93; discussion 2294-323. doi: 10.1111/j.1475-6773.2007.00729.x.
To determine the rates, patient, and institutional characteristics associated with the occurrence of patient safety indicators (PSIs) in hospitalized children and the degree of statistical difference derived from using three approaches of controlling for institution level effects.
Pediatric Health Information System Dataset consisting of all pediatric discharges (<21 years of age) from 34 academic, freestanding children's hospitals for calendar year 2003.
The rates of PSIs were computed for all discharges. The patient and institutional characteristics associated with these PSIs were calculated. The analyses sequentially applied three increasingly conservative methods to control for the institution-level effects robust standard error estimation, a fixed effects model, and a random effects model. The degree of difference from a "base state," which excluded institution-level variables, and between the models was calculated. The effects of these analyses on the interpretation of the PSIs are presented.
PSIs are relatively infrequent events in hospitalized children ranging from 0 per 10,000 (postoperative hip fracture) to 87 per 10,000 (postoperative respiratory failure). Significant variables associated PSIs included age (neonates), race (Caucasians), payor status (public insurance), severity of illness (extreme), and hospital size (>300 beds), which all had higher rates of PSIs than their reference groups in the bivariable logistic regression results. The three different approaches of adjusting for institution-level effects demonstrated that there were similarities in both the clinical and statistical significance across each of the models.
Institution-level effects can be appropriately controlled for by using a variety of methods in the analyses of administrative data. Whenever possible, resource-conservative methods should be used in the analyses especially if clinical implications are minimal.
确定与住院儿童患者安全指标(PSI)发生相关的发生率、患者及机构特征,以及使用三种控制机构层面效应方法得出的统计差异程度。
儿科健康信息系统数据集,包含2003年日历年34家学术性独立儿童医院所有儿科出院病例(年龄<21岁)。
计算所有出院病例的PSI发生率。计算与这些PSI相关的患者及机构特征。分析依次应用三种越来越保守的方法来控制机构层面效应——稳健标准误差估计、固定效应模型和随机效应模型。计算与排除机构层面变量的“基础状态”之间以及各模型之间的差异程度。展示这些分析对PSI解释的影响。
PSI在住院儿童中是相对不常见的事件,范围从每10000例中的0例(术后髋部骨折)到每10000例中的87例(术后呼吸衰竭)。与PSI相关的显著变量包括年龄(新生儿)、种族(白种人)、支付者状态(公共保险)、疾病严重程度(极重度)和医院规模(>300张床位),在双变量逻辑回归结果中,这些变量的PSI发生率均高于其参照组。调整机构层面效应的三种不同方法表明,各模型在临床和统计意义上均有相似之处。
在行政数据的分析中,可以通过多种方法适当控制机构层面效应。只要有可能,尤其是在临床意义最小的情况下,分析应采用资源保守型方法。