Section of Infectious Diseases, Department of Medicine, Rush University Medical Center, Chicago, Illinois 60612, USA.
JAMA. 2010 Nov 10;304(18):2035-41. doi: 10.1001/jama.2010.1637.
Central line-associated bloodstream infection (BSI) rates, determined by infection preventionists using the Centers for Disease Control and Prevention (CDC) surveillance definitions, are increasingly published to compare the quality of patient care delivered by hospitals. However, such comparisons are valid only if surveillance is performed consistently across institutions.
To assess institutional variation in performance of traditional central line-associated BSI surveillance.
DESIGN, SETTING, AND PARTICIPANTS: We performed a retrospective cohort study of 20 intensive care units among 4 medical centers (2004-2007). Unit-specific central line-associated BSI rates were calculated for 12-month periods. Infection preventionists, blinded to study participation, performed routine prospective surveillance using CDC definitions. A computer algorithm reference standard was applied retrospectively using criteria that adapted the same CDC surveillance definitions.
Correlation of central line-associated BSI rates as determined by infection preventionist vs the computer algorithm reference standard. Variation in performance was assessed by testing for institution-dependent heterogeneity in a linear regression model.
Forty-one unit-periods among 20 intensive care units were analyzed, representing 241,518 patient-days and 165,963 central line-days. The median infection preventionist and computer algorithm central line-associated BSI rates were 3.3 (interquartile range [IQR], 2.0-4.5) and 9.0 (IQR, 6.3-11.3) infections per 1000 central line-days, respectively. Overall correlation between computer algorithm and infection preventionist rates was weak (ρ = 0.34), and when stratified by medical center, point estimates for institution-specific correlations ranged widely: medical center A: 0.83; 95% confidence interval (CI), 0.05 to 0.98; P = .04; medical center B: 0.76; 95% CI, 0.32 to 0.93; P = .003; medical center C: 0.50, 95% CI, -0.11 to 0.83; P = .10; and medical center D: 0.10; 95% CI -0.53 to 0.66; P = .77. Regression modeling demonstrated significant heterogeneity among medical centers in the relationship between computer algorithm and expected infection preventionist rates (P < .001). The medical center that had the lowest rate by traditional surveillance (2.4 infections per 1000 central line-days) had the highest rate by computer algorithm (12.6 infections per 1000 central line-days).
Institutional variability of infection preventionist rates relative to a computer algorithm reference standard suggests that there is significant variation in the application of standard central line-associated BSI surveillance definitions across medical centers. Variation in central line-associated BSI surveillance practice may complicate interinstitutional comparisons of publicly reported central line-associated BSI rates.
通过疾病预防控制中心(CDC)监测定义,由感染预防专家确定的中心静脉相关血流感染(BSI)率,越来越多地用于比较医院提供的患者护理质量。然而,只有在机构间一致进行监测的情况下,这种比较才是有效的。
评估传统中心静脉相关 BSI 监测的机构间差异。
设计、地点和参与者:我们对 4 家医疗中心的 20 个重症监护病房进行了回顾性队列研究(2004-2007 年)。计算了 12 个月期间每个单位的中心静脉相关 BSI 率。感染预防人员使用 CDC 定义进行常规前瞻性监测,对研究参与情况不知情。使用适应相同 CDC 监测定义的计算机算法参考标准,对回顾性应用的标准进行了回顾性评估。
感染预防人员确定的中心静脉相关 BSI 率与计算机算法参考标准的相关性。通过线性回归模型检验机构依赖性异质性来评估性能的变化。
分析了 20 个重症监护病房的 41 个单位周期,代表了 241518 患者天和 165963 中心静脉天。感染预防人员和计算机算法的中心静脉相关 BSI 率中位数分别为 3.3(四分位距[IQR],2.0-4.5)和 9.0(IQR,6.3-11.3)感染/1000 中心静脉天。计算机算法和感染预防人员之间的总体相关性较弱(ρ=0.34),按医疗中心分层时,机构特异性相关性的点估计值差异很大:医疗中心 A:0.83;95%置信区间(CI),0.05 至 0.98;P=0.04;医疗中心 B:0.76;95%CI,0.32 至 0.93;P=0.003;医疗中心 C:0.50,95%CI,-0.11 至 0.83;P=0.10;医疗中心 D:0.10;95%CI,-0.53 至 0.66;P=0.77。回归模型表明,计算机算法和预期感染预防人员之间的关系在医疗中心之间存在显著的异质性(P<0.001)。通过传统监测具有最低比率(每 1000 个中心静脉天 2.4 个感染)的医疗中心,通过计算机算法的比率最高(每 1000 个中心静脉天 12.6 个感染)。
与计算机算法参考标准相比,感染预防人员比率的机构间变异性表明,在医疗中心之间,标准的中心静脉相关 BSI 监测定义的应用存在显著差异。中心静脉相关 BSI 监测实践的变化可能会使机构间报告的中心静脉相关 BSI 率的比较复杂化。