Division of Infectious Diseases, Department of Internal Medicine, Washington University School of Medicine, St. Louis, Missouri 63110, USA.
Infect Control Hosp Epidemiol. 2011 Nov;32(11):1086-90. doi: 10.1086/662181. Epub 2011 Sep 29.
Manual surveillance for central line-associated bloodstream infections (CLABSIs) by infection prevention practitioners is time-consuming and often limited to intensive care units (ICUs). An automated surveillance system using existing databases with patient-level variables and microbiology data was investigated.
Patients with a positive blood culture in 4 non-ICU wards at Barnes-Jewish Hospital between July 1, 2005, and December 31, 2006, were evaluated. CLABSI determination for these patients was made via 2 sources; a manual chart review and an automated review from electronically available data. Agreement between these 2 sources was used to develop the best-fit electronic algorithm that used a set of rules to identify a CLABSI. Sensitivity, specificity, predictive values, and Pearson's correlation were calculated for the various rule sets, using manual chart review as the reference standard.
During the study period, 391 positive blood cultures from 331 patients were evaluated. Eighty-five (22%) of these were confirmed to be CLABSI by manual chart review. The best-fit model included presence of a catheter, blood culture positive for known pathogen or blood culture with a common skin contaminant confirmed by a second positive culture and the presence of fever, and no positive cultures with the same organism from another sterile site. The best-performing rule set had an overall sensitivity of 95.2%, specificity of 97.5%, positive predictive value of 90%, and negative predictive value of 99.2% compared with intensive manual surveillance.
Although CLABSIs were slightly overpredicted by electronic surveillance compared with manual chart review, the method offers the possibility of performing acceptably good surveillance in areas where resources do not allow for traditional manual surveillance.
感染预防从业者对中心静脉导管相关性血流感染(CLABSI)进行手动监测既耗时又通常仅限于重症监护病房(ICU)。本研究调查了一种使用现有数据库和患者水平变量以及微生物学数据的自动化监测系统。
2005 年 7 月 1 日至 2006 年 12 月 31 日,评估了巴恩斯-犹太医院 4 个非 ICU 病房中血培养阳性的患者。通过手动病历审查和电子可用数据的自动审查这两种来源来确定这些患者的 CLABSI。使用这两种来源之间的一致性来开发最佳拟合的电子算法,该算法使用一组规则来识别 CLABSI。使用手动病历审查作为参考标准,计算了各种规则集的灵敏度、特异性、预测值和 Pearson 相关系数。
在研究期间,评估了来自 331 名患者的 391 份阳性血培养物。其中 85 份(22%)经手动病历审查确认为 CLABSI。最佳拟合模型包括导管存在、血培养物阳性的已知病原体或经第二份阳性培养物证实的常见皮肤污染物,以及发热而另一个无菌部位没有相同病原体的阳性培养物。最佳表现规则集的总体灵敏度为 95.2%,特异性为 97.5%,阳性预测值为 90%,阴性预测值为 99.2%,与密集的手动监测相比。
与手动病历审查相比,电子监测略微高估了 CLABSI,但该方法在资源不允许进行传统手动监测的地区提供了进行可接受良好监测的可能性。