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提高中心静脉导管相关血流感染全自动监测的可靠性。

Increasing the Reliability of Fully Automated Surveillance for Central Line-Associated Bloodstream Infections.

作者信息

Snyders Rachael E, Goris Ashleigh J, Gase Kathleen A, Leone Carole L, Doherty Joshua A, Woeltje Keith F

机构信息

1Center for Clinical Excellence,BJC HealthCare,St. Louis,Missouri.

2Infection Prevention and Control,Missouri Baptist Medical Center,St. Louis,Missouri.

出版信息

Infect Control Hosp Epidemiol. 2015 Dec;36(12):1396-400. doi: 10.1017/ice.2015.199. Epub 2015 Sep 2.

Abstract

OBJECTIVE

To increase reliability of the algorithm used in our fully automated electronic surveillance system by adding rules to better identify bloodstream infections secondary to other hospital-acquired infections.

METHODS

Intensive care unit (ICU) patients with positive blood cultures were reviewed. Central line-associated bloodstream infection (CLABSI) determinations were based on 2 sources: routine surveillance by infection preventionists, and fully automated surveillance. Discrepancies between the 2 sources were evaluated to determine root causes. Secondary infection sites were identified in most discrepant cases. New rules to identify secondary sites were added to the algorithm and applied to this ICU population and a non-ICU population. Sensitivity, specificity, predictive values, and kappa were calculated for the new models.

RESULTS

Of 643 positive ICU blood cultures reviewed, 68 (10.6%) were identified as central line-associated bloodstream infections by fully automated electronic surveillance, whereas 38 (5.9%) were confirmed by routine surveillance. New rules were tested to identify organisms as central line-associated bloodstream infections if they did not meet one, or a combination of, the following: (I) matching organisms (by genus and species) cultured from any other site; (II) any organisms cultured from sterile site; (III) any organisms cultured from skin/wound; (IV) any organisms cultured from respiratory tract. The best-fit model included new rules I and II when applied to positive blood cultures in an ICU population. However, they didn't improve performance of the algorithm when applied to positive blood cultures in a non-ICU population.

CONCLUSION

Electronic surveillance system algorithms may need adjustment for specific populations.

摘要

目的

通过添加规则以更好地识别继发于其他医院获得性感染的血流感染,提高我们全自动电子监测系统中使用的算法的可靠性。

方法

对血培养阳性的重症监护病房(ICU)患者进行回顾。中心静脉导管相关血流感染(CLABSI)的判定基于两个来源:感染预防人员的常规监测和全自动监测。评估两个来源之间的差异以确定根本原因。在大多数差异病例中识别出继发感染部位。将识别继发部位的新规则添加到算法中,并应用于该ICU人群和非ICU人群。计算新模型的敏感性、特异性、预测值和kappa值。

结果

在回顾的643份ICU血培养阳性样本中,全自动电子监测将68份(10.6%)识别为中心静脉导管相关血流感染,而常规监测确认了38份(5.9%)。测试了新规则,以确定如果生物体不符合以下一项或多项条件,则将其识别为中心静脉导管相关血流感染:(I)从任何其他部位培养出的匹配生物体(按属和种);(II)从无菌部位培养出的任何生物体;(III)从皮肤/伤口培养出的任何生物体;(IV)从呼吸道培养出的任何生物体。最佳拟合模型在应用于ICU人群的血培养阳性样本时包括新规则I和II。然而,当应用于非ICU人群的血培养阳性样本时,它们并未改善算法的性能。

结论

电子监测系统算法可能需要针对特定人群进行调整。

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