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首页> 外文期刊>The Journal of hospital infection >New identification of outliers and ventilator-associated pneumonia rates from 2005 to 2007 within the German Nosocomial Infection Surveillance System
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New identification of outliers and ventilator-associated pneumonia rates from 2005 to 2007 within the German Nosocomial Infection Surveillance System

机译:2005年至2007年在德国医院感染监测系统中新发现异常值和呼吸机相关性肺炎的发生率

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This study presents data for ventilator use and ventilator-associated pneumonia (VAP) rates from the German hospital surveillance system for nosocomial infections (KISS: Krankenhaus Infektions Surveillance System). New Centers for Disease Control and Prevention (CDC) definitions became effective during 2005 and we describe the new method used by KISS to determine individual units with data at extreme ranges. The number of VAP cases per 1000 device-days was calculated and a new visual method, specifically funnel plots, was introduced to identify outliers. The VAP rate will be highly influenced by chance variability if only a few VAP cases are observed during a low number of ventilator-days. Funnel plots take this relationship between event rate and volume of cases into account. A total of 391 intensive care units (ICUs) reported surveillance data from 8 86 816 patients and included 6896 VAPs and 3 113 983 patient-days for the period January 2005 to December 2007. The mean VAP rate according to the new CDC definitions was 5.5 cases per 1000 ventilator-days (median: 4.4). The mean ventilator use in all ICUs was 35.7 (median: 29.3). Funnel plots identified 14.3% as outliers; 34 of them as high, and 22 as low, outliers. Since 2008, visual feedback to the KISS ICUs has been supplied by funnel plots. These are less prone to misinterpretation than histograms and they indicate when investigation is required for increasing VAP.
机译:这项研究提供了德国医院医院感染系统(KISS:Krankenhaus Infektions监测系统)的呼吸机使用和呼吸机相关性肺炎(VAP)率的数据。新的疾病控制与预防中心(CDC)定义在2005年生效,我们介绍了KISS用于确定极端数据范围内的单个单位的新方法。计算每1000个设备日的VAP病例数,并引入一种新的可视化方法(特别是漏斗图)来识别异常值。如果在呼吸机天数较少的情况下仅观察到少数VAP病例,则VAP率将受机会变异性的很大影响。渠道图考虑了事件发生率与案件数量之间的这种关系。 2005年1月至2007年12月,共有391个重症监护病房(ICU)报告了8 816 816名患者的监测数据,其中包括6896个VAP和3 113 983个患者日。根据新的CDC定义,平均VAP率为5.5每1000呼吸机天数的病例数(中位数:4.4)。所有ICU的平均呼吸机使用率为35.7(中位数:29.3)。漏斗图确定了14.3%的异常值;其中高离群值34个,低离群值22个。自2008年以来,漏斗图向KISS ICU提供了视觉反馈。与直方图相比,这些不容易被误解,它们表明何时需要进行调查以提高VAP。

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