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首页> 外文期刊>The joint commission journal on quality and patient safety >A Comparison of Methods to Detect Urinary Tract Infections Using Electronic Data
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A Comparison of Methods to Detect Urinary Tract Infections Using Electronic Data

机译:使用电子数据检测尿路感染的方法的比较

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Background: The use of electronic medical records to identify common health care-associated infections (HAIs), including pneumonia, surgical site infections, bloodstream infections, and urinary tract infections (UTls), has been proposed to help perform HAI surveillance and guide infection prevention efforts. Increased attention on HAIs has led to public health reporting requirements and a focus on quality improvement activities around HAIs. Traditional surveillance to detect HAIs and focus prevention efforts is labor intensive, and computer algorithms could be useful to screen electronic data and provide actionable information. Methods: Seven computer-based decision rules to identify UTIs were compared in a sample of 33.834 admissions to an urban academic health center. These decision rules included combinations of laboratory data, patient clinical data, and administrative data (for example, International Statistical Classification of Diseases and Related Health Problems, Ninth Revision [ICD-9] codes). Results: Of 33,834 hospital admissions, 3,870 UTIs were identified by at least one of the decision rules. The use of ICD-9 codes alone identified 2,614 UTIs. Laboratory-based definitions identified 2,773 infections, but when the presence of fever was included, only 1,125 UTIs were identified. The estimated sensitivity of ICD-9 codes was 55.6% (95% confidence interval [CI], 52.5%-58.5%) when compared with a culture- and symptom-based definition. Of the UTIs identified by ICD-9 codes, 167/1,125 (14.8%) also met two urine-culture decision rules. Discussion: Use of the example of UTI identification shows how different algorithms may be appropriate, depending on the goal of case identification. Electronic surveillance methods may be beneficial for mandatory reporting, process improvement, and economic analysis.
机译:背景:有人建议使用电子病历来识别常见的卫生保健相关感染(HAI),包括肺炎,手术部位感染,血液感染和尿路感染(UTls),以帮助进行HAI监测并指导感染预防努力。对HAI的越来越多的关注导致对公共卫生报告的要求以及对HAI的质量改进活动的关注。传统的监视以检测HAI和重点预防工作的监视工作是劳动密集型的,计算机算法可能对筛选电子数据和提供可操作的信息很有用。方法:在33.834名入院的城市学术健康中心的样本中,比较了7种基于计算机的决策规则来识别UTI。这些决策规则包括实验室数据,患者临床数据和管理数据的组合(例如,《疾病和相关健康问题的国际统计分类》第九版[ICD-9]代码)。结果:在至少33,834例入院病例中,至少有一项决策规则确定了3,870例UTI。仅使用ICD-9代码即可识别2,614个UTI。基于实验室的定义确定了2773例感染,但是当包括发烧在内时,仅发现了1125例UTI。与基于文化和症状的定义相比,ICD-9码的估计灵敏度为55.6%(95%置信区间[CI],52.5%-58.5%)。在ICD-9编码确定的UTI中,有167 / 1,125(14.8%)也符合两项尿培养决策规则。讨论:使用UTI识别的示例显示了不同的算法可能如何合适,具体取决于案例识别的目标。电子监视方法对于强制性报告,流程改进和经济分析可能是有益的。

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