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Utilization of electronic medical records to build a detection model for surveillance of healthcare-associated urinary tract infections.

机译:利用电子病历建立检测模型,以监视与医疗保健相关的尿路感染。

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In this study, we propose an approach to build a detection model for surveillance of healthcare-associated urinary tract infection (HA-UTI) based on the variables extracted from the electronic medical records (EMRs) in a 730-bed, tertiary-care teaching hospital in Taiwan. Firstly we mapped the CDC's HA-UTI case definitions to a set of variables, and identified the variables whose values could be derived from the EMRs of the hospital automatically. Then with these variables we performed discriminant analysis (DA) on a training set of the EMRs to construct a discriminant function (DF) for the classification of a patient with or without HA-UTI. Finally, we evaluated the sensitivity, specificity, and overall accuracy of the function using a testing set of EMRs. In this study, six surveillance variables (fever, urine culture, blood culture, routine urinalysis, antibiotic use, and invasive devices) were identified whose values could be derived from the EMRs of the hospital. The sensitivity, specificity and overall accuracy of the built DF were 100?%, 94.61?%, and 94.65?%, respectively. Since most hospitals may adopt their EMRs piece-by-piece to meet their functional requirements, the variables that are available in the EMRs may differ. Our approach can build a detection model with these variables to achieve a high sensitivity, specificity and accuracy for automatically detecting suspected HA-UTI cases. Therefore, our approach on one hand can reduce the efforts in building the model; on the other hand, can facilitate adoption of EMRs for HAI surveillance and control.
机译:在这项研究中,我们提出了一种方法,该方法基于从730张病床的三级医疗教学中从电子病历(EMR)中提取的变量,构建了用于监视与医疗保健相关的尿路感染(HA-UTI)的检测模型台湾的医院首先,我们将CDC的HA-UTI病例定义映射到一组变量,并确定可以从医院的EMR自动得出其值的变量。然后,利用这些变量,我们对EMR的训练集进行了判别分析(DA),以构建判别函数(DF),以对有或没有HA-UTI的患者进行分类。最后,我们使用一组测试电子病历来评估功能的敏感性,特异性和整体准确性。在这项研究中,确定了六个监测变量(发热,尿培养,血液培养,常规尿液分析,抗生素使用和侵入性器械),其值可从医院的EMR得出。所构建的DF的灵敏度,特异性和总体准确性分别为100%,94.61%和94.65%。由于大多数医院可能会逐份采用其EMR来满足其功能要求,因此EMR中可用的变量可能会有所不同。我们的方法可以使用这些变量构建检测模型,以实现高灵敏度,特异性和准确性,从而自动检测可疑的HA-UTI病例。因此,我们的方法一方面可以减少建立模型的工作;另一方面,可以促进采用EMR进行HAI监测和控制。

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