Identifying patients at high risk for carbapenem-resistant Enterobacterales carriage upon admission to acute-care hospitals

Jessica Howard-Anderson, Radhika Prakash Asrani, Chris Bower, Chad Robichaux, Rishi Kamaleswaran, Jesse Jacob, Scott Fridkin
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Abstract

Background: Prompt identification of patients colonized or infected with carbapenem-resistant Enterobacterales (CRE) upon admission can help ensure rapid initiation of infection prevention measures and may reduce intrafacility transmission of CRE. The Chicago CDC Prevention Epicenters Program previously created a CRE prediction model using state-wide public health data (doi: 10.1093/ofid/ofz483). We evaluated how well a similar model performed using data from a single academic healthcare system in Atlanta, Georgia, and we sought to determine whether including additional variables improved performance. Methods: We performed a case–control study using electronic medical record data. We defined cases as adult encounters to acute-care hospitals in a 4-hospital academic healthcare system from January 1, 2014, to December 31, 2021, with CRE identified from a clinical culture within the first 3 hospital days. Only the first qualifying encounter per patient was included. We frequency matched cases to control admissions (no CRE identified) from the same hospital and year. Using multivariable logistic regression, we compared 2 models. The “public health model” included 4 variables from the Chicago Epicenters model (age, number of hospitalizations in the prior 365 days, mean length of stay in hospitalizations in the prior 365 days, and hospital admission with an infection diagnosis in the prior 365 days). The “healthcare system model” added 4 additional variables (admission to the ICU in the prior 365 days, malignancy diagnosis, Elixhauser score and inpatient antibiotic days of therapy in the prior 365 days) to the public health model. We used billing codes to determine Elixhauser score, malignancy status, and recent infection diagnoses. We compared model performance using the area under the receiver operating curve (AUC). Results: We identified 105 cases and 441,460 controls (Table 1). CRE was most frequently identified in urine cultures (46%). All 4 variables included in the public health model and the 4 additional variables in the healthcare system model were all significantly associated with being a case in unadjusted analyses (Table 1). The AUC for the public health model was 0.76, and the AUC for the healthcare system model was 0.79 (Table 2; Fig. 1). In both models, a prior admission with an infection diagnosis was the most significant risk factor. Conclusions: A modified CRE prediction model developed using public health data and focused on prior healthcare exposures performed reasonably well when applied to a different academic healthcare system. The addition of variables accessible in large healthcare networks did not meaningfully improve model discrimination. Disclosures: None
识别在急性护理医院入院时携带耐碳青霉烯肠杆菌的高风险患者
背景:在入院时及时识别出碳青霉烯耐药肠杆菌(CRE)定菌或感染的患者,有助于确保快速启动感染预防措施,并可能减少CRE在医院内的传播。芝加哥疾病预防控制中心预防中心计划先前使用全州公共卫生数据创建了CRE预测模型(doi: 10.1093/ofid/ofz483)。我们使用来自佐治亚州亚特兰大市的单一学术医疗保健系统的数据评估了类似模型的执行情况,并试图确定包括额外变量是否可以提高性能。方法:我们使用电子病历数据进行病例对照研究。我们将病例定义为2014年1月1日至2021年12月31日期间在4家医院的学术医疗保健系统中急诊医院遇到的成人病例,并在前3天的临床培养中发现CRE。每位患者仅包括第一次符合条件的就诊。我们将同一医院和年份的病例与对照入院(未发现CRE)进行频率匹配。使用多变量逻辑回归,我们比较了两个模型。“公共卫生模型”包括来自Chicago Epicenters模型的4个变量(年龄、前365天的住院次数、前365天的平均住院时间、前365天的感染诊断住院)。“卫生保健系统模型”在公共卫生模型中增加了4个额外的变量(前365天入住ICU、恶性肿瘤诊断、Elixhauser评分和前365天住院抗生素治疗天数)。我们使用账单代码来确定Elixhauser评分、恶性肿瘤状态和最近的感染诊断。我们使用接收者工作曲线下的面积(AUC)来比较模型的性能。结果:我们确定了105例病例和441460例对照(表1)。CRE在尿培养中最常见(46%)。在未经调整的分析中,公共卫生模型中的所有4个变量和医疗系统模型中的4个附加变量都与病例显著相关(表1)。公共卫生模型的AUC为0.76,医疗系统模型的AUC为0.79(表2;图1)。在这两种模型中,先前的感染诊断是最重要的危险因素。结论:使用公共卫生数据开发的改进的CRE预测模型,侧重于先前的医疗保健暴露,在应用于不同的学术医疗保健系统时表现相当好。在大型医疗保健网络中添加可访问的变量并没有显著改善模型歧视。披露:没有
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