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Identification of patients at high risk for Clostridium difficile infection : Development and validation of a risk prediction model in hospitalized patients treated with antibiotics

机译:确定艰难梭菌感染高风险患者:开发和验证接受抗生素治疗的住院患者的风险预测模型

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摘要

To develop and validate a prediction model for Clostridium difficile infection (CDI) in hospitalized patients treated with systemic antibiotics, we performed a case-cohort study in a tertiary (derivation) and secondary care hospital (validation). Cases had a positive Clostridium test and were treated with systemic antibiotics before suspicion of CDI. Controls were randomly selected from hospitalized patients treated with systemic antibiotics. Potential predictors were selected from the literature. Logistic regression was used to derive the model. Discrimination and calibration of the model were tested in internal and external validation. A total of 180 cases and 330 controls were included for derivation. Age >65 years, recent hospitalization, CDI history, malignancy, chronic renal failure, use of immunosuppressants, receipt of antibiotics before admission, nonsurgical admission, admission to the intensive care unit, gastric tube feeding, treatment with cephalosporins and presence of an underlying infection were independent predictors of CDI. The area under the receiver operating characteristic curve of the model in the derivation cohort was 0.84 (95% confidence interval 0.80-0.87), and was reduced to 0.81 after internal validation. In external validation, consisting of 97 cases and 417 controls, the model area under the curve was 0.81 (95% confidence interval 0.77-0.85) and model calibration was adequate (Brier score 0.004). A simplified risk score was derived. Using a cutoff of 7 points, the positive predictive value, sensitivity and specificity were 1.0%, 72% and 73%, respectively. In conclusion, a risk prediction model was developed and validated, with good discrimination and calibration, that can be used to target preventive interventions in patients with increased risk of CDI.
机译:为了开发和验证住院用系统抗生素治疗的患者难辨梭状芽胞杆菌感染(CDI)的预测模型,我们在三级(派生)和二级保健医院(验证)中进行了病例队列研究。病例的梭菌检测呈阳性,在怀疑CDI之前接受了全身性抗生素治疗。从接受全身抗生素治疗的住院患者中随机选择对照组。从文献中选择了潜在的预测因子。使用逻辑回归来得出模型。在内部和外部验证中测试了模型的区分和校准。总共包括180例病例和330例对照。年龄> 65岁,近期住院,CDI病史,恶性肿瘤,慢性肾功能衰竭,使用免疫抑制剂,入院前接受抗生素治疗,非手术入院,重症监护病房入院,胃管喂养,头孢菌素治疗和潜在感染是CDI的独立预测因子。在派生队列中,模型的接收器工作特性曲线下的面积为0.84(95%置信区间0.80-0.87),内部验证后减小为0.81。在由97个病例和417个对照组成的外部验证中,曲线下的模型面积为0.81(95%置信区间0.77-0.85),并且模型校准足够(Brier得分为0.004)。得出了简化的风险评分。使用7分作为临界值,阳性预测值,敏感性和特异性分别为1.0%,72%和73%。总之,开发并验证了风险预测模型,该模型具有良好的判别和校准能力,可用于针对CDI风险增加的患者进行预防性干预。

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