Lodise Thomas P, Miller Chris, Patel Nimish, Graves Jeffrey, McNutt Louise-Anne
Pharmacy Practice Department, Albany College of Pharmacy, Albany, NY 12208, USA.
Infect Control Hosp Epidemiol. 2007 Aug;28(8):959-65. doi: 10.1086/518972. Epub 2007 Jun 22.
To create a clinical tool based on institution-specific risk factors to estimate the probability of carbapenem resistance among Pseudomonas aeruginosa isolates obtained from infected patients. By better estimating the probability of carbapenem resistance on the basis of patient-specific factors, clinicians can refine their empirical therapy for P. aeruginosa infections and potentially maximize clinical outcomes by increasing the likelihood of appropriate empirical antimicrobial therapy.
A retrospective, cross-sectional study.
Tertiary care academic hospital.
All adult inpatients who had a respiratory tract infection due to P. aeruginosa between January 2001 and June 2005.
Data on demographic characteristics, antibiotic history, and microbiology were collected. Log-binomial regression was employed to identify predictors of carbapenem resistance among P. aeruginosa isolates and to devise the clinical prediction tool.
Among 351 patients with P. aeruginosa infection, 44% were infected with carbapenem-resistant P. aeruginosa strains. Independent predictors of carbapenem resistance were prior receipt of mechanical ventilation for 11 days or more, prior exposure to fluoroquinolones for 3 days or more, and prior exposure to carbapenems for 3 days or more.
With carbapenem resistance rates among P. aeruginosa isolates on the rise at our institution, the challenge was to identify patients for whom carbapenems would remain an effective empirical agent, as well as the patients at greatest risk for infection with carbapenem-resistant strains. The clinical prediction tool accurately estimated carbapenem resistance among this risk-stratified cross-sectional study of patients with P. aeruginosa infection. This tool may be an effective way for clinicians to refine their selection of empirical antibiotic therapy and to maximize clinical outcomes by increasing the likelihood of appropriate antibiotic treatment.
基于特定机构的风险因素创建一种临床工具,以估计从感染患者中分离出的铜绿假单胞菌对碳青霉烯类耐药的概率。通过根据患者特定因素更好地估计碳青霉烯类耐药的概率,临床医生可以优化对铜绿假单胞菌感染的经验性治疗,并通过提高适当经验性抗菌治疗的可能性来潜在地最大化临床疗效。
一项回顾性横断面研究。
三级医疗学术医院。
2001年1月至2005年6月期间所有因铜绿假单胞菌导致呼吸道感染的成年住院患者。
收集人口统计学特征、抗生素使用史和微生物学数据。采用对数二项回归来确定铜绿假单胞菌分离株中碳青霉烯类耐药的预测因素,并设计临床预测工具。
在351例铜绿假单胞菌感染患者中,44%感染了对碳青霉烯类耐药的铜绿假单胞菌菌株。碳青霉烯类耐药的独立预测因素为既往接受机械通气11天或更长时间、既往使用氟喹诺酮类药物3天或更长时间以及既往使用碳青霉烯类药物3天或更长时间。
在我们机构,铜绿假单胞菌分离株对碳青霉烯类的耐药率不断上升,面临的挑战是确定哪些患者使用碳青霉烯类药物仍将是有效的经验性用药,以及哪些患者感染耐碳青霉烯类菌株的风险最大。在这项针对铜绿假单胞菌感染患者的风险分层横断面研究中,该临床预测工具准确地估计了碳青霉烯类耐药情况。该工具可能是临床医生优化经验性抗生素治疗选择并通过提高适当抗生素治疗的可能性来最大化临床疗效的有效方法。