1 The Anti-Infective Research Laboratory, Department of Pharmacy Services, Detroit Receiving Hospital and University Health Center; 3 School of Medicine, Wayne State University, Detroit, MI; 2 Division of Clinical Pharmacology, Clinical Research Institute, Albany Medical College, 47 New Scotland Avenue (MC142), Albany, NY 12208, USA
Received 2 January 2002; returned 25 March 2002; revised 7 May 2002; accepted 25 May 2002
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Abstract |
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Introduction |
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Patients and methods |
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All patients admitted to Detroit Receiving Hospital and University Health Center between October 1999 and June 2000, and prescribed cefepime for documented or suspected infection, were identified from the Pharmacy Department and prospectively evaluated for enrolment. Relevant clinical background and laboratory data were retrieved and cross-referenced with the inclusion/exclusion criteria. For inclusion, patients had to be 18 years of age and receiving renally adjusted doses of cefepime.5 Exclusion criteria were: pregnancy, severe burns (>20% body surface area), spinal cord injury, cystic fibrosis, severely under- or overweight (±40% ideal body weight). Patients with fluctuating renal function (serum creatinine ±20% since the start of therapy), severely impaired renal function [creatinine clearance (CLCR) <11 mL/min or on dialysis] and neutropenic fever (absolute neutrophil count <1000 cells/µL) were also excluded. This study was approved by the Wayne State University Human Investigations Committee. Informed consent was obtained from all patients or their legal representatives prior to study participation. Any adverse events related to treatment or its administration were recorded.
Antimicrobial agent administration
Cefepime was reconstituted according to the manufacturers guidelines, and administered as an intravenous infusion over 30 min via a syringe pump. Dosing of cefepime was based on manufacturers recommendations.5
Assessment of renal function
Initial dosing was based on estimated CLCR.6 Subsequently, urine collection over 8 h during a dosing interval and concurrent serum creatinine were used to estimate creatinine clearance.7
Blood sampling
Three blood samples were obtained from each subject during one dosing interval after the third or later dose of cefepime. All samples were timed in relation to the last dose given. The samples were centrifuged within 30 min of collection and the plasma frozen at 70°C until analysis.
Analytical methods
Serum cefepime concentrations were determined by microbiological assay utilizing Klebsiella pneumoniae ATCC 10031 as the reference organism. Concurrent antibiotics with activity against the reference organism were deactivated prior to performing the microbioassays (e.g. phosphate for aminoglycosides).
Pharmacokinetic/pharmacodynamic analysis
Pharmacokinetic parameter values were estimated using a Bayesian estimation procedure.8 Prior parameter estimates were derived from a population pharmacokinetic analysis of cefepime, displayed as functions of demographic variables.9 We obtained a point estimate for each patient in our population, using the relationships reported and that patients demographic variables. A one- or two-compartment open model was fitted to the data. Models were discriminated using Akaikes information criterion.10 Parameter values were estimated for each patient, and the pharmacokinetic/pharmacodynamic parameters calculated. Pathogens MICs were determined by Etest, following manufacturers instructions.
Outcomes assessment
Patients must have received cefepime therapy for 3 days or longer to be evaluated. Clinical outcomes were classified as either cure, improvement, failure or indeterminate,11 and assessed at the discontinuation of therapy or at discharge, whichever was earlier. Patients receiving any antimicrobial agent within 3 days before cefepime therapy were not evaluated. Patients with positive culture(s) were also evaluated for microbiological outcome. Microbiological outcomes were classified as eradication, presumed eradication, presumed persistence or indeterminate.11
Statistical analysis
Analysis of outcomes was performed by exact logistic regression. Classification and regression tree (CART) analysis was used to determine breakpoints, and their statistical significance was validated by two-tailed Fishers exact test. An value of 0.05 was employed.
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Results |
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Thirty-six patients were enrolled, their demographics are as shown in Table 1. Positive cultures were obtained in 20 patients. All were Gram-negative bacteria except one blood culture of Staphylococcus aureus isolated in conjunction with Pseudomonas aeruginosa. All patients with a positive culture received concurrent aminoglycoside therapy. Dosing of aminoglycoside was based on our institution protocol to achieve the target Cmax/MIC ratio 10 whenever possible. The pharmacokinetics and dosing regimens of all patients are also shown in Table 1.
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Microbiological success (eradication or presumed eradication) was found to be associated with T > MIC (89% when T > MIC is 100% versus 0% when T > MIC is <100%, P = 0.032). The positive and negative predictive values for total drug time above MIC for 100% of the dosing interval were 89% and 100%, respectively.
Classification and regression analysis (CART)
Of the independent variables tested, microbiological success was found to be associated with an MIC < 1.5 mg/L (100% when MIC < 1.5 mg/L versus 44% when MIC 1.5 mg/L, P = 0.026), and with Cmin/MIC > 5.8 (100% versus 50%, P = 0.014). Statistical significance did not change when the Cmin/MIC breakpoint was between 4.3 and 5.8.
Univariate logistic regression analysis
When the variables (baseline APACHE II scores, MIC, Cmin/MIC, T > MIC and T > 4.3 x MIC) were tested individually, microbiological success was significantly correlated to MIC [odds ratio (OR) = 0.625, 95% confidence interval (CI): 0.3910.934, P = 0.016] and T > 4.3 x MIC (OR = 645, 95% CI: 1 640 0005.6, P = 0.006). Both factors were highly correlated, but T > 4.3 x MIC had the better log-likelihood. Because of the limited sample size, the analysis would only support one independent variable. Nonetheless, other factors did not significantly improve the log-likelihood.
Probability of microbiological success
The probability of microbiological success was graphed as a function of T > 4.3 x MIC, as shown in Figure 1. In order to achieve a probability of 80% and 90% in microbiological success, it would be necessary for serum cefepime concentrations to be above 4.3 x MIC for 83% and 95% of the dosing interval, respectively.
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Twenty-eight patients were evaluable. Clinical success (cure or improvement) and failure were found in 22 patients and one patient, respectively. The clinical outcome for the remaining five patients was deemed indeterminate. Two of these five patients had a positive culture, and their therapy was switched to an alternative agent upon the identification of the pathogen (without susceptibility data) for better coverage. The renal function of the remaining three patients was unstable after the blood sampling and required dosage adjustment. We were unable to ascertain the drug exposure in these patients and they were not included in the analysis as a result.
Safety and tolerance of study drug
No adverse effects related to the drug or route of administration were observed in any patient during the study period.
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Discussion |
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There are limited data published on the correlation of pharmacodynamics of ß-lactams and outcomes in clinical settings. The in vitro and animal data cited above present a clear and convincing case that T > MIC is the pharmacodynamically linked variable for ß-lactams. However, little has been done to examine whether multiples of the MIC as seen in in vitro studies are important for optimizing patient outcomes. In our prospective study, although we found that microbiological success was associated with T > MIC, the strongest statistical relationship was observed when T > 4.3 x MIC was used as the independent variable, in line with data from timekill studies.3 Further increases in drug concentration beyond 4 x MIC only resulted in a marginal increase in bacterial killing.
In another study by Manduru et al.4 using various concentrations of ceftazidime against different strains of P. aeruginosa, and fitting a sigmoid Emax model to their respective bactericidal activities, the optimal killing rate was reported to be when the concentration to MIC ratio was 6.6. These studies support our observation that whereas T > MIC is predictive of bactericidal activity, bacterial killing and microbiological outcome can be further enhanced by achieving a concentration 46 x MIC throughout the dosing interval. This finding, if validated, has considerable importance for the optimal therapy of patients.
We were unable to find any variable to predict clinical success, most likely due to the small sample size we had. Two of four patients with microbiological failure had clinical success at the end of therapy. Clinical outcomes are dependent on many factors in addition to the appropriateness and adequacy of antimicrobial therapy, whereas microbiological outcomes are more closely linked to the activity of the antimicrobial agent. Although early microbiological eradication is not necessary for clinical success, it often predicts clinical success and reduces the likelihood of resistance emergence. Despite our relatively small sample size, we were still able to find a reasonably robust model to explain our positive findings. We wish to point out that all 20 evaluable patients received concurrent aminoglycosides. It is reasonable to believe that aminoglycosides contributed to bacterial killing in conjunction with cefepime. Consequently, our conclusions may not be relevant to other cohorts and will need to be validated by a large prospective randomized clinical trial.
In summary, our results support in vitro data which indicate that the bactericidal activity of ß-lactams against Gram-negative bacteria is associated with T > MIC. In adult patients with Gram-negative infections on concurrent aminoglycosides, the probability of microbiological success was most strongly associated with the proportion of the dosing interval for which cefepime concentration exceeded 4.3 x MIC. If validated, this suggests dosing regimens can be further optimized to increase the probability of microbiological eradication.
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Acknowledgements |
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Footnotes |
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Corresponding author. Tel: +1-518-262-6330; Fax: +1-518-262-6333; E-mail: gldrusano{at}aol.com
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References |
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