| Literature DB >> 25011604 |
Pleun J van Duijn1, Marc J M Bonten.
Abstract
BACKGROUND: Intensive care units (ICU) are epicenters for the emergence of antibiotic-resistant Gram-negative bacteria (ARGNB) because of high rates of antibiotic usage, rapid patient turnover, immunological susceptibility of acutely ill patients, and frequent contact between healthcare workers and patients, facilitating cross-transmission.Antibiotic stewardship programs are considered important to reduce antibiotic resistance, but the effectiveness of strategies such as, for instance, antibiotic rotation, have not been determined rigorously. Interpretation of available studies on antibiotic rotation is hampered by heterogeneity in implemented strategies and suboptimal study designs. In this cluster-randomized, crossover trial the effects of two antibiotic rotation strategies, antibiotic mixing and cycling, on the prevalence of ARGNB in ICUs are determined. Antibiotic mixing aims to create maximum antibiotic heterogeneity, and cycling aims to create maximum antibiotic homogeneity during consecutive periods. METHODS/Entities:
Mesh:
Substances:
Year: 2014 PMID: 25011604 PMCID: PMC4227018 DOI: 10.1186/1745-6215-15-277
Source DB: PubMed Journal: Trials ISSN: 1745-6215 Impact factor: 2.279
Figure 1All 8 intensive care units (ICUs) start with 4 months standard care and then perform both interventions: cycling then mixing or vice versa. ICUs are randomized to start with either cycling or mixing. After 9 months of intervention and a 1 month standard care wash-out period, the ICUs cross over into the second intervention for the final 9 months.
Outcome resistance per species
| Enterobacteriaceae | + | + | |
| | + | + | |
| + | + |
Summary of analyses for secondary outcomes
| Acquisition rates of antibiotic resistant Gram-negative bacteria (ARGNB) | McNemar’s test; Cox proportional hazard regression with random effects for ICUs. |
| Intensive care unit (ICU)-acquired bacteremia rates | McNemar’s test; Cox proportional hazard regression with random effects for ICUs. |
| Percentage of appropriate empirical treatment of ICU-acquired bacteremia | McNemar’s test; Generalized linear regression with random effects for ICUs. |
| Mean length of stay in ICU | Paired t-test; Generalized linear regression with random effects for ICUs. |
| In-ICU mortality | McNemar’s test; Cox proportional hazard regression with random effects for ICUs. |
Methodological characteristics and key points
| Prevents allocation bias | Susceptible to case mix fluctuations in time | Prevented by adequate intervention period length | |
| Prevents between-intervention correlation as compared with individual randomization | Creates cluster correlation of outcomes | Will be accounted for in analysis | |
| Transparency in patient treatment | Different treatment adherence between different preferred antibiotics | Does not differ between interventions | |
| Enables comparison with standard care. Enables time trend analysis for time-dependent increase in prevalence | No control group parallel in time | Comparable parallel groups/intensive care units (ICUs) not available, are expected to have higher heterogeneity in ICU characteristics than within-ICU comparisons using a crossover design | |
| Intervention comparison within ICUs equals out differences that influence outcome | Increases trial time-span and effect of baseline resistance increases over time | Addressed with time-trend analysis using pre-intervention control period |
Selective media plates
| MacConkey | None |
| Extended-spectrum beta-lactamase (ESBL) | Oxoid Brilliance™ ESBL Agar |
| MacConkey/Ceftriaxone | Ceftriaxone (0.5 mg/L) |
| MacConkey/Pip-Tazo | Piperacillin-Tazobactam (4 mg/L) |
| MacConkey/Carbapenem | Meropenem (0.125 mg/L) |