| Literature DB >> 12702219 |
L Temime1, P Y Boëlle, P Courvalin, D Guillemot.
Abstract
Streptococcus pneumoniae and Neisseria meningitidis have very similar mechanisms of resistance to penicillin G. Although penicillin resistance is now common in S. pneumoniae, it is still rare in N. meningitidis. Using a mathematical model, we studied determinants of this difference and attempted to anticipate trends in meningococcal resistance to penicillin G. The model predicted that pneumococcal resistance in a population similar to that of France might emerge after 20 years of widespread use of beta-lactam antibiotics; this period may vary from 10 to 30 years. The distribution of resistance levels became bimodal with time, a pattern that has been observed worldwide. The model suggests that simple differences in the natural history of colonization, interhuman contact, and exposure to beta-lactam antibiotics explain major differences in the epidemiology of resistance of S. pneumoniae and N. meningitidis.Entities:
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Year: 2003 PMID: 12702219 PMCID: PMC2957969 DOI: 10.3201/eid0904.020213
Source DB: PubMed Journal: Emerg Infect Dis ISSN: 1080-6040 Impact factor: 6.883
Figure 1Model structure of the emergence and transmission of penicillin G resistance in Streptococcus pneumoniae and Neisseria meningitidis.
Model parameters and their values (8,21)
| Parameters (at MIC | Pneumococci | Meningococci | |
|---|---|---|---|
| Treatment duration | 1/γ | 8 d | 8 d |
| Weighted frequency of treatment | α | 1 / 2 y | 1 / 3 y |
| Refractory phase duration | 1/θ | 2 wk | 2 wk |
| Carriage duration | 1/λ | 2.2 mo | 10 mo |
| Time before antibiotic action | 1/ν | 4 d | 4 d |
| Contact rate (absence of treatment) | β | 0.23 wk-1person-1 | 0.026 wk-1person-1 |
| Contact rate (presence of treatment) | β´( |
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| Nondecolonization probability after treatment | σ ( |
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| MIC increase after a genetic event | F ( | Randomly selected from a seminormal law | |
Figure 2(a) Time to emergence of the first Streptococcus pneumoniae with a given MIC (full line) and time required for 20% of the bacterial population to reach this MIC (dotted line), starting from an all-susceptible pneumococcal population. Error bars correspond to stochastic variations in the model simulations (10th and 90th percentiles based on 100 simulations). (b) Simulated and (c) observed changes with time since 1987 in the distribution of resistance levels in the pneumococcal population in France. Observed data are taken from the Centre National de Référence des Pneumocoques ().
Figure 3Simulated changes with time in the distribution of resistance levels in the meningococcal population, starting from a situation close to that of France in 2001, under (a) constant antibiotic treatment conditions (1 treatment/3 y) and (b) a frequency of treatment reduced by half (1 tretatment/6 y).
Sensitivity analysis of the modela
| Parameters | PRCC | |
|---|---|---|
| Weighted frequency of treatment | α | 0.981651 |
| (Carriage duration) –1 | λ | 0.672063 |
| (Treatment duration) –1 | γ | -0.472343 |
| Contact rate (absence of treatment) | β | 0.392559 |
aKey factors that increase (Partial Rank Correlation Coefficient (PRCC>0) or decrease (PRCC<0) the prevalence of penicillin-resistant Streptococcus pneumoniae after 10, starting from an all-susceptible population.