Previous Article | Next Article ![]()
Antimicrobial Agents and Chemotherapy, March 1998, p. 521-527, Vol. 42, No. 3
The Clinical Pharmacokinetics Laboratory,
Received 18 February 1997/Returned for modification 24 July
1997/Accepted 3 December 1997
The selection of bacterial resistance was examined in relationship
to antibiotic pharmacokinetics (PK) and organism MICs in the patients
from four nosocomial lower respiratory tract infection clinical trials.
The evaluable database included 107 acutely ill patients, 128 pathogens, and five antimicrobial regimens. Antimicrobial pharmacokinetics were characterized by using serum concentrations, and
culture and sensitivity tests were performed daily on tracheal aspirates to examine resistance. Pharmacodynamic (PD) models were developed to identify factors associated with the probability of
developing bacterial resistance. Overall, in 32 of 128 (25%) initially
susceptible cases resistance developed during therapy. An initial
univariate screen and a classification and regression tree analysis
identified the ratio of the area under the concentration-time curve
from 0 to 24 h to the MIC (AUC0-24/MIC) as a
significant predictor of the development of resistance
(P < 0.001). The final PK/PD model, a variant of the
Hill equation, demonstrated that the probability of developing
resistance during therapy increased significantly when antimicrobial
exposure was at an AUC0-24/MIC ratio of less than 100. This relationship was observed across all treatments and within all
organism groupings, with the exception of Increasing bacterial resistance, and
the subsequent burden to society in terms of morbidity,
mortality, and increased health care expenditures, necessitates
innovative approaches to the use of antimicrobial therapy (2,
15). Considering the dearth of available innovative approaches,
attention to the appropriate utilization of antimicrobials is becoming
increasingly important, particularly as there are fewer new
antimicrobial drugs in development (4). The elucidation of
relationships between pharmacodynamic parameters and organism
persistence or resistance during therapy would facilitate the design of
more effective dosing regimens. Unfortunately, there have been
relatively few pharmacodynamic examinations of the relationship between
antibiotic dosing and resistance in patients. Most of the available
data comes from animal or in vitro models integrating pharmacokinetics
and pharmacodynamics, where there are actually many definitive studies
and considerable amounts of data.
Reports on the relationship between antimicrobial pharmacodynamic
parameters and clinical and microbiological outcomes identify the
percent time above the MIC (time-dependent killing) as the parameter
predictive of response to We have previously described the pharmacodynamic parameter area under
the inhibitory time curve (AUIC) and its relationship to bacteriologic
eradication and clinical outcome in patients with nosocomial pneumonia
(14, 16, 23, 24). Antimicrobial resistance developed to some
extent in each of these trials, but in the individual trials the
numbers were too small to clearly define a mathematical relationship.
The purpose of this pharmacokinetic/pharmacodynamic analysis was to
determine the relationship of antimicrobial exposure, expressed as the
AUC/MIC ratio, antibacterial activity, and other covariates to the
development of bacterial resistance in the entire patient population
treated in these trials.
All patients treated in four antimicrobial clinical trials
conducted at the Millard Fillmore Hospital between 1984 and 1991 were
reviewed (5, 7, 12, 22, 24). The four data sets included a
total of 143 acutely ill patients, virtually all of whom were treated
for lower respiratory tract infection (LRTI). The four trials included
(i) an open-label study of cefmenoxime therapy, 1 to 2 g every 4 or 6 h; (ii) an open-label trial of intravenous ciprofloxacin, 200 to 300 mg every 12 h; (iii) a multicenter, double-blind,
randomized trial comparing intravenous ciprofloxacin, 400 mg every
8 h, with intravenous imipenem, 1,000 mg every 8 h; and (iv)
an open-label, randomized, antimicrobial exposure (target AUIC of 250 SIT All patients with LRTI from the above trials were eligible for
evaluation. Exclusion criteria were the following: an infection other
than an aerobic bacterial pneumonia (anaerobic infection, lung abscess,
fungal infection, atypical pathogens); less than 48 h of
antimicrobial therapy; inability to isolate a bacterial pathogen; lack
of MIC data; and the absence of pharmacokinetic data.
Initial bacteriologic studies on tracheal aspirates were performed for
the four clinical trials by the Millard Fillmore Hospital Clinical
Laboratory, Department of Pathology. Standard methods for pathogen
identification and susceptibility testing using microdilution techniques were employed as previously described (12, 14, 16,
22-24). Culture and sensitivity testing was performed daily, in
most cases, throughout the course of therapy and during the follow-up
period, for determination of microbiologic end points. Criteria for
clinical and microbiologic cure were similar in all studies. The study
end points were time to eradication and microbiologic cure. These study
end points allowed for the determination of the extent of and the time
to the development of bacterial resistance. All isolates considered as
bacterial pathogens in the original studies were included in the
analysis of the development of resistance. Tracheal-aspirate culture
and sensitivity data were reviewed for any significant changes in MICs
during therapy. The development of bacterial resistance was defined as
the isolation of a bacterial strain, initially found to be susceptible
to the treatment regimen, which tested resistant during therapy and/or
follow-up. The National Committee for Clinical Laboratory Standards
(21) document of MIC interpretive standards was utilized for
defining the antimicrobial resistance breakpoints. The cefmenoxime
resistance breakpoint was defined by the cefmenoxime study protocol as
a MIC of As there were a large number of different bacterial strains in these
patients, the bacterial pathogens were categorized into four groups
based upon similar initial-susceptibility characteristics. Group 1 contained only Pseudomonas spp. Group 2 contained
gram-negative organisms, typically resistant to narrow-spectrum
cephalosporins (cefazolin or cephalothin) and whose characteristics
were consistent with those of type I Patient-specific pharmacokinetic and pharmacodynamic parameters were
determined from serial blood samples and culture MICs. Ciprofloxacin
ceftazidime, cefmenoxime, and piperacillin serum drug concentrations
were determined by high-performance liquid chromatography as previously
described (5, 7, 22, 23, 24). Specific drug AUC values were
obtained by fitting pharmacokinetic models to drug concentration data
and integrating the drug concentration-versus-time curves over
time. The pharmacodynamic parameter AUC0-24/MIC, where AUC0-24 is the AUC from 0 to 24 h, was
calculated from each subject's specific AUC and organism-specific MIC.
In the first three studies, dosing adjustments were infrequent and the
initial AUC0-24/MIC ratio was considered to be an adequate estimate of average antimicrobial exposure for the duration of therapy
for these cases. In the final study, dose adjustments were made based
on initial and subsequent serum concentrations by utilizing an adaptive
feedback control algorithm to maintain targeted antimicrobial
exposure (AUC0-24/MIC). In addition to serum drug
concentrations, SITs were also obtained (5, 7). For these
cases an average daily AUC0-24/MIC measure was determined by comodelling patient-specific pharmacokinetic and pharmacodynamic parameters with ADAPT II software (9, 10).
Statistical analysis.
For univariate analysis, the effect of
categorical data on the likelihood of the development of resistance was
evaluated by the chi-square test and Fisher's exact test where
appropriate. Continuous data, such as the patient baseline
characteristics of age, weight, and time to resistance, were compared
among groups by using Kruskal-Wallis analysis of variance. A
P value of less than 0.05 was indicative of statistical
significance. The data set was also subjected to classification and
regression tree (CART) analysis with SYSTAT software (Systat, Inc.,
Evanston, Ill.) to identify possible significant interacting factors
impacting the dependent variable, the development of resistance.
Initial analysis by CART suggested that the AUC0-24/MIC
ratio and several interacting factors such as prior antimicrobial
therapy and the specific combinations of antimicrobial agent and
organism (e.g., cefmenoxime therapy and Pseudomonas spp. and
A total of 143 patients were enrolled in the four clinical trials.
Study inclusion criteria were met by 107 patients, with 128 organisms
being evaluable. The mean age of the patients ± standard deviation was
68.6 ± 11.7 years. There were 64 males (60%) and 43 females
(40%), with a mean weight of 69.4 ± 16.4 kilograms. The mean
duration of therapy was 10.7 ± 3.5 days, with a range of 3 to 31 days. Patient baseline underlying disease states and case
characteristics are listed in Table 1.
Thirty-six patients were excluded from the evaluation; details
concerning them are listed in Table 2.
Serum concentrations were obtained for only ciprofloxacin in the third
trial (ciprofloxacin versus imipenem); therefore, for trial 3 only
the patients receiving ciprofloxacin were included in this analysis. Of
the 128 organisms obtained from 107 patients, a single pathogen was
evaluated for 90 patients, two pathogens were evaluated for 13 patients, and three pathogens were evaluated for 4 patients. Table
3 lists all organisms. Baseline MICs for
selected pathogens are shown. Resistance developed in 32 (25%)
of the evaluable cases. Three additional organisms, K. pneumonia and two strains of E. cloacae, were isolated
during therapy or during the follow-up period, and were found to be
resistant. These organisms were not isolated at baseline; therefore,
they were not included in the analysis.
The rates of resistance development as determined for organism
groupings are listed in Table 4. The
greatest frequency of selected resistance was observed for
Pseudomonas (group 1 organisms) (46.1%), followed by group
2 organisms (27%) and group 3 organisms (10%). Resistance was not
observed in the diverse group of remaining organisms (group 4). When
resistance was evaluated by treatment, the greatest rate of resistance
was observed for cefmenoxime (42.9%), followed by ciprofloxacin
(27.6%), ceftazidime (20%), and the ceftazidime-tobramycin
combination (9.1%). Resistance was not observed in the
ciprofloxacin-piperacillin combination treatment arm. For monotherapy
the rate of selected resistance development was 30.7% (31 of 101 cases), while resistance developed in only 3.7% (1 of 27) of the cases
of combination therapy. The rates of resistance development by
treatment groups, monotherapy and combination therapy, and by organisms
are listed in Table 4.
0066-4804/98/$04.00+0
Copyright © 1998, American Society for Microbiology. All rights reserved.
Pharmacodynamic Evaluation of Factors Associated with the
Development of Bacterial Resistance in Acutely Ill Patients
during Therapy
![]()
ABSTRACT
Top
Abstract
Introduction
Materials & Methods
Results
Discussion
References
-lactamase-producing
gram-negative organisms (consistent with type I
-lactamase
producers) treated with
-lactam monotherapy. Combination therapy
resulted in much lower rates of resistance than monotherapy, probably
because all of the combination regimens examined had an
AUC0-24/MIC ratio in excess of 100. In summary, the
selection of antimicrobial resistance appears to be strongly associated
with suboptimal antimicrobial exposure, defined as an
AUC0-24/MIC ratio of less than 100.
![]()
INTRODUCTION
Top
Abstract
Introduction
Materials & Methods
Results
Discussion
References
-lactam antimicrobials (8, 17,
27) and the ratio of the peak concentration to the MIC or area
under the concentration-time curve (AUC) to the MIC
(concentration-dependent killing) as the predictor for response to
aminoglycosides and fluoroquinolones (17, 19). Recently, the
AUC-to-MIC ratio, which incorporates both concentration intensity and
exposure over time, has been advocated for use as the parameter for
prediction of bacteriologic response (14, 16, 18, 26).
![]()
MATERIALS AND METHODS
Top
Abstract
Introduction
Materials & Methods
Results
Discussion
References
1 ×24 h [inverse serum inhibitory titer integrated
from 0 to 24 h]) controlled study of intravenous ciprofloxacin (400 mg
every 8 or 12 h) versus intravenous ceftazidime (1 to 2 g
every 8 or 12 h). In this study, if the dosage needed to provide a
target AUC/MIC ratio of 350 exceeded 1,200 mg or 6 g per day for
ciprofloxacin or ceftazidime, respectively, then piperacillin was added
to ciprofloxacin and tobramycin was added to ceftazidime to achieve the
targeted AUIC.
25 µg/ml. Time to bacterial resistance was the number of
days from the isolation of an initially susceptible organism to the day when the MIC reached the resistance breakpoint.
-lactamase producers, such as
Enterobacter cloacae, Enterobacter aerogenes,
Serratia marscesens, Citrobacter spp.,
Morganella morganii, and Proteus vulgaris. Group
3 contained other gram-negative rods typically susceptible to
cephalosporins, such as Escherichia coli, Klebsiella
pneumoniae, and Proteus mirabilis. Group 4 contained
the remainder of the diverse organisms, i.e., Haemophilus
influenzae, Staphylococcus aureus, and
Streptococcus pneumoniae.
-lactam monotherapy and group 2 organisms) were important. The final
pharmacodynamic model, a variant of the Hill equation, described a
relationship between antimicrobial exposure, expressed as the
AUC0-24/MIC ratio, and the development of resistance for
the majority of cases. Models were fit by the maximum-likelihood
approach available in ADAPT II. Weighting was by the fitted-inverse
observation variance, and model discrimination was accomplished by
using Akaike's information criterion (1). Kaplan-Meier
survival curves were constructed to assess the probability of
developing resistance beginning with the initiation of therapy.
![]()
RESULTS
Top
Abstract
Introduction
Materials & Methods
Results
Discussion
References
TABLE 1.
Baseline characteristics by clinical trial
TABLE 2.
Patients excluded from the analysis
TABLE 3.
Median MICs for study organisms at baseline and at the
end point (resistance)
TABLE 4.
Selected resistance rates by organism grouping
and treatment
An initial univariate screen of patient, organism, and antimicrobial
factors and their relationship to the development of resistance
revealed that age, sex, weight, ventilator status, surgery, chronic
obstructive pulmonary disease (COPD), diabetes mellitus, steroid use,
malignancy, chemotherapy and/or radiation therapy, ciprofloxacin
therapy, ceftazidime therapy, and the presence of group 2 gram-negative
rods were not significant as predictors of resistance. However, several
factors, including the AUC0-24/MIC ratio, the presence of
group 1 or group 3 gram-negative rods, cefmenoxime therapy, group 2 organisms treated with
-lactam monotherapy, and previous
antimicrobial therapy, were determined to be significant by univariate
analysis (Table 5).
|
The median AUC0-24/MIC values by organism and treatment groupings are presented in Table 6. The designation of susceptible or resistant indicates the antimicrobial exposure and applies to those organisms that either remained susceptible or became resistant, respectively, during treatment. Although the parameter AUC0-24/MIC has great variability, there is an apparent trend of emergent resistance at lower levels of antimicrobial exposure.
|
CART analysis identified four factors as significant:
AUC0-24/MIC ratio, cefmenoxime treatment, and
organisms of group 1 and group 2. Treatment and organism interactions,
such as Pseudomonas treated with cefmenoxime and
-lactamase-producing organisms treated with cefmenoxime and/or
ceftazidime, were scrutinized for possible significance. Further
inspection of these findings and analysis with pharmacodynamic models
revealed that Pseudomonas spp. and all other organisms, with
the exception of
-lactamase-producing organisms (group 2 organisms)
treated with
-lactam monotherapy (cefmenoxime or ceftazidime),
exhibited an inverse relationship between the probability of developing
resistance and the AUC0-24/MIC ratio.
The final pharmacodynamic model describing this relationship is
represented by the equation %P = [P0
(P0
P
) · AUICH/(AUICmH + AUICH)] · (1
R2) + P2 · R2, where P0 is the
asymptotic maximum percent probability of resistance as the
AUC0-24/MIC ratio goes to 0; P
is the asymptotic minimum percent probability of resistance as the
AUC0-24/MIC ratio goes to infinity;
R2 is an indicator, either 0 or 1, of group 2 organisms (
-lactamase-producing organisms treated with
-lactam
monotherapy); P2 is the percent resistance for
cases when R2 is 1; AUICm
is the AUC0-24/MIC ratio at which %P = 0.5 · (P0 + P
);
and H is Hill's constant, which reflects the degree of
sigmoidicity. Parameters fitted by this model were
%P0 = 82.6%, %Pmin = 9.2%, %P2 = 64.3%, AUC0-24/MIC (AUICm) = 100, and H = 40 (fixed). A log-linear regression approach with weighting was utilized
to determine the line of best fit for the group 2 organisms
treated with
-lactam therapy. The equation describing the line is
y = 1.409
0.2548 · log10 AUC0-24/MIC. The final model fitted the
data extremely well. The results of the model goodness-of-fit analysis
are presented in Table 7. As described by
this model, an inverse-effect relationship, which applies to all
organisms and treatments with the exception of
-lactam monotherapy
for group 2 organisms (consistent with type I
-lactamase-producing
gram-negative organisms), exists. The observed and modelled data are
graphically presented in Fig. 1. As shown
in the figure the solid line represents the modelled response surface
for all cases, classified as either susceptible or resistant, within
the data set for which the AUC0-24/MIC inverse-effect
relationship applied. The dashed line represents the line of best fit
for the group 2 organisms treated with
-lactam monotherapy. Observed
cases identified by symbols and numbers are plotted as single points
within an AUC0-24/MIC ratio category at the median value
for that category.
|
|
For those cases in which the model fits applied, Pseudomonas
aeruginosa treated with ciprofloxacin represented a large number of the fitted cases. The observed percent resistance for ciprofloxacin monotherapy for pseudomonas organisms was 66.7%. This extremely high
incidence of resistance was associated with the level of antimicrobial
exposure. For example, the observed percent resistance for pseudomonas
organisms treated with ciprofloxacin monotherapy, determined by
utilizing the fitted AUC0-24/MIC breakpoint, was 100% (10 of 10 cases) when the AUC0-24/MIC ratio was <100 and 25%
(2 of 8 cases when it was
100). In the case of group 3 organisms
(other gram-negative rods), including all treatments, the observed
percent resistance was 100% (2 of 2 cases) below the breakpoint, and
5.3% (2 of 38 cases) above the breakpoint. The observed data points of
-lactam monotherapy for group 2 organisms are clearly not reflective
of the modelled response surface. The high percentage of resistance
(>60%) within this group could not be explained by the
pharmacodynamic measure of antimicrobial exposure, AUC0-24/MIC, as resistance occurred throughout a large
range of AUC0-24/MIC ratios (217 to 14,190).
The median time to the observation of selected bacterial resistance was
6 days. The median time to resistance for all cases below the
AUC0-24/MIC ratio breakpoint was 7 days versus 6 days for
those cases above the breakpoint. This difference was not significant,
irrespective of treatment or organism. Figure 2 is a Kaplan-Meier plot of the
probability of remaining susceptible over time, from the initiation of
therapy. The three curves represent three distinct groups: (i) the
cases fit by the model below the AUC0-24/MIC breakpoint of
100 (n = 17); (ii) the cases consistent with type
I
-lactamase-producing organisms treated with
-lactam monotherapy, which did not exhibit an AUC0-24/MIC
relationship (n = 14); and (iii) the cases fit by the
model above the AUC0-24/MIC breakpoint of 100 (n = 97). For the organisms represented by curve i
(n = 17), the times to selection of 25, 50, and 75%
resistance occurred by days 5, 10, and 14, respectively. For the
gram-negative rods represented by curve ii (n = 14), the
time to selection of 25% resistance occurred by day 5, and the time to
selection of 50% or greater resistance occurred by day 16. For all
other organisms, the cumulative rate of resistance development was
approximately 9% and remained relatively consistent over time, with
all cases of resistance occurring by day 13. A statistically
significant difference was noted between groups 1 and 3 (P < 0.001) and between groups 1 and 2 (P < 0.001). Groups 2 and 3 did not differ
(P = 0.322). However, the numbers of cases in these two
groups are small and a type II error may exist. For these two groups,
which exhibit different relationships of antimicrobial exposure to
response, the rates of selection of bacterial resistance are similar.
|
| |
DISCUSSION |
|---|
|
|
|---|
In this population of acutely ill patients with LRTIs, there was
an inverse-effect relationship between the probability of the
development of bacterial resistance and the AUC0-24/MIC ratio. This relationship was strongest for Pseudomonas
aeruginosa treated with ciprofloxacin, but was also found within
other organism groups and antibiotic treatments. These findings support
previous reports of the selection of resistance within
Pseudomonas aeruginosa strains from studies utilizing in
vitro pharmacodynamic models with various ciprofloxacin dosing regimens
(18, 19). In the in vitro model studies, bacterial
resistance did not occur when a dose of 1,200 mg of ciprofloxacin was
administered once daily, but it was associated with a
Cmax/MIC (Cmax, maximum
concentration of the drug in serum) ratio of <10 (19). In a
similar in vitro model, the investigators were able to select
subvariant bacterial populations with increasing MICs related to a
Cmax/MIC50 (MIC50, MIC
at which 50% of isolates are inhibited) ratio of 7.3 and a breakpoint
AUC/MIC50 ratio of 95 SIT
1 h (18),
essentially identical to our AUC0-24/MIC breakpoint of
100. These results suggest that the AUC0-24/MIC ratio may
be a useful parameter to guide therapy with the goal of preventing the
selection of resistance (18).
In a neutropenic rat model of Pseudomonas sepsis, Drusano
and colleagues studied lomefloxacin and found that either the
Cmax/MIC ratio or the AUC/MIC ratio was a
significant predictor of survivorship (11). However, when
the AUC was held constant but the dose was changed to produce very high
Cmax/MIC ratios (
20:1), outcomes were
significantly improved. Success in this model may reflect successful
eradication of bacterial subpopulations that remain viable and that are
selected for resistance by lower exposures. Unfortunately, dosing
regimens of the fluoroquinolones which could be tolerated in human
patients would not achieve these very high Cmax/MIC ratios for Pseudomonas.
Finally, our data provide support for the observation that a
Cmax/MIC ratio of approximately 5:1 may
correspond to an AUC0-24/MIC ratio of 100 for
ciprofloxacin.
We agree with Madaras-Kelly (18), that the AUC0-24/MIC ratio is the most reasonable parameter, as it combines both concentration intensity and exposure over time. In addition, we do not advocate Cmax/MIC targets over AUC/MIC targets because the dosing regimens suggested by Marchbanks and Drusano to achieve their effective Cmax/MIC ratios are not achievable in human pseudomonas infections, without unacceptable side effects. The other problem is that unlike AUC0-24/MIC ratios, Cmax/MIC ratios are not additive. Thus, it is not possible to optimize two antibiotics based on the Cmax/MIC ratio.
A recent review investigating the frequency of bacterial resistance included 173 clinical trials, incorporating 14,000 patients and seven antibiotic classes (13). One study included within our data set was among the 173 trials reviewed (22).
The authors reported an overall rate of bacterial resistance development of 4%, and in LRTI patients the incidence was 8.9%. The rates of resistance development reported for the intensive-care unit (ICU) population (7%) and the mechanically ventilated population (9%) were less than the 25% overall rate of resistance development reported in our study. However, our patients were primarily ICU patients and 72% were mechanically ventilated. Factors within the ICU setting such as mechanical ventilation and multiple underlying diseases appeared to contribute to bacterial resistance. Our observation of a lower frequency of resistance with combination therapy was also consistent with the finding of the review. Combination regimens had median AUC0-24/MIC ratios similar to those of the monotherapy regimens (Table 6), but the minimum values more frequently exceeded the AUC0-24/MIC ratio of 100. When two antibiotics are used, there is always a greater chance that one of the two may have an AUC0-24/MIC ratio above 100, thus explaining the better overall protection from resistance of combination therapy in pharmacodynamic terms.
The organisms which failed to demonstrate a statistically significant
relationship between the development of resistance and the
AUC0-24/MIC ratio were all
-lactamase-producing
organisms treated with
-lactam monotherapy. Type I
-lactamase
production is readily selected by the broad-spectrum cephalosporins in
Enterobacter spp. and is associated with the development of
resistance by the simple eradication of the susceptible subpopulations
(3, 6, 20). The selection of resistant mutants during
therapy results in a greater proportion of organisms producing adequate
quantities of enzyme, which readily hydrolyzes most
-lactams
(20), and the net effect is a rise in MIC. We suggest that
in this situation there are bacterial subpopulations with baseline
enzyme production present in the culture which will not be eradicated
even with exposure of the entire population above the
AUC0-24/MIC ratio of 100. Although the initial MICs seem
to be low, they quickly increase as the susceptible organisms are
eradicated leaving the resistant mutants behind. These findings provide
further argument to avoid the use of monotherapy with broad-spectrum
cephalosporins in these organisms, since our data show that
variable rates of selection of bacterial subpopulations cannot be
predicted by baseline MIC testing. Combination therapy with an
antibiotic not susceptible to this mechanism is the necessary
procedure. We surmise that an AUC0-24/MIC ratio above 100 is required for the second (non-
-lactam) drug, or the probability
for failure will also be increased for the combination regimen.
This may explain why aminoglycosides added to
broad-spectrum cephalosporins did not always prevent the
selection of resistance in E. cloacae (3), since
aminoglycosides alone do not often produce
AUC0-24/MIC ratios above 100.
A mechanistic discussion of how AUC0-24/MIC relationships
might explain the selection of each type of resistance during therapy
is clearly beyond the scope of this paper. However, the mechanism of
resistance in many of our patients is most likely the selection of
preexisting subpopulations of resistant mutants. In gram-negative
pathogens the mutant subpopulations may have alterations in porin
channels, plasmids containing resistant genes, active efflux pumps, or
mutations in regulatory genes controlling
-lactamase production
(6, 15, 20). In each of these cases, the action of the
antibiotic is to eliminate the susceptible majority, leaving the
selected remainder intact. In the absence of host defense or in the
presence of foreign surfaces, the selected remainder quickly becomes
the dominant population.
This study has several limitations. First, the retrospective nature of the review and the potential for bias in selection of resistant cases must be acknowledged, as ICU patients with nosocomial pneumonia are frequently colonized with gram-negative organisms and many have received previous courses of antimicrobial therapy. These data are not epidemiologic study data useful for determining the comparative frequency of resistance across patient populations, among ICUs, or among different antibiotics. Second, controversy will continue over the relative value of the different methods of lower respiratory tract specimen sampling and culture. The patients were clinically similar in all four trials (Table 1), and all the patients were treated in one institution under observation by the same investigators. There were common inclusion criteria for all of our nosocomial pneumonia trials, and most cases reported here were eventually used as part of new drug application submissions. Third, this study assumed that the resistant organisms isolated during therapy and follow-up were the same organisms as those isolated in the original cultures. Molecular typing (DNA) methods would be required to compare strain homologies, and these tests were not performed. Thus, the impact of AUC0-24/MIC ratios below 100 on selection versus the impact of new mutations or the introduction of new organisms cannot be definitively resolved. We can state with statistical certainty that when the AUC0-24/MIC ratio is below 100, 82.4% of the organisms developed resistance via some mechanism, the most likely being the selection of a subpopulation. When the AUC0-24/MIC ratio was above 100, only 9% of similar patients with similar organisms developed resistance (Table 7 and Fig. 2).
These results provide clinical data to support previously reported findings from in vitro models and from animal studies. They demonstrate a relationship between the antimicrobial pharmacodynamic parameter AUC0-24/MIC and the development of bacterial resistance. The association between resistance and bacterial MIC "coverage" by drug concentration is clearly stronger than any of the previously elucidated clinical risk factors. This finding is intuitively logical, since exactly the same conclusion arises from studies conducted in vitro and with animal models in the absence of patient factors and since the nosocomial pneumonia patient represents one of the situations where there is relatively little contribution of host defense to outcome.
Our results also suggest resistance can also be avoided with attention
to dosing, since dosing regimens which provide an
AUC0-24/MIC ratio of at least 100 appear to reduce the
rate of the development of bacterial resistance in acutely ill patients
with nosocomial pneumonia. Additional molecular studies of
subpopulations will be needed to identify the relationship between
-lactam monotherapy and the selection of resistant organisms
consistent with type I
-lactamase producers. Finally, clinical
trials evaluating new antimicrobial agents should measure
antimicrobial exposure parameters, such as the
AUC0-24/MIC ratio, in order to relate these findings
to both microbiologic and clinical outcomes and to determine the
relationship between these indices and the development of antibacterial
resistance.
| |
FOOTNOTES |
|---|
* Corresponding author. Mailing address: Philadelphia College of Pharmacy & Clinical Pharmacy Services, Christiana Care Health Service, 4755 Ogletown-Stanton Rd., Newark, DE 19718. Phone: (302) 733-6333. Fax: (302) 733-6367. E-mail: Thomas.Jen{at}ChristianaCare.org.
| |
REFERENCES |
|---|
|
|
|---|
| 1. |
Akaike, H.
1979.
A bayesian extension of the minimum AIC procedure of autoregressive model fitting.
Biometrika
66:237-242 |
| 2. | ASM Task Force on Antibiotic Resistance. 1995. Report of the ASM Task Force on Antibiotic Resistance. American Society for Microbiology, Washington, D.C. |
| 3. | Ballow, C. H., and J. J. Schentag. 1992. Trends in antibiotic utilization and bacterial resistance. Report of the national nosocomial resistance surveillance group. Diagn. Microbiol. Infect. Dis. 15:37S-42S[Medline]. |
| 4. | Bax, R. P. 1997. Antibiotic resistance: a view from the pharmaceutical industry. Clin. Infect. Dis. 24(Suppl. 1):S151-S153. |
| 5. | Bhavnani, S. M., A. Cheng, C. H. Ballow, and A. Forrest. 1996. Modelling the PDs of SITs for ceftazidime (Ctz), Ctz/tobramycin (C+T), ciprofloxacin (Cip), and Cip/piperacillin (C+P), in acutely ill patients, abstr. A99, p. 20. In Abstracts of the 36th Interscience Conference on Antimicrobial Agents and Chemotherapy. American Society for Microbiology, Washington, D.C. |
| 6. | Bush, K., G. A. Jacoby, and A. A. Medeiros. 1995. A functional classification scheme for beta-lactamases and its correlation with molecular structure. Antimicrob. Agents Chemother. 39:1211-1233[Medline]. |
| 7. | Cheng, A., A. Forrest, C. H. Ballow, and J. J. Schentag. Pharmacodynamics of intravenous ciprofloxacin with and without piperacillin in seriously ill patients. Submitted for publication. |
| 8. | Craig, W. A., and D. Andes. 1996. Pharmacokinetics and pharmacodynamics of antibiotics in otitis media. Pediatr. Infect. Dis. J. 15:255-259[Medline]. |
| 9. | D'Argenio, D. Z., and A. Schumitzky. 1979. A program package for simulation and parameter estimation in pharmacokinetic systems. Comput. Programs Biomed. 9:115-134[Medline]. |
| 10. | D'Argenio, D. Z., and A. Schumitzky. 1992. ADAPT II users manual. Biomedical simulations resource. University of Southern California, Los Angeles, Calif. |
| 11. |
Drusano, G. L.,
D. E. Johnson,
M. Rone, and H. C. Standiford.
1993.
Pharmacodynamics of a fluoroquinolone antimicrobial agent in a neutropenic rat model of Pseudomonas sepsis.
Antimicrob. Agents Chemother.
37:483-490 |
| 12. |
Fink, M. P.,
D. R. Snydman,
M. S. Niederman,
K. V. Leeper,
R. H. Johnson,
S. O. Heard,
G. Wunderink,
J. W. Caldwell,
J. J. Schentag,
G. A. Siami,
R. L. Zameck,
D. C. Haverstock,
H. H. Reinhart, and R. M. Echols.
1994.
Treatment of severe pneumonia in hospitalized patients: results of a multicenter, randomized, double-blind trial comparing intravenous ciprofloxacin with imipenem-cilastatin.
Antimicrob. Agents Chemother.
38:547-557 |
| 13. | Fish, D. N., S. C. Piscitelli, and L. H. Danziger. 1995. Development of resistance during antimicrobial therapy: a review of antibiotic class and patient characteristics in 173 studies. Pharmacotherapy 15:279-291[Medline]. |
| 14. |
Forrest, A.,
D. E. Nix,
C. H. Ballow,
T. F. Goss,
M. C. Birmingham, and J. J. Schentag.
1993.
Pharmacodynamics of intravenous ciprofloxacin in seriously ill patients.
Antimicrob. Agents Chemother.
37:1073-1081 |
| 15. |
Gold, H. S., and R. C. Moellering.
1996.
Antimicrobial-drug resistance.
N. Engl. J. Med.
335:1445-1453 |
| 16. | Goss, T. F., A. Forrest, D. E. Nix, C. H. Ballow, M. C. Birmingham, T. J. Cumbo, and J. J. Schentag. 1994. Mathematical examination of dual individual principles. II. The rate of bacterial eradication at the same area under the inhibitory curve is more rapid for ciprofloxacin than for cefmenoxime. Ann. Pharmacother. 28:863-868[Abstract]. |
| 17. | Hyatt, J. M., P. S. McKinnon, G. S. Zimmer, and J. J. Schentag. 1995. The importance of pharmacokinetic/pharmacodynamic surrogate markers to outcome. Clin. Pharmacokinet. 28:143-160[Medline]. |
| 18. | Madaras-Kelly, K. J., B. E. Ostergaard, L. B. Hovde, and J. C. Rotschafer. 1996. Twenty-four-hour area under the concentration-time curve/MIC ratio as a generic predictor of fluoroquinolone antimicrobial effect by using three strains of Pseudomonas aeruginosa and an in vitro pharmacodynamic model. Antimicrob. Agents Chemother. 40:627-632[Abstract]. |
| 19. |
Marchbanks, C. R.,
J. R. McKiel,
D. H. Gilbert,
N. J. Robillard,
B. Painter,
S. H. Zinner, and M. N. Dudley.
1993.
Dose ranging and fractionation of intravenous ciprofloxacin against Pseudomonas aeruginosa and Staphylococcus aureus in an in vitro model of infection.
Antimicrob. Agents Chemother.
37:1756-1763 |
| 20. | Medeiros, A. A. 1997. Evolution and
dissemination of -lactamases accelerated by generations of
-lactam antibiotics. Clin. Infect. Dis.
24:(Suppl.):S19-S45.
|
| 21. | National Committee for Clinical Laboratory Standards. 1995. Minimum inhibitory concentration interpretive standards for organisms other than Haemophilus spp., Neisseria gonorrheae, and Streptococcus, table 2. M7-A3 (M100-S6). National Committee for Clinical Laboratory Standards, Wayne, Pa. |
| 22. |
Peloquin, C. A.,
T. J. Cumbo,
D. E. Nix,
M. F. Sands, and J. J. Schentag.
1989.
Evaluation of intravenous ciprofloxacin in patients with nosocomial lower respiratory tract infections.
Arch. Intern. Med.
149:2269-2273 |
| 23. | Schentag, J. J., D. P. Reitberg, and T. J. Cumbo. 1984. Cefmenoxime efficacy, safety, and pharmacokinetics in critical care patients with nosocomial pneumonia. Am. J. Med. 77:(Suppl.6A):34-42. |
| 24. | Schentag, J. J., I. L. Smith, D. J. Swanson, C. DeAngelis, J. E. Fracasso, A. Vari, and J. W. Vance. 1984. Role for dual individualization with cefmenoxime. Am. J. Med. 77:(Suppl.):43-50. |
| 25. | Schentag, J. J., D. E. Nix, and M. H. Adelman. 1991. Mathematical examination of dual individualization principles. I. Relationships between AUC and MIC and the area under the inhibitory curve for cefmenoxime, ciprofloxacin, and tobramycin. Drug Intell. Clin. Pharm. 25:1050-1057. |
| 26. |
Schentag, J. J.,
D. E. Nix,
A. Forrest, and M. H. Adelman.
1996.
AUIC the universal parameter within the constraint of a reasonable dosing interval.
Ann. Pharmacother.
30:1029-1031[Medline].
|
| 27. | Vogelman, B., S. Gudmundsson, J. Leggett, J. Turnidge, S. Ebert, and W. A. Craig. 1988. Correlation of antimicrobial pharmacokinetic parameters with therapeutic efficacy in an animal model. J. Infect. Dis. 158:831-847[Medline]. |
This article has been cited by other articles:
| |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
Copyright © 2009 by the American Society for Microbiology. For an alternate route to Journals.ASM.org, visit: http://intl-journals.asm.org | More Info»