| Literature DB >> 24655615 |
Harrell W Chesson, Robert D Kirkcaldy, Thomas L Gift, Kwame Owusu-Edusei, Hillard S Weinstock.
Abstract
Antimicrobial drug resistance can hinder gonorrhea prevention and control efforts. In this study, we analyzed historical ciprofloxacin resistance data and gonorrhea incidence data to examine the possible effect of antimicrobial drug resistance on gonorrhea incidence at the population level. We analyzed data from the Gonococcal Isolate Surveillance Project and city-level gonorrhea incidence rates from surveillance data for 17 cities during 1991-2006. We found a strong positive association between ciprofloxacin resistance and gonorrhea incidence rates at the city level during this period. Their association was consistent with predictions of mathematical models in which resistance to treatment can increase gonorrhea incidence rates through factors such as increased duration of infection. These findings highlight the possibility of future increases in gonorrhea incidence caused by emerging cephalosporin resistance.Entities:
Keywords: Neisseria gonorrhoeae; United States; bacteria; ciprofloxacin resistance; cities; drug resistance; drug therapy; epidemiology; gonorrhea incidence rates
Mesh:
Substances:
Year: 2014 PMID: 24655615 PMCID: PMC3966369 DOI: 10.3201/eid2004.131288
Source DB: PubMed Journal: Emerg Infect Dis ISSN: 1080-6040 Impact factor: 6.883
Variables used in regression analyses of ciprofloxacin resistance and gonorrhea incidence rates in 17 cities, United States, 1991–2006*
| Variable | Mean (SD) | Description | Source |
|---|---|---|---|
| Ciprofloxacin resistance | 0.028 (0.070) | Fraction of GISP isolates resistant to ciprofloxacin (MIC ≥1 μg/mL) in GISP clinic(s) in given city | GISP |
| Gonorrhea incidence rate (log) | 5.60 (0.911) | Log of city’s reported gonorrhea incidence rate (cases/100,000 persons) | CDC |
| Syphilis rate (log) | 2.07 (1.22) | Log of city’s reported primary and secondary syphilis rate (cases/100,000 persons) | CDC |
| % Black | 24.3 (21.6) | % of city population that is black | Census |
| % 15–29 y of age | 21.7 (1.6) | % of city population that is 15–29 y of age | Census |
| Robbery rate | 589 (356) | No. reported offenses/100,000 persons | FBI |
| Unemployment rate | 6.07 (1.99) | % of city’s labor force not employed | BLS |
| Per capita income | $36,483 ($5,788) | Per capita personal income in the city’s respective metropolitan statistical area (2006 dollars) | BEA |
| City variables | NA | Binary (dummy) variables for each city | Created |
| Year variables | NA | Binary (dummy) variables for each year | Created |
*For simplicity, we describe our study as a city-level analysis, although the data we analyzed were comprised of a mixture of sources at the city level, county level, and metropolitan statistical area. The dataset consisted of 1 observation/city/year during 1991–2006. Gonorrhea and syphilis incidence rates, % Black, and % 15–29 y of age were obtained from surveillance records and US Census Bureau data maintained by CDC (Atlanta, GA, USA) (13). We added 1 to the syphilis rate before taking the log. The city-specific data obtained from CDC were derived from county data and may only approximate city jurisdictions. City-specific resistance was based on resistance reported in GISP. Robbery rates and unemployment rates were based on city-level data, and per capita income was based on metropolitan statistical area data (www.ucrdatatool.gov, http://www.bls.gov/data and http://bea.gov/, respectively). Per capita income was updated to 2006 US dollars by using the all items component of the consumer price index (www.bls.gov/cpi/data.htm). For ease of display of regression coefficients, the unemployment rate was entered into the regression analyses as the no. persons unemployed/100 in the labor force, robbery rates were entered as the no. offenses/100 population, and income was entered in $100,000s (e.g., $36,483 was entered as 36.48). GISP, Gonococcal Isolate Surveillance Project; CDC, Centers for Disease Control and Prevention; FBI, Federal Bureau of Investigation; BLS, Bureau of Labor Statistics; BEA, Bureau of Economic Analysis.
FigureCiprofloxacin resistance and gonorrhea incidence rates in 17 cities, United States, 1991–2006. A) Gonorrhea incidence rates and B) average percentage of isolates resistant to ciprofloxacin for 2 groups of cities with higher (above the median) and lower (at or below the median) percentages of isolates resistant to ciprofloxacin as of 2004. Cities with higher resistance were Denver (Colorado), Honolulu (Hawaii), Minneapolis (Minnesota), Phoenix (Arizona), Portland (Oregon), San Diego (California), San Francisco (California), and Seattle (Washington). Cities with lower resistance were Albuquerque (New Mexico), Atlanta (Georgia), Baltimore (Maryland), Birmingham (Alabama), Cincinnati (Ohio), Cleveland (Ohio), New Orleans (Louisiana), Philadelphia (Pennsylvania), and St. Louis (Missouri).
Results of regression analysis of gonorrhea incidence rates in 17 cities, United States, 1991–2006*
| Independent variable | Model 1 | Model 2 | Model 3 | Model 4 |
|---|---|---|---|---|
| Ciprofloxacin resistance | 0.739 (0.172)† | 0.710 (0.201)† | 0.892 (0.322)† | 0.926 (0.322)† |
| Lagged dependent variable | 0.597 (0.052)† | 0.553 (0.053)† | – | – |
| % Black | – | −0.143 (0.962) | – | 0.991 (1.67) |
| % 15–29 y of age | – | −0.381 (1.20) | – | −1.60 (2.49) |
| Robbery rate | – | 0.247 (0.058)† | – | 0.336 (0.125)† |
| Unemployment rate | – | −0.660 (1.20) | – | −0.724 (1.83) |
| Per capita income | – | 0.449 (0.656) | – | 0.324 (1.19) |
| Adjusted R2 | 0.969 | 0.970 | 0.967 | 0.967 |
*Values are coefficients (SEs) unless otherwise indicated. All of the above regressions also included a constant term and binary (dummy) variables for city and year (not reported in table). Models 1 and 2 included the lagged value of the dependent variable and were estimated by using ordinary least squares. Models 3 and 4 were estimated by using linear regression corrected for first-order autocorrelated errors. –, variables were not included in the regression. †p<0.01.
Selected results of regression analyses of the temporal association of ciprofloxacin resistance and gonorrhea incidence rates in 17 cities, United States, 1991–2006*
| Independent variable | Gonorrhea incidence rate (log), year t | Ciprofloxacin resistance rate, year t |
|---|---|---|
| Gonorrhea incidence rate (log), year t – 1 | 0.571 (0.057)† | 0.015 (0.012) |
| Gonorrhea incidence rate (log), year t – 2 | 0.043 (0.080) | 0.000 (0.012) |
| Gonorrhea incidence rate (log), year t – 3 | −0.057 (0.077) | 0.009 (0.010) |
| Ciprofloxacin resistance, year t – 1 | −0.096 (0.488) | 0.854 (0.154)† |
| Ciprofloxacin resistance, year t – 2 | 1.41 (0.538)† | 0.395 (0.192)‡ |
| Ciprofloxacin resistance, year t – 3 | 0.793 (0.492) | −0.127 (0.177) |
| Sum of gonorrhea incidence rate (log) coefficients | 0.557 (0.070) | 0.024 (0.014) |
| Joint significance of gonorrhea incidence rate (log) coefficients: F test | ||
| Sum of ciprofloxacin resistance coefficients | 2.11 (0.506) | 1.12 (0.146) |
| Joint significance of ciprofloxacin resistance coefficients: F test | ||
| Adjusted R2 | 0.971 | 0.859 |
*Values are coefficients (SEs) unless otherwise indicated. Both of the above regressions also included a constant term and binary (dummy) variables for city and year (not reported in table) and were estimated by using ordinary least squares. These findings, that past levels of ciprofloxacin resistance helped to predict current gonorrhea incidence rates but that past gonorrhea incidence rates did not help to predict current ciprofloxacin resistance levels, were generally consistent when linear regression corrected for first-order autocorrelated errors was used rather than ordinary least squares and/or when including additional covariates (% Black, % 15–29 y of age, robbery rate, unemployment rate, and per capita income). †p<0.01. ‡p<0.05.