| Literature DB >> 34262891 |
Jose A Rodrigues1, Wonhee Cha1, Rebekah E Mosci1, Sanjana Mukherjee1, Duane W Newton2, Paul Lephart2, Hossein Salimnia3,4, Walid Khalife5, James T Rudrik6, Shannon D Manning1.
Abstract
Campylobacter jejuni is the leading cause of bacterial gastroenteritis and antibiotic resistant C. jejuni are a serious threat to public health. Herein, we sought to evaluate trends in C. jejuni infections, quantify resistance frequencies, and identify epidemiological factors associated with infection. Campylobacter jejuni isolates (n = 214) were collected from patients via an active surveillance system at four metropolitan hospitals in Michigan between 2011 and 2014. The minimum inhibitory concentration for nine antibiotics was determined using microbroth dilution, while demographic and clinical data were used for the univariate and multivariate analyses. Over the 4-year period, a significant increase in the recovery of C. jejuni was observed (p ≤ 0.0001). Differences in infection rates were observed by hospital and several factors were linked to more severe disease. Patients residing in urban areas, for instance, were significantly more likely to be hospitalized than rural residents as were patients over 40 years of age and those self-identifying as non-White, highlighting potential disparities in disease outcomes. Among the 214 C. jejuni isolates, 135 (63.1%) were resistant to at least one antibiotic. Resistance was observed for all nine antibiotics tested yielding 11 distinct resistance phenotypes. Tetracycline resistance predominated (n = 120; 56.1%) followed by resistance to ciprofloxacin (n = 49; 22.9%), which increased from 15.6% in 2011 to 25.0% in 2014. Resistance to two antibiotic classes was observed in 38 (17.8%) isolates, while multidrug resistance, or resistance to three or more classes, was observed in four (1.9%). Notably, patients with ciprofloxacin resistant infections were more likely to report traveling in the past month (Odds Ratio (OR): 3.0; 95% confidence interval (CI): 1.37, 6.68) and international travel (OR: 9.8; 95% CI: 3.69, 26.09). Relative to patients with only tetracycline resistant infections, those with ciprofloxacin resistance were more likely to travel internationally, be hospitalized and have an infection during the fall or summer. Together, these findings show increasing rates of infection and resistance and highlight specific factors that impact both outcomes. Enhancing understanding of factors linked to C. jejuni resistance and more severe infections is critical for disease prevention, particularly since many clinical laboratories have switched to the use of culture-independent tests for the detection of Campylobacter.Entities:
Keywords: Campylobacter; antibiotic resistance; ciprofloxacin resistance; epidemiology; risk factor; tetracycline resistance
Year: 2021 PMID: 34262891 PMCID: PMC8273344 DOI: 10.3389/fpubh.2021.672473
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Figure 1Percentage of the 214 Campylobacter jejuni isolates with (A) resistance to eight different antibiotics and (B) distinct antibiotic resistance phenotypes. AZI, azithromycin; CIP, ciprofloxacin; CLI, clarithromycin; ERY, erythromycin; FFN, phenicol; GEN, gentamicin; TEL, telithromycin; TET, tetracycline. The multidrug resistant (MDR) phenotype includes isolates with resistance to CIPAZIERYCLITEL, CIPTETCLI, and CIPTETTEL. All CIP resistant isolates were also resistant to nalidixic acid.
Figure 2Changes in the frequency of the most common antibiotic resistance phenotypes among 214 Campylobacter jejuni isolates over a 4-year period in Michigan. CIP, ciprofloxacin; TET, tetracycline. Multidrug resistant (MDR) isolates were resistant to CIPAZIERYCLITEL, CIPTETCLI, and CIPTETTEL.
Univariate analysis to identify factors associated with any ciprofloxacin resistance (CIP) and any tetracycline resistance (TET) among 214 Campylobacter jejuni isolates from Michigan, 2011 to 2014.
| 0–9 ( | 14 | (21.5) | 0.7 (0.31, 1.65) | 0.43 | 39 | (60.0) | 1.1 (0.53, 2.32) | 0.77 |
| 10–18 ( | 2 | (11.1) | – | 0.21 | 6 | (33.3) | 0.4 (0.12, 1.14) | 0.08 |
| 19–40 ( | 15 | (27.8) | 1.0 | – | 31 | (57.4) | 1.0 | – |
| 41–65 ( | 16 | (27.1) | 1.0 (0.42, 2.21) | 0.94 | 33 | (55.9) | 0.9 (0.45, 1.98) | 0.87 |
| ≥65 ( | 2 | (11.8) | - | 0.21 | 10 | (58.8) | 1.1 (0.35, 3.20) | 0.92 |
| Male ( | 23 | (20.9) | 1.0 | – | 58 | (52.7) | 1.0 | – |
| Female ( | 23 | (24.0) | 0.8 (0.44, 1.62) | 0.60 | 54 | (56.3) | 1.2 (0.66, 2.00) | 0.61 |
| White/Caucasian ( | 32 | (23.4) | 1.0 | – | 76 | (36.5) | 1.0 | – |
| Non-white/other ( | 9 | (25.7) | 1.1 (0.48, 2.67) | 0.77 | 17 | (48.6) | 0.8 (0.36, 1.59) | 0.46 |
| No ( | 27 | (25.5) | – | – | 53 | (50.0) | 1.0 | – |
| Yes ( | 3 | (12.0) | – | 0.19 | 17 | (68.0) | 2.1 (0.84, 5.35) | 0.10 |
| Winter, Spring ( | 12 | (21.4) | 1.0 | – | 38 | (67.9) | 1.0 | – |
| Summer, fall ( | 37 | (23.4) | 1.1 (0.54, 2.34) | 0.76 | 82 | (51.9) | 0.5 (0.27, 0.97) | 0.04 |
| No ( | 13 | (14.8) | 1.0 | – | 45 | (51.1) | 1.0 | – |
| Yes ( | 21 | (34.4) | 3.0 (1.37, 6.68) | 0.005 | 37 | (60.7) | 1.5 (0.76, 2.86) | 0.25 |
| None ( | 13 | (14.8) | 1.0 | – | 45 | (51.1) | 1.0 | – |
| Domestic ( | 4 | (12.5) | – | 1.0 | 18 | (56.3) | 1.1 (0.51, 2.56) | 0.74 |
| International ( | 17 | (63.0) | 9.8 (3.69, 26.09) | <0.0001 | 18 | (69.2) | 2.2 (0.85, 5.46) | 0.10 |
| Municipal, bottled ( | 25 | (21.1) | 1.0 | – | 60 | (50.4) | 1.0 | – |
| Any well water ( | 5 | (18.5) | 0.9 (0.29, 2.48) | 0.77 | 19 | (70.4) | 2.3 (0.95, 5.75) | 0.06 |
| No ( | 4 | (25.0) | – | – | 10 | (62.5) | 1.0 | |
| Yes ( | 24 | (20.9) | – | 0.75 | 61 | (53.0) | 0.7 (0.23, 1.99) | 0.48 |
| No ( | 12 | (22.2) | 1.0 | – | 30 | (55.6) | 1.0 | - |
| Yes ( | 20 | (20.8) | 0.9 (0.41, 2.07) | 0.84 | 52 | (54.2) | 0.9 (0. 48, 1.85) | 0.87 |
| No ( | 31 | (22.6) | – | – | 71 | (51.8) | – | – |
| Yes ( | 1 | (7.7) | – | 0.30 | 11 | (84.6) | – | 0.04 |
| Low <8,400 cattle ( | 3 | (13.0) | – | – | 12 | (52.2) | 1.0 | – |
| High ≥8,400 cattle ( | 21 | (25.6) | – | 0.27 | 50 | (61.0) | 1.4 (0.56, 3.63) | 0.45 |
| Rural ( | 18 | (24.7) | 1.0 | – | 45 | (61.6) | 1.0 | – |
| Urban ( | 25 | (21.0) | 0.8 (0.41, 1.62) | 0.56 | 62 | (52.1) | 0.7 (0.37, 1.22) | 0.20 |
| No ( | 27 | (19.9) | 1.0 | 80 | (58.8) | 1.0 | – | |
| Yes ( | 14 | (30.4) | 1.8 (0.83, 3.76) | 0.14 | 21 | (45.7) | 0.6 (0.30, 1.15) | 0.12 |
Not all numbers add up to the total number of cases per category due to missing data for some variables or the exclusion of susceptible isolates.
The 95% confidence interval (CI) for the odds ratio (OR) is presented; ORs were calculated separately for CIP and TET relative to all other isolates.
The Fisher's Exact Test was used for variables with ≤ 5 in one cell; no ORs could be calculated.
Self-reported race categories in the online Michigan Disease Surveillance System questionnaire were: Caucasian, African American, Asian, American Indian/Alaska Native, Hawaiian/Pacific Islander, Unknown, or Other.
Cattle density was not known for multiple counties with high case counts.
Epidemiological factors associated with any ciprofloxacin resistance (CIP) vs. only tetracycline resistance (TET) among 135 patients with resistant infections.
| 0–40 ( | 31 | (37.4) | 52 | (62.5) | 1.0 | – |
| ≥41 ( | 18 | (37.5) | 30 | (62.5) | 1.0 (0.48, 2.10) | 0.99 |
| Male ( | 23 | (35.4) | 42 | (64.6) | 1.0 | – |
| Female ( | 23 | (39.0) | 36 | (61.0) | 1.2 (0.41, 1.78) | 0.85 |
| Rural ( | 18 | (37.5) | 30 | (37.5) | 1.0 | – |
| Urban ( | 25 | (35.7) | 45 | (64.3) | 0.9 (0.43, 1.98) | 0.84 |
| Winter, spring ( | 12 | (30.8) | 27 | (69.2) | 1.0 | – |
| Summer, fall ( | 37 | (39.8) | 56 | (60.2) | 1.5 (0.67, 3.30) | 0.33 |
| No ( | 13 | (26.5) | 36 | (73.5) | 1.0 | – |
| Yes ( | 21 | (51.2) | 20 | (48.8) | 2.9 (1.20, 7.02) | 0.02 |
| None ( | 13 | (26.5) | 36 | (73.5) | 1.0 | – |
| Domestic ( | 4 | (21.1) | 15 | (79.0) | – | 0.76 |
| International ( | 17 | (81.0) | 4 | (19.1) | – | <0.0001 |
| Municipal, bottled ( | 25 | (37.3) | 42 | (62.7) | 1.0 | – |
| Any well water ( | 5 | (25.0) | 15 | (75.0) | – | 0.42 |
| No ( | 4 | (40.0) | 6 | (60.0) | – | – |
| Yes ( | 24 | (35.3) | 44 | (64.7) | – | 0.77 |
| No ( | 31 | (39.2) | 48 | (60.8) | – | – |
| Yes ( | 1 | (9.1) | 10 | (90.9) | – | 0.09 |
| No ( | 27 | (31.8) | 58 | (68.2) | 1.0 | – |
| Yes ( | 14 | (53.9) | 12 | (46.2) | 2.5 (1.02, 6.14) | 0.04 |
| Multivariate analysis | Adjusted OR (95% CI) | |||||
| Age | 1.0 (0.98, 1.02) | 0.87 | ||||
| Female | 0.5 (0.17, 1.40) | 0.18 | ||||
| Urban residence | 1.0 (0.33, 2.83) | 0.95 | ||||
| Summer or fall infection | 3.7 (1.03, 13.47) | 0.04 | ||||
| International travel only | 14.9 (4.00, 55.57) | <0.0001 | ||||
| Hospitalized | 3.0 (0.78, 11.19) | 0.11 | ||||
| Well water | 0.6 (0.16, 2.26) | 0.44 | ||||
| Livestock contact | 0.2 (0.02, 2.25) | 0.21 | ||||
Number of isolates may not add up to the total for some variables due to missing data; percentages were calculated using the number with each characteristic as the denominator.
95% confidence interval for the odds ratio (OR). ORs were calculated for ciprofloxacin resistance relative to tetracycline resistance.
The Fisher's Exact test was used for variables with fewer than 5 in one cell; no ORs could be calculated.
Multivariate results were generated using forward stepwise logistic regression while controlling for variables with p-values ≤ 0.2 in the univariate analysis as well as potential confounders. A base model consisted of the following variables: age (continuous), female sex, urban residence, season (fall and summer), and international travel. Each additional variable was added separately to the base model. The Homer and Lemeshow Goodness-of-Fit test (p > 0.05) was examined to ensure support for each model. Adjusted ORs were calculated and the Wald Chi-Square test was used to determine significance with 95% Wald Confidence Limits.
Figure 3(A) Antibiotic resistance frequencies of Campylobacter jejuni strains recovered from four Michigan hospitals (n = 214) in 2011–2014 as compared to the National Antimicrobial Resistance Monitoring System (NARMS) data for the same time period. Michigan frequencies were compared to NARMS data from Region 5 acquired from Minnesota (representing Ohio, Indiana, Michigan, Illinois, Wisconsin, and Minnesota and 34 federally recognized tribes) and the total national data (excluding Region 5). (B) Michigan frequencies were added to Region 5 national data (n = 585) leaving a total of 799 strains in the Midwest region for comparison to NARMS regions 1, 2, 3, 4, 6, and 8. *p ≤ 0.05, **p ≤ 0.0001; χ2 test. The 10 FoodNet sites representing Connecticut, Georgia, Maryland, Minnesota, New Mexico, Oregon, Tennessee, California, Colorado, and New York send data captured by the state public health laboratories to NARMS to represent the different regions. Data from Region 1 (Connecticut, Maine, Massachusetts, New Hampshire, Rhode Island, and Vermont), Region 2 (New Jersey, New York, Puerto Rico, and the Virgin Islands), Region 3 (Delaware, District of Columbia, Maryland, Pennsylvania, Virginia, and West Virginia), Region 4 (Alabama, Florida, Georgia, Kentucky, Mississippi, North Carolina, South Carolina, and Tennessee), Region 6 (Arkansas, Louisiana, New Mexico, Oklahoma, and Texas), and Region 8 (Colorado, Montana, North Dakota, South Dakota, Utah and Wyoming) were included in the analysis. Regions 7, 9, and 10 did not have data available for Campylobacter jejuni from 2011 to 2014 for comparison.