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Levels and trends of antimicrobial resistance in Campylobacter spp. from chicken in the UK

Results

The analysis of trends in AMR in the C. jejuni and C. coli isolates from chicken was performed for samples obtained from 2001 to 2020 in the UK, collected through various projects.

The analysis of trends in AMR in the C. jejuni and C. coli isolates from chicken was performed for samples obtained from 2001 to 2020 in the UK, collected through various projects. In total, phentoypic antimicrobial resistance data for 5,267 C. jejuni and 1,997 C. coli isolates collected between 2001 and 2018 inclusive were analysed. Based on this data alone, on average for all years, 29% of the C. jejuni and 32% of the C. coli isolates examined were resistant to ciprofloxacin (CIP) but only 1.6% of the C. jejuni and 13.2% of the C. coli isolates were resistant to erythromycin (ERY). For the years from 2001 to 2018, 48.2% of both the C. jejuni and the C. coli isolates examined were resistant to tetracycline (TET). Resistance to streptomycin (STR) was detected in 1.0% of the C. jejuni and 8.9% of the C. coli isolates. Only four isolates tested were resistant to gentamicin (GEN), two each of C. jejuni and C. coli, with 95% CI of 0.00 - 0.07 and 0.00 - 0.18, respectively. 

Results from two datasets, containing additional isolates collected from carcases between 2012-2015 and 2018 to 2020 with AMR predicted from genome sequence data were also examined and results presented. 

5.1.1 C. jejuni

The percentage of C. jejuni isolates from chicken in the UK (retail and slaughterhouse samples) from 2001 to 2020 with resistance to CIP is shown in Figure 1.

Figure 1. Trend in the percentages of ciprofloxacin (CIP) resistant C. jejuni isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2001 and 2020. Orange circles are based on phenotypic data. The black dots represent adjusted percentages of resistant isolates to account for the higher threshold concentration used in the years before 2009. The crosses represent percentages of resistant isolates based on the presence of genetic determinants.

Figure 1. Scatter plot showing the percentages of the C. jejuni isolates with resistance to ciprofloxacin (CIP) from UK retail and slaughterhouse chicken samples from 2001 to 2020. Thresholds were adjusted for samples taken prior to 2009 due to changes in methodology, but the adjustments were negligible. There was a significant difference over time, with the percentage of resistant isolates increasing from 13% in 2001 to over 50% in 2018. In samples tested from 2018 to 2020 the percentage of isolates.

The percentage of C. jejuni isolates with resistance to CIP increased significantly over time, from 13% in 2001 to 52% in 2018, this upward trend is apparent in Figure 1. Modest observations post 2015 provided some percentage estimates with a relatively wide margin of uncertainty and so not able to statistically confirm any apparent increase in very recent years, however this may be possible if data from both phenotypic and genotypic testing in the later years were combined for analysis. There was a change in the threshold concentration used to distinguish phenotypically resistant isolates from 2009 and the percentages of resistant isolates prior to this change were adjusted (described in detail in section 2.1) to enable comparability of data before and after this change. The impact of the adjustments was negligible as can be seen from the adjusted vs. unadjusted values plotted. Results for the percentages of isolates with resistance to CIP based on genome sequence data from additional samples were consistent with the results based on the phenotypic data (Figure 1). The percentage of isolates with genetic determinants predicting resistance to CIP was detected in 52.9% of samples on average in the years from 2018 to 2020, similar to the percentages determined by phenotypic testing from 2014 to 2018. Taking the data from 2020 (n = 265) alone however, 58.5% of C. jejuni isolates had a genetic determinant predicting resistance to CIP and this percentage was significantly higher than the percentage of resistant isolates in 2018 (p = 0.03; Fishers exact test; based on analysis of the combined number of isolates including both genome sequence and phenotypic data from 2018, n = 408). Continued monitoring would be needed to establish if there may be evidence of an increased percentage of CIP resistant C. jejuni in the most recent years.

The univariate (as reflected by the unadjusted OR) and multivariate (as reflected by the adjusted OR) regression analysis for resistance to CIP in C. jejuni investigated the role of sample year (categorised as shown), season, sample type (caeca/whole carcass/ portions), sample state (fresh/frozen) and chicken production type (standard or free-range or organic) (Table 5). Only data based on phenotypic testing were included in this analysis. It was not possible to incorporate the harmonised threshold adjustment to theses analyses, however the impact of the adjustment was neglible for all combinations of antimicrobial and Campylobacter spp., with the exception of ERY and C. coli. 

In the multivariate analysis only the year category of isolation, season and sample state remained significant. The year category had the largest odds ratio and from the years 2001-2005 the percentage of C. jejuni with resistance to CIP increased from 13% to 47% in the years 2011 to 2018.

Table 5. Results of uni- and multivariable logistic regression analyses to identify significant risk factors for ciprofloxacin (CIP) resistance (based on phenotypic data) amongst C. jejuni isolates sampled at UK retail and slaughterhouses between 2001 and 2018. 
 

CIP category factors Number of isolates Percentage resistant Unadjusted OR (95% CI) p value Adjusted OR (95% CI) p value
2001-2005 1,612 13% 1 (ref) NA 1 (ref) NA
2006-2010 1,530 22% 1.8 (1.5-2.2) <0.001 1.9 (1.5-2.3) <0.001
2011-2015 726 47% 5.8 (4.8-7.2) <0.001 6.5 (5.2-8.2) <0.001
2016-2018 1,401 47% 5.9 (4.9-7.0) <0.001 6.3 (5.1-7.7) <0.001
Spring 1,940 23% 1 (ref) NA 1 (ref) NA
Summer 1,284 28% 1.2 (1.1-1.5) 0.007 0.8 (0.7-1.0) 0.036
Autumn 1,180 35% 1.8 (1.5-2.1) <0.001 0.9 (0.7-1.1) 0.198
Winter 865 37% 1.9 (1.6-2.3) <0.001 1.2 (1.0-1.4) 0.098
Fresh sample 4,919 30% 1 (ref) NA 1 (ref) NA
Frozen sample 348 20% 0.6 (0.5-0.8) <0.001 1.5 (1.1-1.9) 0.010
unknown 2 0% NA NA NA NA
Total 5,269 29% NA NA NA NA

NA: not applicable

Season was a significant factor with summer having a slightly reduced risk of detecting CIP resistant C. jejuni compared to the baseline of spring, and winter and frozen samples were also slightly more likely to yield resistant C. jejuni when the other factors in the model had been adjusted for. Including sample type category (whole/portions/caeca) did not improve the overall fit of the multivariable model to the data, however the results of the univariate analysis showed that portions were significantly less likely to have CIP resistance than whole birds (OR = 0.43, 95% CI 0.36-0.51; p<0.001). However, after adjusting for year category, sample category was not significantly associated with CIP resistance (OR = 0.99, 95% CI 0.82-1.20; p=0.929). The analysis demonstrated that there was no significant difference in the percentage of C. jejuni isolates with resistance to CIP between the different sample categories (i.e. caecal contents, whole carcasses or portions). Nor was there any significant difference between isolates obtained from organic, free-range or standard chicken or between samples of UK and non-UK origin.

Resistance to nalidixic acid (NAL) in C. jejuni showed a similar increasing trend for the isolates from UK retail and slaughterhouse samples (Figure 2). 

Figure 2. Trend in the percentages of nalidixic acid (NAL) resistant C. jejuni isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2001 and 2018. 
 

Fig. 2 Scatter plot showing the percentages of C. jejuni isolates with resistance to nalidixic acid (NAL) from UK chicken retail and slaughterhouse samples from 2001 to 2018. The trend increased significantly over time, from 16% in 2001 to 52% in 2018.

his is expected as the key resistance mutation in gyrA confers resistance to both CIP and NAL. There was a significant increase over time from 16% of isolates with resistance to NAL in 2001 to 52% in 2018. Similar to the results for resistance to CIP there was no significant change in the percentage of isolates with resistance to NAL in the time period from 2014 to 2018. Validated data for prediction of resistance to NAL from genetic determinants were not available

The logistic regression analysis for resistance to NAL showed similar results to those obtained for CIP with no significant difference in the percentage of C. jejuni isolates with resistance to NAL between the different sample categories or chicken production type (Table 6). In the multivariate analysis only the year category of isolation and season remained significant and the year category had the largest odds ratio for NAL. From the years 2001-2005 the percentage of C. jejuni with resistance to NAL increased from 17% to 47% in the period 2016-2018. Season remained significant in the multivariate model with the summer period being protective (OR = 0.8, p-value 0.008) compared to a baseline of spring, and winter was a significant risk factor (OR = 1.2, p-value 0.028). 

Table 6. Results of uni- and multivariable logistic regression analyses to identify significant risk factors for nalidixic acid (NAL) resistance amongst C. jejuni isolates sampled at UK retail outlets and slaughterhouses between 2001 and 2018. 

NAL factors Number of isolates Percentage resistant Unadjusted OR (95% CI) P value Adjusted OR (95% CI) p value
2001-2005 1,612 17% 1 (ref) NA 1 (ref) NA
2006-2010 1.530 23% 1.4 (1.2-1.7) <0.001 1.4 (1.2-1.7) <0.001
2011-2015 726 48% 4.4 (3.6-5.3) <0.001 4.6 (3.8-5.7) <0.001
2016-2018 1,401 47% 4.2 (3.6-5.0) <0.001 4.2 (3.5-5.1) <0.001
Spring 1,940 26% 1 (ref) NA 1 (ref) NA
Summer 1,284 28% 1.1 (1.0-1.3) 0.166 0.8 (0.7-0.9) 0.008
Autumn 1,180 36% 1.6 (1.4-1.8) <0.001 0.9 (0.7-1.0) 0.138
Winter 865 39% 1.8 (1.5-2.2) <0.001 1.2 (1.0-1.5) 0.028
Total 5,269 31% NA NA NA NA

Including the sample type and state categories did not improve the overall fit of the multivariable model to the data, however the results of the univariate analysis for both variables were significant. Isolates from portions were less likely to have NAL resistance than isolates from whole chicken (OR = 0.43, 95% CI 0.36-0.51; p<0.001), while frozen samples were less likely to yield isolates with NAL resistance than isolates from fresh samples (OR = 0.64, 95% CI 0.49-0.82, p=0.001) but neither variable was significant after adjusting each for year category (portions OR = 0.88, 95% CI 0.73-1.05, p=0.168 and frozen OR = 1.29, 95% CI 0.99-1.69, p=0.064).

5.1.2 C.coli

The percentage of C. coli isolates from UK chicken from 2001 to 2018 with resistance to CIP is shown in Figure 3. Similar to the data obtained for C. jejuni, the percentage of isolates with resistance to CIP increased significantly over time, from 15% in 2001 to a peak of 51% in 2017. However, there was no significant difference in the percentages of C. coli with resistance to CIP over the years from 2014 to 2018.

Figure 3. Trend in the percentages of ciprofloxacin (CIP) resistant C. coli isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2001 and 2020. Blue circles are based on phenotypic data. The black dots represent adjusted percentages of resistant isolates to account for the higher threshold concentration used in earlier compared to the later years. The crosses represent percentages of resistant isolates based on the presence of genetic determinants for CIP resistance. 

Figure 3. Scatter plot showing the percentages of ciprofloxacin (CIP) resistant  C. coli isolates from chicken in UK retail and slaughterhouse samples from 2001 to 2020. Percentages were adjusted for the years prior to 2009 (due to a slightly higher threshold concentration used), but the adjustments were negligible. The trend increased significantly over time, from below 15% in 2001 to over 50% in 2017. On average, in samples from 2018 to 2020 the percentage of isolates with genetic determinants predicting

As for C. jejuni, there was a change in the threshold concentration used to distinguish resistant and sensitive isolates from 2009 and the adjusted percentage for C. coli was also plotted in Figure 3. The impact of the adjustments was negligible as can be seen from the adjusted and the unadjusted values plotted. Results for the percentages of isolates with resistance to CIP based genome sequence data from additional samples were consistent with the results based on the phenotypic data (Figure 3).

Genetic determinants predicting resistance to CIP were detected in 43.7% of isolates collected between 2018 to 2020 (n = 252; 95% CI 37.4-50.0), similar to the percentage of resistant isolates determined by phenotypic testing from 2014 to 2018 and with no significant difference (Fishers exact test) in the percentage of resistant isolates in 2014 compared to 2020 suggesting no change in the percentage of C. coli isolates with resistance to CIP since 2014.
In the univariate and multivariate regression analysis there was no significant difference in the percentage of C. coli isolates with resistance to CIP between the different sample categories (Table 7). 

Table 7. Results of uni- and multivariable logistic regression analyses to identify significant risk factors for resistance to ciprofloxacin (CIP) (based on phenotypic data) amongst C. coli isolates sampled at UK retail and slaughterhouses between 2001 and 2018. 

CIP category factors Number of isolates Percentage resistant Unadjusted OR (95% CI) p value Adjusted OR (95% CI) p value
2001-2005 590 18% 1 (ref) NA 1 (ref) NA
2006-2010 1,034 34% 2.3 (1.8-3.0) <0.001 2.1 (1.6-2.7) <0.001
2011-2015 164 51% 4.6 (3.2-6.7) <0.001 3.7 (2.5-5.4) <0.001
2016-2018 209 48% 4.1 (2.9-5.8) <0.001 3.2 (2.2-4.7) <0.001
Standard 1,661 29% 1 (ref) NA 1 (ref) NA
Free range 245 48% 2.2 (1.7-2.9) <0.001 1.9 (1.4-2.5) <0.001
Organic 77 45% 2.0 (1.3-3.2) 0.003 2.2 (1.3-3.5) 0.001
Unknown 14 36% 1.3 (0.4-4.0) 0.602 1.5 (0.5-4.6) 0.483
Spring 565 22% 1 (ref) NA 1 (ref) NA
Summer 649 35% 1.9 (1.5-2.4) <0.001 1.4 (1.1-1.9) 0.010
Autumn 513 41% 2.4 (1.9-3.2) <0.001 1.8 (1.3-2.4) <0.001
Winter 270 32% 1.7 (1.2-2.3) 0.001 1.2 (0.8-1.7) 0.315
UK 1,878 32% 1 (ref) NA 1 (ref) NA
Non-UK 92 40% 1.4 (0.9-2.2) 0.099 2.1 (1.3-3.3) 0.001
Unknown  27 26% 0.7 (0.3-1.8)

0.506

1.2 (0.5-3.0) 0.691
Total 1,997 32% NA NA NA NA

In the multivariate analysis the year of isolation, production type, season and country of origin remained significant. The year category had the largest odds ratio and from the years 2001-2005 the percentage of C. coli with resistance to CIP increased from 18% to 48% in the years from 2016 to 2018. Significant ORs were noted for chicken production type, season and chicken origin.The proportion of C. coli with resistance to CIP was higher in samples from free range and organic birds, from summer and autumn and from non-UK chicken. Analysis of the genome sequence data from 2018-2020 also found an increased percentage of C. coli with resistance to CIP in isolates from free range compared to standard chicken (p < 0.0001). Similarly, C. coli with resistance to CIP predicted by genome sequence data were more common in isolates from free range compared to standard chicken carcases from UK slaughterhouses in 2012-2015 (p < 0.0001). Including the sample category did not improve the overall fit of the multivariable model, however the results of the univariate analysis showed that isolates from portions were significantly less likely to have CIP resistance than isolates from whole birds (OR = 0.66, 95% CI 0.54-0.81; p<0.001). However, after adjusting for year category, sample category was not significantly associated with CIP resistance (OR = 0.88, 95% CI 0.71-1.11; p = 0.285).

Resistance to NAL in C. coli showed a similar increasing trend as for CIP (Figure 4) from 2001 to 2018 with an increase over time from 16% of isolates with resistance to NAL in 2001 to 50% in 2017. Similar to the data for resistance to CIP there was no significant change in the percentage of isolates with resistance to NAL in the time period from 2014 to 2018.

Figure 4. Trend in the percentages of nalidixic acid (NAL) resistant C. coli isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2001 and 2018.
 

Figure 4. Scatter plot showing the trend in the percentages of nalidixic acid (NAL) resistant C. coli isolates from chicken in UK retail and slaughterhouse samples from 2001 to 2018. The prevalence of resistance increased  significantly over time, from 16% in 2001 to 50% in 2017. The final datapoint in 2018 fell to 43% but the 95% confidence interval was wide (17% to 69%)

As expected the analysis for resistance to NAL in C. coli showed similar results as those observed for resistance to CIP (Table 8). In the multivariate analysis the year category of isolation, production type, season, sample category and chicken origin remained significant. The year category had the largest odds ratio and from the years 2001-2005 the percentage of C. coli with resistance to NAL increased from 22% to 47% in the years 2016 to 2018. Lower significant odds ratios were noted for production type, season, sample type and chicken origin, where the percentages of C. coli with resistance to NAL were lower for standard birds, in spring months, for caecal samples and for UK produced chicken.  

Table 8. Results of uni- and multivariable logistic regression analyses to identify significant risk factors for nalidixic acid (NAL) resistance (based on phenotype data) amongst C. coli isolates sampled at UK retail and slaughterhouses between 2001 and 2018. 

NAL category factors Number of isolates Percentage resistant Unadjusted OR (95% CI) p value Adjusted OR (95% CI) p value
2001-2005 590 22% 1 (ref) NA 1 (ref) NA
2006-2010 1,034 35% 2.0 (1.6-2.5) <0.001 1.8 (1.4-2.3) <0.001
2011-2015 164 52% 3.9 (2.7-5.6) <0.001 3.4 (2.3-5.1) <0.001
2016-2018 209 47% 3.2 (2.3-4.5) <0.001 2.5 (1.7-3.6) <0.001
Standard 1,661 31% 1 (ref) NA 1 (ref) NA
Free range 245 47% 2.0 (1.5-2.6) <0.001 1.7 (1.3-2.3) <0.001
Organic 77 48% 2.1 (1.3-3.3) 0.002 2.2 (1.4-3.5) 0.001
Unknown 14 43% 1.7 (0.6-4.8) 0.343 1.8 (0.6-5.5) 0.267
Spring 565 24% 1 (ref) NA 1 (ref) NA
Summer 649 36% 1.7 (1.3-2.2) <0.001 1.4 (1.1-1.8) 0.017
Autumn 513 41% 2.1 (1.6-2.8) <0.001 1.7 (1.3-2.3) <0.001
Winter 270 36% 1.7 (0.9-1.9) 0.001 1.3 (0.9-1.9) 0.112
Whole 1,199 37% 1 (ref) NA 1 (ref) NA
Portion 663 28% 0.7 (0.5-0.8) <0.001 1.0 (0.8-1.2) 0.782
Caeca 133 31% 0.8 (0.5-1.1) 0.165 0.6 (0.4-0.9) 0.024
Unknown 2 0% NA NA NA NA
UK 1,878 33% 1 (ref) NA 1 (ref) NA
Non-UK 92 42% 1.5 (1.0-2.2) 0.074 2.0 (1.3-3.0) 0.003
Unknown 27 26% 0.7 (0.3-1.7) 0.420 1.0 (0.4-2.5) 1
Total 1,997 34% NA NA NA NA

5.2.1 C Jejuni

The percentages of C. jejuni isolates from UK chicken from 2001 to 2018 with resistance to ERY are shown in Figure 5. The percentage of C. jejuni isolates with resistance to ERY did not show a significant increasing trend of over time with resistance below 5% in all years. The highest percentage was detected in 2008 with 4% of isolates showing resistance to ERY.

Figure 5. Trend in the percentages of erythromycin (ERY) resistant C. jejuni isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2001 and 2020. Orange circles are based on phenotypic data. The crosses represent percentages of resistant isolates based on the presence of genetic determinants predicting resistance to ERY. Note no error bars applicable for datapoints with no resistant isolates.
 

Figure 5. Scatter plot showing the percentages of C. jejuni isolates with resistance to erythromycin (ERY) from UK retail and slaughterhouse chicken samples from 2001 to 2020. Resistance was below 5% across all years with no clear increasing or decreasing trend over time. Genetic determinants predicting resistance to ERY was not detected in any of 773 isolates tested from 2018 to 2020.

Results for the percentages of isolates with resistance to ERY based genome sequence data were consistent with the results based on the phenotypic data (Figure 5). In the most recent samples from 2018 to 2020 no resistance to ERY was detected in 773 C. jejuni isolates tested (95% CI 0.00-0.48). This supported the phenotypic results from previous years showing very low percentages of resistance to ERY in C. jejuni isolates since 2014. In the multivariate analysis the year category of isolation, sample state and season remained significant. The year category had the largest odds ratio and in the years 2006-2010 the percentage of C. jejuni with resistance to ERY was 3.6% compared to less than 2% in the years before or after. Lower odds ratios were noted for sample state and season, where the percentages of C. jejuni with resistance to ERY were lower for fresh samples and for samples tested in autumn months. Including sample country of origin did not include the overall fit of the multivariable model, however the results of the univariate analysis showed that non-UK chicken were significantly more likely to have ERY resistance than UK chicken (OR = 3.20, 95% CI 1.52-6.74; p=0.002). However, after adjusting for sample state (fresh/frozen), origin was not significantly associated with ERY resistance (OR = 1.81, 95% CI 0.76-4.29; p=0.179). 

Table 9. Results of uni- and multivariable logistic regression analyses to identify risk factors for erythromycin (ERY) resistance amongst C. jejuni isolates sampled at UK retail and slaughterhouses between 2001 and 2018. 

ERY category factors Number of isolates Percentage resistant Unadjusted OR (95% CI) p value Adjusted OR (95% CI) p value
2001-2005 1,612 0.6% 1 (ref) NA 1 (ref) NA
206-2010 1,530 3.6% 6.0 (3.0-11.8) <0.001 8.6 (4.2-17.5) <0.001
2011-2015 726 0.3% 0.4 (0.1-2.0) 0.293 0.9 (4.2-17.5) 0.914
2016-2018 1,401 1.2% 2.0 (0.9-4.3) 0.091 3.6 (1.6-8.5) 0.003
Fresh 4,919 1.4% 1 (ref) NA 1 (ref) NA
Frozen 348 4.3% 3.2 (1.8-5.6) <0.001 3.5 (1.9-6.4) <0.001
Unknown 2 0% NA NA NA NA
Spring 1,940 1.9% 1 (ref) NA 1 (ref) NA
Summer 1,284 1.5% 0.8 (0.4-1.3) 0.364 0.6 (0.3-1.1) 0.085
Autumn 1,180 0.6% 0.3 (0.1-0.7) 0.004 0.3 (0.1-0.6) 0.001
Winter 865 2.4% 1.3 (0.7-2.2) 0.372 0.8 (0.5-1.4) 0.455
Total 5,269 1.6% NA NA NA NA

5.2.2 C.coli

There was no increasing trend in the percentages of C. coli isolates with resistance to ERY over time (Figure 6). The percentages with resistance to ERY were low except for data from 2007 and 2008 where level of resistance was moderate. There was a change in the threshold concentration used to distinguish resistant and sensitive isolates from 2009. The impact of the adjustments was a 25% reduction in the proportion of resistant isolates as can be seen from the adjusted vs. unadjusted values plotted (Figure 6).

Figure 6. Trend in the percentages of erythromycin (ERY) resistant C. coli isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2001 and 2020. Blue circles are based on phenotypic data. The black dots represent adjusted percentages of resistant isolates to account for the change in threshold concentration used in earlier compared to the later years. The crosses represent percentages of resistant isolates based on the presence of genetic determinants predicting resistance to ERY. Note no error bars applicable for datapoints with no resistant isolates. 

Percentages of the C. coli isolates with resistance to erythromycin (ERY) from UK retail and slaughterhouse chicken samples from 2001 to 2020. Between 2001 and 2008, resistance was between 0% and 15%. Resistance was also below 10% from 2012 to 2018. Thresholds were adjusted for samples taken prior to 2009 and from retail samples in 2014, due to changes in methodology. On average, from 2018 to 2020 the percentage of isolates with genetic determinants predicting resistance to ERY was 2%.

When considering the adjusted percentages there was no clear trend for resistance to ERY with resistance below 15% in all years and below 10% since 2014. More recent results based on prediction of resistance to ERY from genome sequence data in isolates from retail chicken in the UK showed that the percentage of isolates with determinants predicting resistance to ERY was detected in 1.96% of samples tested from 2018 to 2020 (n = 255; 95% CI 0.64-4.52). This supported the phenotypic results showing no significant increase in the percentage of C. coli isolates with resistance to ERY since 2014.
The univariate and multivariate analysis (based on the unadjusted values) demonstrated that there was no significant difference in the percentage of C. coli isolates with resistance to ERY between seasons but the year of isolation, production method and sample type remained significant (Table 10). The year category had the largest odds ratio and in the years 2006-2010 the percentage of C. coli with resistance to ERY was 19% compared to 5-7% in the years before or after, however it should be noted adjusted data for the earlier time period was could not be included in the regression analysis. Applying the adjustment to the percentage found in the earlier years would reduce the percentage to 14%.

Table 10. Results of uni- and multivariable logistic regression analyses to identify risk factors for erythromycin (ERY) resistance (based on phenotype data) amongst C. coli isolates sampled at UK retail  and slaughterhouses between 2001 and 2018. 

ERY category factors Number of isolates Percentage resistant Unadjusted OR (95% CI) p value Adjusted OR (95% CI) p value
2001-2005 590 7% 1 (ref) NA 1 (ref) NA
2006-2010 1,034 19% 3.1 (2.2-4.4) <0.001 3.6 (2.5-5.1) <0.001
2011-2015 164 5% 0.7 (0.3-1.5) 0.311 1.1 (0.5-2.3) 0.895
2016-2018 209 7% 1.0 (0.5-1.9) 0.978 1.3 (0.7-2.5) 0.413
Standard 1,661 15% 1 (ref) NA 1 (ref) NA
Free range 245 6% 0.4 (0.2-01.6) <0.001 0.4 (0.2-0.7) 0.002
Organic 77 4% 0.2 (0.1-0.8) 0.015 0.3 (0.1-0.9) 0.036
Unknown 14 29% 2.3 (0.7-7.5) 0.152 2.7 (0.8-9.3) 0.118
Whole 1,199 13% 1 (ref) NA 1 (ref) NA
Portion 663 16% 1.3 (1.0-1.7) 0.077 1.2 (0.9-1.5) 0.298
Caeca 133 1% 0.1 (0.0-0.4) 0.003 0.0 (0.0-0.3) 0.001
Unknown 2 0% NA NA NA NA
Total 1,997 13% NA NA NA NA

A lower odds ratio was noted for C. coli with resistance to ERY in samples from free-range and organic chicken. However, in neither of the data sets where ERY resistance was predicted from genome sequence data (the 2012-2015 data from slaughterhouse samples and in the retail data from 2018-2020) was there a significant difference between samples from free range and standard retail chicken. Lower odds ratios were noted for C. coli with resistance to ERY in samples from caecal samples. Including sample origin (UK/non-UK) did not improve the overall fit of the multivariable model to the data, however the results of the univariate analysis showed that non-UK birds were significantly more likely to have ERY resistance than UK birds (OR = 1.78, 95% CI 1.05-3.00; p=0.031). However, after adjusting for sample category (which was included in the multivariable model), origin was not significantly associated with ERY resistance (OR = 1.65, 95% CI 0.98-2.78; p=0.062).

5.3.1 C. jejuni

The percentage of C. jejuni isolates from UK chicken from 2001 to 2020 with resistance to tetracycline (TET) is shown in Figure 7. 

Figure 7. Trend in the percentages of tetracycline (TET) resistant C. jejuni isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2001 and 2020. Orange circles are based on phenotypic data. The black dots represent adjusted percentages of resistant isolates to account for the higher threshold concentration used in earlier compared to the later years. The crosses represent percentages of resistant isolates based on the presence of genetic determinants predicting resistance to TET.
 

Scatter plot showing the percentages of the C. jejuni isolates with resistance to tetracycline (TET) from UK retail and slaughterhouse chicken samples from 2001 to 2020. Thresholds were adjusted for samples taken prior to 2009 due to changes in methodology, but the adjustments were negligible. The trend increases significantly over time, from 27% in 2001, to 66% in 2018. In samples tested from 2018 to 2020 the percentage of isolates with genetic determinants predicting resistance to TET was detected in 51%.

The level of TET increased significantly over time, from 27% in 2001 to 66% in 2018. There was a stable level of resistance to TET in C. jejuni in the years from 2014 to 2020. The impact of the adjustments made for the percentages of resistant isolates in the years before 2009 was negligible as can be seen from the adjusted vs. the unadjusted values. Results for percentages of isolates with resistance to TET based on genome sequence data from additional samples were consistent with the results based on the phenotypic data. 

The percentage of isolates with genetic determinants predicting resistance to TET was detected in 61.4% of samples tested from 2018 to 2020 (n = 773; 95% CI 57.8-64.8) similar to the percentages based on phenotypic testing from 2014 to 2018, showing no significant (Fisher exact test) change in the percentage of C. jejuni isolates with resistance to TET since 2014.

In the multivariate analysis the year category of isolation, sample state, season and sample category remained significant (Table 11). The year category had the largest odds ratio and from the years 2001-2005 the percentage of C. jejuni with resistance to TET increased from 32% to 57% in years from 2016 to 2018. The lower odds ratios for resistance were noted for frozen samples relative to fresh samples, samples collected in summer relative to spring and in chicken portions relative to whole birds. Increased resistance to tetracycline was observed in C. jejuni collected in winter months relative to spring and in caecal sample relative to whole bird samples.

Including sample country of origin did not improve the overall fit of the multivariable model to the data, but the results of the univariate analysis showed that non-UK birds were significantly less likely to have resistance to TET than UK birds (OR 0.57, 0.41-0.78; p<0.001). However, after adjusting for either sample state category, year category or sample category, origin was no longer significantly associated with TET resistance (p>0.05).

Table 11. Results of uni- and multivariable logistic regression analyses to identify significant risk factors for tetracycline resistance (based on phenotypic data) amongst C. jejuni isolates sampled at UK retail and slaughterhouses between 2001 and 2018. 

TET category factors Number of isolates Percentage resistant Unadjusted OR (95% CI) p value Adjusted OR (95% CI) p value
2001-2005 1,612 32% 1 (ref) - 1 (ref) -
2006-2010 1,530 52% 2.3 (2.0-2.7) <0.001 2.0 (1.7-2.3) <0.001
2011-2015 726 61% 3.4 (2.8-4.0) <0.001 2.8 (2.2-3.4) <0.001
2016-2020 1,401 57% 2.9 (2.5-3.4) <0.001 2.3 (1.9-2.7) <0.001
Fresh 4,919 50% 1 (ref) - 1 (ref) -
Frozen 348 30% 0.4 (0.3-0.6) <0.001 0.7 (0.5-0.9) 0.002
Unknown 2 50% 1.0 (0.1-16.3) 0.989 1.0 (0.1-16.9) 0.976
Spring 1,940 44% 1 (ref) - 1 (ref) -
Summer 1,284 42% 1.0 (0.8-1.1) 0.504 0.7 (0.5-0.9) <0.001
Autumn 1,180 53% 1.4 (1.2-1.7) <0.001 0.9 (0.7-1.0) 0.111
Winter 865 61% 2.1 (1.7-2.4) <0.001 1.3 (1.1-1.6) 0.002
Whole 3,118 49% 1 (ref) - 1 (ref) -
Portion 1,224 35% 0.6 (0.5-0.6) <0.001 0.8 (0.7-0.9) 0.003
Caeca 909 62% 1.7 (1.2-2.0) <0.001 1.3 (1.2-1.6) <0.001
Unknown 18 17% 0.2 (0.1-0.7) 0.012 0.3 (0.1-1.2) 0.094
Total 5,269 48% - - - -

5.3.2 C. coli

The percentage of C. coli isolates from UK chicken from 2001 to 2018 with resistance to TET is shown in Figure 8. The percentage of C. coli isolates with resistance to TET increased significantly over time, from 23% in 2001, to over 55% in all years after 2013. However, there was no increasing trend in the percentage of C. coli with resistance to TET in the years from 2014 to 2018. The impact of the adjustments made for the percentages of resistant isolates in the years before 2009 was negligible as can be seen from the adjusted vs. the unadjusted values. Results for the percentages of isolates with resistance to TET based genome sequence data were consistent with the results based on the phenotypic data (Figure 8).

Figure 8. Trend in the percentages of tetracycline (TET) resistant C. coli isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2001 and 2020. Blue circles are based on phenotypic data. The black dots represent adjusted percentages of resistant isolates to account for the higher threshold concentration used in earlier compared to the later years. The crosses represent percentages of resistant isolates based on the presence of genetic determinants for TET resistance.

Figure 8. Scatter plot showing the percentages of C. coli isolates with resistance to tetracycline (TET) from UK retail and slaughterhouse chicken samples from 2001 to 2020. Thresholds were adjusted for samples taken prior to 2009 due to changes in methodology, but the adjustments were negligible. The prevalence of resistance increased significantly over time, from below 15% in 2001 to over 50% in 2017. In samples tested from 2018 to 2020 the percentage of isolates with genetic determinants predicting resis

The percentage of isolates with genetic determinants predicting resistance to TET was detected in 66.3% of samples tested from 2018 to 2020 (n = 255; 95% CI: 60.1-72.1) similar to the percentages based on phenotypic testing from 2014 to 2018, showing no significant change in the percentage of isolates with resistance to TET since 2014.

In the multivariate analysis the sample year category, production type and season remained significant factors associated with TET resistance (Table 12). The year category had the largest odds ratio and from the years 2001-2005 the percentage of C. coli with resistance to TET increased from 32% to 60-65% in years from 2011 to 2018.

Table 12. Results of uni- and multivariable logistic regression analyses to identify significant risk factors for tetracycline (TET) resistance (based on phenotype data) amongst C. coli isolates sampled at UK retail and slaughterhouses between 2001 and 2018. 

TET category factors Number of isolates Percentage resistant Unadjusted OR (95%, CI) p value Adjusted OR (95% CI) p value
2001-2005 590 32% 1 (ref) NA 1 (ref) NA
2006-2010 1,034 52% 2.3 (1.9-2.8) <0.001 2.0 (1.6-2.5) <0.001
2011-2015 164 65% 4.0 (2.7-5.7) <0.001 3.0 (2.1-4.4) <0.001
2016-2020 209 60% 3.2 (2.3-4.4) <0.001 2.4 (1.7-3.4) <0.001
Standard 1,661 46v 1 (ref) NA 1 (ref) NA
Free range 245 62% 1.9 (1.5-2.5) <0.001 1.7 (1.3-2.3) <0.001
Organic 77 53% 1.3 (0.8-2.1) 0.214 1.4 (0.9-2.3) 0.142
Unknown 14 36% 0.7 (0.2-2.0) 0.445 0.7 (0.2-2.0) 0.483
Spring 565 36% 1 (ref) NA 1 (ref) NA
Summer 649 51% 1.8 (1.4-2.3) <0.001 1.4 (1.1-1.8) 0.009
Autumn 513 57% 2.3 (1.8-2.9) <0.001 1.6 (1.3-2.2) <0.001
Winter 270 50% 1.7 (1.3-2.3) <0.001 1.2 (0.9-1.7) 0.233
Total 1,997 48%  NA NA NA NA


Higher odds ratios were noted in free range relative to standard chicken and for summer and autumn relative to spring. Analysis of the genome sequence data (taking into account isolates from carcasses sampled at UK slaughterhouses in 2012-2015 and from retail chicken between 2018-2020) also found a significant difference (p = 0.02; Fishers exact test) in the percentage of C. coli with resistance to TET in free range compared to chicken from standard production. Including sample category did not improve the overall fit of the multivariable model to the data, but the results of the univariate analysis showed that portions were significantly less likely to have TET resistance than samples from whole birds (OR 0.64, 0.52-0.77; p < 0.001).  However, after adjusting for year category, production type and season (which were included in the multivariable model), sample category was not significantly associated with TET resistance (OR 0.84, 0.68-1.03; p = 0.101).

5.4.1 Resistance to gentamicin

Resistance to gentamicin (GEN) was detected in two (0.04%; 95%CI: 0.00-0.14%) of the 5,269 C. jejuni isolates from 2001-2018 based on phenotypic data. One of these isolates originated from a whole frozen chicken collected at retail in 2005, the other from a caecal sample collected from a slaughterhouse in 2018. Additional results based on prediction of resistance to GEN from genome sequence data were also considered. No genetic determinants predicting resistance to GEN was detected in a total of 1,626 C. jejuni isolates from chicken samples between 2012 and 2020 (95% CI: 0.00-0.23%).

Resistance to GEN was detected two of the 2,034 C. coli isolates (0.10%; 95% CI: 0.01-0.35%) from 2001 and 2018, tested by phenotypic methods. Both isolates originated from frozen chicken breast portions labelled as of UK origin and collected at retail in 2001. Additional results based on prediction of resistance to GEN from genome sequence data in C. coli isolates from samples of chicken were also considered. No genetic determinants predicting resistance to GEN was detected in a total of 474 isolates from chicken samples obtained between 2012 and 2020 (95% CI: 0.00-0.78%). Due to this very rare occurrence of resistance to GEN no figures for trends nor multivariable analysis were included in this study.

5.4.2 Resistance to streptomycin C jejuni

There was no significant increase or decrease in the percentages of C. jejuni isolates with resistance to STR over the time period analysed (Figure 9). Resistance was zero or below 1% between 2007 and 2016 and 1.4% in 2017 (95% CI 0.5-2.4). Recent results based on prediction of resistance to STR from sequence data in C. jejuni isolates from samples of chicken at retail sale tested between 2018 and 2020 showed resistance to STR in three isolates (0.4%).

Figure 9. Trend in the percentages of streptomycin (STR) resistant C. jejuni isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2001 and 2020. Orange circles are based on phenotypic data. The crosses represent percentages of STR resistant isolates based on the presence of genetic determinants. Note no error bars applicable for datapoints with no resistant isolates.
 

Figure 9. Scatter plot showing the percentages of C. jejuni isolates with resistance to streptomycin (STR) from UK retail and slaughterhouse chicken samples from 2001 to 2020. Resistance was not significantly different between the years, with 0% or below 1% between 2007 and 2016, to 1.4% and 2.5% in 2017 and 2018 (with 95% confidence interval of 0.5%-2.4% and 0.5%-4.6%, respectively). In samples from 2018 to 2020 the percentage of isolates with genetic determinants predicting resistance to STR was 0.4%.

5.4.3 Resistance to streptomycin in C coli

There was no significant increase or decrease in the percentage of C. coli isolates with resistance to STR in the data analysed (Figure 10).  Resistance ranged from 2% to 15% between 2007 and 2017, with no apparent temporal trend. Recent results based on prediction of resistance to STR from genome sequence data in C. coli isolates from chicken at retail samples in the UK detected 16 isolates with resistance to STR (6.3%; 95% CI 3.3-9.5) in samples tested between 2018 and 2020.

Figure 10. Trend in the percentages of streptomycin (STR) resistant C. coli isolates from chicken sampled at slaughterhouses and at the point of retail in UK between 2007 and 2020. Blue circles are based on phenotypic data. The crosses represent percentages of resistant isolates based on the presence of genetic determinants predicting resistance to STR. Note that no error bars were applicable for data points with no resistant isolates. 

Figure 10. Scatter plot showing the percentages of C. coli isolates with resistance to streptomycin (STR) from UK retail and slaughterhouse chicken samples from 2001 to 2020. Resistance ranges from 2% to 15% between 2007 and 2017, with no apparent temporal trend. In samples tested from 2018 to 2020 the percentage of isolates with genetic determinants predicting resistance to STR was around 6%.

5.5 Multidrug resistance

Multidrug resistance (MDR), defined as reduced susceptibility to at least three unrelated antimicrobial classes of drugs (guided by the definition from EFSA/ECDC), was found in 136 of the C. coli (6.8%) and 42 of the C. jejuni (0.8%) isolates based on phenotypic data. The proportion of MDR isolates detected in chicken samples originating in the UK, compared to those originating outside the UK was explored. Non-UK samples were predominately included in datasets prior to 2009. All UK (n = 4,435) and non-UK (n = 262) samples collected between 2001 and 2008, were examined. Significantly more non-UK samples had MDR profiles (4.96%) than samples originating in the UK (2.28%) (p = 0.012; Fisher’s exact test). 

5.5.1 C jejuni

There were very few observations of MDR in C. jejuni, with a study average based on phenotype data of just 0.8%. There was no evidence to suggest that MDR had increased in C. jejuni over the study period from 2001 to 2020 (Table 13). 

Table 13. Number of C. jejuni isolates with multidrug resistant (MDR; defined as resistance to three or more unrelated antimicrobials) profiles (percentage resistant (R), 95% confidence intervals (CI)).

Time period Total number of MDR isolates resistant to STR ERY and TET (%R, 95% CI) Number of isolates resistant to STR ERY and TET (%R, 95% CI) Number of isolates resistant to ERY TET and CIP (%R, 95% CI) Number of isolates resistant to STR TET and CIP (%R, 95% CI)
2001-2005 2 (0.1, 0-0.3) 0 (0, 0-0) 2 (0.1, 0-0.3) 0 (0, 0-0)
2006-2010 16 (1, 0.5-1.6) 0 (0, 0-0) 15 (1, 0.5-1.5) 1 (0.1, 0.1-0.2)
2011-2015 2 (0.3, 0.1-0.7) 0 (0, 0-0) 2 (0.3, 0.1-0.7) 0 (0, 0-0)
2016-2018 22 (1.6, 0.9-2.2) 1 (0.1, 0.1-0.2) 5 (0.4, 0-0.7) 16 (1.1, 0.6-1.7)
All years 42 (0.8, 0.6-1) 1 (0,0-0.1) 24 (0.5, 0.3-0.6) 17 (0.3, 0.2-0.5)

None of the C. jejuni isolates tested had simultaneous resistance to CIP, ERY, STR and TET or to CIP, ERY and STR. The percentages of isolates with co-resistance to CIP and ERY varied between 0.2% (95% CI 0.0-0.4) in the time period from 2001-2005 to 1.8% (95% CI 0.0-0.4) in the time period from 2006 to 2010 and was 0.7% (95% CI 0.5-1.0) in the recent period from 2016-2018. Of the 1,636 C. jejuni isolates from 2012 to 2020 examined by genome sequencing none were co-resistant to CIP and ERY but three isolates were resistant to STR, TET and CIP (one from a retail sample in 2018 and two from retail samples in 2020).

5.5.2 C. coli

There was no evidence from this study to suggest that MDR had increased in C. coli during the study period from 2001 to 2020 (Table 14). However, the proportion of MDR isolates based on phenotypic data alone was significantly higher within C. coli (6.8%) compared to within C. jejuni (0.8%) (p < 0.001; Fishers exact test). The most common resistance profile detected was simultaneous resistance to CIP, ERY and TET

Table 14. Number of C. coli isolates with multidrug resistant (MDR; defined as resistance to three or more unrelated antimicrobials) profiles (percentage resistant (R), 95% confidence intervals (CI)).

Time period Total number of MDR isolates (%R, 95% CI) Number of isolates resistant to STR ERY, TET, CIP (%R, 95% CI) Number of isolates resistant to STR ERY and TET (%R, 95% CI) Number of isolates resistant to ERY TET and CIP(%R, 95% CI) Number of isolates resistant to STR, TET, CIP (%R, 95% CI) Number of isolates resistant to STR ERY and CIP (%R, 95% CI)
2001-2005 11 (1.9, 0.8-3) 0 (0,0-0) 0 (0,0-0) 11 (1.9, 0.8-3.0) 0 (0,0-0) 0 (0,0-0)
2006-2010 86 (8.3, 6.6-10) 0 (0,0-0) 0 (0,0-0) 83 (8, 6.4-9.7) 3 (0.3, 0-0.6) 0 (0,0-0)
2011-2015 21 (12.8, 7.7-17.9) 3 (1.8, 0.2-3.9) 3 (1.8, 0.2-3.9) 7 (4.3, 1.2-7.4) 17 (10.4, 5.7-15) 3 (1.8, 0.2-3.9)
2016-2018 18 (8.6, 4.8-12.4) 1 (0.5, 0.5-1.4) 1 (0.5, 0.5-1.4) 4 (1.9, 0.1-3.8) 15 (7.2 3.7-10.7) 1 (0.5, 0.5-1.4)
All years  136 (6.8, 5.7-7.9) 4 (0.2, 0-0.4) 4 (0.2, 0-0.40 105 (5.3, 4.3-6.2) 35 (1.8, 1.2-2.3) 4 (0.2, 0-0.4)


The percentages of isolates that were (solely) co-resistant to CIP and ERY varied between a low of 1.9% (95% CI 0.8-3.0) in the time period from 2001-2005 to 9.5% (95% CI 7.7-11.3) in the years from 2006 to 2010 and was 6.1% (95% CI 5.0-7.1) in recent years from 2016-2018. Of the 464 C. coli isolates from 2012 to 2020 examined by genome sequencing none were exclusively co-resistant to CIP and ERY but 26 isolates were resistant to STR, TET and CIP and five were resistant to CIP, ERY and TET while two isolates were resistant to CIP, ERY, STR and TET.