| Literature DB >> 27314510 |
Eric D Ebel, Michael S Williams, Dana Cole, Curtis C Travis, Karl C Klontz, Neal J Golden, Robert M Hoekstra.
Abstract
Outbreak data have been used to estimate the proportion of illnesses attributable to different foods. Applying outbreak-based attribution estimates to nonoutbreak foodborne illnesses requires an assumption of similar exposure pathways for outbreak and sporadic illnesses. This assumption cannot be tested, but other comparisons can assess its veracity. Our study compares demographic, clinical, temporal, and geographic characteristics of outbreak and sporadic illnesses from Campylobacter, Escherichia coli O157, Listeria, and Salmonella bacteria ascertained by the Foodborne Diseases Active Surveillance Network (FoodNet). Differences among FoodNet sites in outbreak and sporadic illnesses might reflect differences in surveillance practices. For Campylobacter, Listeria, and Escherichia coli O157, outbreak and sporadic illnesses are similar for severity, sex, and age. For Salmonella, outbreak and sporadic illnesses are similar for severity and sex. Nevertheless, the percentage of outbreak illnesses in the youngest age category was lower. Therefore, we do not reject the assumption that outbreak and sporadic illnesses are similar.Entities:
Keywords: Campylobacter; Escherichia coli O157; FoodNet; Foodborne Diseases Active Surveillance Network; Listeria; Salmonella; bacteria; disease outbreaks; enteric infections; foodborne diseases; sporadic
Mesh:
Year: 2016 PMID: 27314510 PMCID: PMC4918141 DOI: 10.3201/eid2207.150833
Source DB: PubMed Journal: Emerg Infect Dis ISSN: 1080-6040 Impact factor: 6.883
Number of outbreak cases versus sporadic cases and outbreak fraction, FoodNet data, United States, 2004–2011*
| Pathogen | Outbreak cases | Sporadic cases | Outbreak fraction, % |
|---|---|---|---|
|
| 195 | 42,744 | 0.5 |
| 730 | 3,117 | 19.0 | |
|
| 56 | 1,024 | 5.2 |
|
| 3,161 | 50,690 | 5.9 |
*Representing 101,717 reports with complete data for all study variables out of 110,157 total reports. FoodNet, Foodborne Diseases Active Surveillance Network.
Figure 1Quintile categorization of season and age for persons with foodborne illness included in the analysis of Foodborne Diseases Active Surveillance Network (FoodNet) data, United States, 2004–2011.
Percentage of cases and total number of cases identified as outbreak-associated, by target pathogen and selected characteristics, FoodNet data, United States, 2004–2011*
| Characteristic | % Outbreak cases (no. total observations) | |||
|---|---|---|---|---|
|
|
|
| ||
| FoodNet site | ||||
| California | 0.1 (5,552) | 1.5 (264) | 1.7 (115) | 3.0 (3,764) |
| Colorado | 1.0 (3,391) | 38.9 (319) | 33.3 (72) | 8.6 (2,491) |
| Connecticut | 0.0 (3,689) | 17.0 (277) | 0.0 (148) | 6.5 (3,335) |
| Georgia | 0.2 (4,815) | 8.4 (261) | 0.0 (176) | 2.6 (17,215) |
| Maryland | 0.6 (2,920) | 13.0 (200) | 0.7 (140) | 4.3 (6,020) |
| Minnesota | 0.5 (7,308) | 20.1 (1,078) | 3.4 (58) | 10.3 (5,379) |
| New Mexico | 0.8 (2,640) | 10.9 (92) | 34.9 (43) | 9.3 (2,497) |
| New York | 0.4 (4,277) | 22.9 (393) | 3.7 (136) | 8.2 (3,772) |
| Oregon | 0.9 (5,147) | 25.5 (545) | 8.1 (86) | 20.5 (3,067) |
| Tennessee | 0.4 (3,200) | 12.2 (418) | 0.0 (106) | 3.0 (6,311) |
| Year | ||||
| 2004 | 0.2 (4,770) | 9.0 (387) | 0.8 (119) | 6.0 (5,676) |
| 2005 | 0.7 (5,009) | 22.7 (467) | 1.5 (136) | 4.3 (5,982) |
| 2006 | 0.7 (4,903) | 15.9 (567) | 4.4 (137) | 7.6 (5,901) |
| 2007 | 0.1 (5,377) | 17.8 (546) | 0.0 (122) | 6.2 (6,540) |
| 2008 | 0.6 (5,291) | 25.8 (516) | 0.0 (134) | 7.9 (7,214) |
| 2009 | 0.3 (5,546) | 26.4 (458) | 0.0 (157) | 5.5 (6,844) |
| 2010 | 0.4 (5,852) | 21.1 (445) | 2.3 (131) | 5.2 (8,073) |
| 2011 | 0.6 (6,191) | 11.7 (461) | 30.6 (144) | 4.6 (7,621) |
| Age quintile | ||||
| 1 | 0.7 (8,563) | 20.6 (766) | 2.3 (214) | 2.2 (10,838) |
| 2 | 0.7 (8,614) | 18.1 (768) | 4.6 (216) | 4.4 (10,666) |
| 3 | 0.3 (8,428) | 19.3 (774) | 5.1 (216) | 9.2 (10,686) |
| 4 | 0.3 (8,634) | 19.6 (765) | 5.5 (218) | 7.7 (10,758) |
| 5 | 0.3 (8,700) | 17.3 (774) | 8.3 (216) | 6.0 (10,903) |
| Season quintile | ||||
| 1 | 0.4 (8,552) | 18.6 (774) | 2.3 (218) | 6.9 (10,962) |
| 2 | 0.4 (8,761) | 19.8 (773) | 0.9 (215) | 7.6 (10,804) |
| 3 | 0.6 (8,545) | 18.8 (775) | 4.1 (218) | 5.8 (10,773) |
| 4 | 0.6 (8,666) | 20.1 (770) | 16.1 (217) | 4.3 (10,671) |
| 5 | 0.2 (8,415) | 17.5 (755) | 2.4 (212) | 4.7 (10,641) |
| Sex | ||||
| F | 0.4 (19,317) | 19.4 (2,030) | 6.4 (577) | 6.1 (28,102) |
| M | 0.4 (23,622) | 18.4 (1,817) | 3.8 (503) | 5.4 (25,749) |
| Hospitalized | ||||
| No | 0.5 (35,962) | 20.1 (2,145) | 4.1 (74) | 6.3 (38,321) |
| Yes | 0.3 (6,977) | 17.5 (1,702) | 5.3 (1,006) | 4.8 (15,530) |
*Age of persons with cases and season of specimen submission are classified by quintile of reported age and quintile of the day of year of the specimen submission date. FoodNet, Foodborne Diseases Active Surveillance Network.
Figure 2Patterns of the Bayesian information criterion (BIC) statistic as a function of the number of model parameters are shown for the four pathogens included in the analysis of Foodborne Diseases Active Surveillance Network (FoodNet) data, United States, 2004–2011. A) Campylobacter; B) Escherichia coli O157; C) Listeria; D) Salmonella. The BIC decreases to a minimum value and then increases as model complexity (as measured by the number of model parameters) increases.
Figure 3Residual plots relative to fitted estimates of outbreak-associated case frequency for the best-fitting models used in the analysis of Foodborne Diseases Active Surveillance Network (FoodNet) data, United States, 2004–2011. A) Campylobacter; B) Escherichia coli O157; C) Listeria; D) Salmonella. Generally, all 4 pathogen models demonstrate reasonable fit because the studentized residuals ([observed frequency – predicted frequency of outbreak-associated cases]/SE of predicted frequency) are mostly within 3 SD of the predicted mean frequency of outbreak-associated cases. The state variable is the only factor in the Campylobacter model, whereas year is included in the E. coli O157 and Listeria models. The Salmonella model includes state, year, season, age, and interaction terms.
Figure 4Interaction plots from the best-fitting Salmonella logistic regression model used in the analysis of Foodborne Diseases Active Surveillance Network (FoodNet) data, United States, 2004–2011. A) Year versus state; B) season versus state; C) year versus season; D) year versus age. The y-axis is the proportion of outbreak-associated cases. Crossing lines indicate interactions between 2 factors for the proportion of outbreak-associated case.