White Alice, Cronquist Alicia, Bedrick Edward J, Scallan Elaine
1 Department of Epidemiology, Colorado School of Public Health, University of Colorado Denver , Aurora, Colorado.
2 Colorado Department of Public Health and Environment, Denver, Colorado.
Foodborne Pathog Dis. 2016 Oct;13(10):527-534. doi: 10.1089/fpd.2016.2140. Epub 2016 Aug 15.
Foodborne illness is a continuing public health problem in the United States. Although outbreak-associated illnesses represent a fraction of all foodborne illnesses, foodborne outbreak investigations provide critical information on the pathogens, foods, and food-pathogen pairs causing illness. Therefore, identification of a food source in an outbreak investigation is key to impacting food safety.
The objective of this study was to systematically identify outbreak-associated case demographic and outbreak characteristics that are predictive of food sources using Shiga toxin-producing Escherichia coli (STEC) outbreaks reported to Centers for Disease Control and Prevention (CDC) from 1998 to 2014 with a single ingredient identified.
Differences between STEC food sources by all candidate predictors were assessed univariately. Multinomial logistic regression was used to build a prediction model, which was internally validated using a split-sample approach.
There were 206 single-ingredient STEC outbreaks reported to CDC, including 125 (61%) beef outbreaks, 30 (14%) dairy outbreaks, and 51 (25%) vegetable outbreaks. The model differentiated food sources, with an overall sensitivity of 80% in the derivation set and 61% in the validation set.
This study demonstrates the feasibility for a tool for public health professionals to rule out food sources during hypothesis generation in foodborne outbreak investigation and to improve efficiency while complementing existing methods.
食源性疾病在美国仍然是一个公共卫生问题。尽管与疫情相关的疾病只占所有食源性疾病的一部分,但食源性疾病暴发调查能提供有关致病病原体、食品以及食品 - 病原体组合的关键信息。因此,在暴发调查中确定食物来源是影响食品安全的关键。
本研究的目的是利用1998年至2014年向美国疾病控制与预防中心(CDC)报告的、已确定单一成分的产志贺毒素大肠杆菌(STEC)疫情,系统地确定与疫情相关的病例人口统计学特征和疫情特征,这些特征可预测食物来源。
对所有候选预测因素在STEC食物来源方面的差异进行单变量评估。使用多项逻辑回归构建预测模型,并采用拆分样本方法进行内部验证。
向CDC报告的有206起单一成分STEC疫情,其中包括125起(61%)牛肉疫情、30起(14%)乳制品疫情和51起(25%)蔬菜疫情。该模型能够区分食物来源,在推导集中总体灵敏度为80%,在验证集中为61%。
本研究证明了开发一种工具的可行性,该工具可供公共卫生专业人员在食源性疾病暴发调查的假设生成过程中排除食物来源,提高效率,同时补充现有方法。