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首页> 外文期刊>Journal of food protection >Development of a Salmonella Screening Tool for Consumer Complaint-Based Foodborne Illness Surveillance Systems
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Development of a Salmonella Screening Tool for Consumer Complaint-Based Foodborne Illness Surveillance Systems

机译:为基于消费者投诉的食源性疾病监测系统开发沙门氏菌筛查工具

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摘要

Foodborne illness surveillance based on consumer complaints detects outbreaks by finding common exposures among callers, but this process is often difficult. Laboratory testing of ill callers could also help identify potential outbreaks. However, collection of stool samples from all callers is not feasible. Methods to help screen calls for etiology are needed to increase the efficiency of complaint surveillance systems and increase the likelihood of detecting foodborne outbreaks caused by Salmonella. Data from the Minnesota Department of Health foodborne illness surveillance database (2000 to 2008) were analyzed. Complaints with identified etiologies were examined to create a predictive model for Salmonella. Bootstrap methods were used to internally validate the model. Seventy-one percent of complaints in the foodbome illness database with known etiologies were due to norovirus. The predictive model had a good discriminatory ability to identify Salmonella calls. Three cutoffs for the predictive model were tested: one that maximized sensitivity, one that maximized specificity, and one that maximized predictive ability, providing sensitivities and specificities of 32 and 96%, 100 and 54%, and 89 and 72%, respectively. Development of a predictive model for Salmonella could help screen calls for etiology. The cutoff that provided the best predictive ability for Salmonella corresponded to a caller reporting diarrhea and fever with no vomiting, and five or fewer people ill. Screening calls for etiology would help identify complaints for further follow-up and result in identifying Salmonella cases that would otherwise go unconfirmed; in turn, this could lead to the identification of more outbreaks.
机译:基于消费者投诉的食源性疾病监测通过在呼叫者中发现常见的暴露来检测暴发,但此过程通常很困难。对生病的人进行实验室测试也可以帮助确定潜在的疾病爆发。但是,从所有呼叫者收集粪便样本是不可行的。需要一种方法来筛查病因,以提高投诉监视系统的效率,并增加检测沙门氏菌引起的食源性暴发的可能性。分析了明尼苏达州卫生部食源性疾病监测数据库(2000年至2008年)的数据。检查具有确定病因的投诉,以创建沙门氏菌的预测模型。 Bootstrap方法用于内部验证模型。病因已知的foodbome疾病数据库中,有71%的投诉是由于诺如病毒引起的。预测模型具有很好的识别沙门氏菌的能力。测试了预测模型的三个临界值:一个最大化灵敏度,一个最大化特异性,另一个最大化预测能力,分别提供32和96%,100和54%以及89和72%的灵敏度和特异性。沙门氏菌预测模型的开发可以帮助筛选病因。为沙门氏菌提供最佳预测能力的临界值对应于呼叫者报告腹泻和发烧而没有呕吐,并且有五人或更少的病人生病。筛查病因的呼声将有助于识别出需要进一步跟踪的投诉,并有助于确定沙门氏菌病例,否则这些病例将无法得到证实;反过来,这可能会导致更多爆发的确定。

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  • 来源
    《Journal of food protection 》 |2011年第1期| p.106-110| 共5页
  • 作者单位

    University of Minnesota, 1158 Mayo MMC 807, 1158 Delaware Street S.E., Minneapolis, Minnesota 55455;

    University of Minnesota, 1158 Mayo MMC 807, 1158 Delaware Street S.E., Minneapolis, Minnesota 55455;

    Minnesota Department of Health, 625 Robert Street N., St. Paul, Minnesota 55164, USA;

    Minnesota Department of Health, 625 Robert Street N., St. Paul, Minnesota 55164, USA;

    University of Minnesota, 1158 Mayo MMC 807, 1158 Delaware Street S.E., Minneapolis, Minnesota 55455;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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