Exploring Risk Factors of Recall-Associated Foodborne Disease Outbreaks in the United States, 2009–2019

Abstract

Earlier identification and removal of contaminated food products is crucial in reducing economic burdens of foodborne outbreaks. Recalls are a safety measure that is deployed to prevent foodborne illnesses. However, few studies have examined temporal trends in recalls or compared risk factors between non-recall and recall outbreaks in the United States, due to disparate and often incomplete surveillance records in publicly reported data. We demonstrated the usability of the electronic Foodborne Outbreak Reporting System (eFORS) and National Outbreak Reporting System (NORS) for describing temporal trends and outbreak risk factors of food recalls in 1998–2019. We examined monthly trends between surveillance systems by using segmented time-series analyses. We compared the risk factors (e.g., multistate outbreak, contamination supply chain stage, pathogen etiology, and food products) of recalls and non-recalls by using logistic regression models. Out of 22,972 outbreaks, 305 (1.3%) resulted in recalls and 9378 (41%) had missing recall information. However, outbreaks with missing recall information decreased at an accelerating rate of ~25%/month in 2004–2009 and at a decelerating rate of ~13%/month after the transition from eFORS to NORS in 2009–2019. Irrespective of the contaminant etiology, multistate outbreaks according to the residence of ill persons had odds 11.00–13.50 times (7.00, 21.60) that of single-state outbreaks resulting in a recall (p < 0.001) when controlling for all risk factors. Electronic reporting has improved the availability of food recall data, yet retrospective investigations of historical records are needed. The investigation of recalls enhances public health professionals’ understanding of their annual financial burden and improves outbreak prediction analytics to reduce the likelihood and severity of recalls.

Document Details

Document Type
Pub Defense Publication
Publication Date
Apr 19, 2022
Source ID
10.3390/ijerph19094947

Entities

People

  • Elena N. Naumova
  • Emily Sanchez
  • Lauren Sallade
  • Ryan Simpson
  • Yutong Zhang

Organizations

  • Army Medical Department
  • National Institute of Food and Agriculture
  • National Science Foundation
  • Office of the Director of National Intelligence
  • Tufts University
  • United States Department of Defense

Tags

Readers

  • Infectious Disease/Epidemiology
  • Logistics and Supply Chain Management.
  • Neural Network Machine Learning.

Technology Areas

  • Microelectronics