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Data mining for recognizing patterns in foodborne disease outbreaks
Authors:Maitri Thakur  Sigurdur Olafsson  Jong-Seok Lee  Charles R Hurburgh
Affiliation:1. Department of Agricultural and Biosystems Engineering, Iowa State University, Ames, IA 50011, United States;2. Department of Industrial and Manufacturing Systems Engineering, Iowa State University, Ames, IA 50011, United States;3. Department of Food Science and Human Nutrition, Iowa State University, Ames, IA 50011, United States
Abstract:This paper introduces a new methodology for discovering patterns in foodborne disease outbreaks using a data-driven approach. Specifically, our approach uses three data mining methods, namely attribute selection, decision tree learning, and association rule discovery, to extract previously unknown and meaningful patterns that connect specific types of foodborne diseases outbreaks with associated foods vehicles and consumption locations. We use this approach to study the four most common disease causing etiologies in the Center for Disease Control (CDC) database of foodborne disease outbreaks in the year 2006, namely Salmonella enteritidis, Salmonella typhimurium, Escherichia coli, and Norovirus. The analysis reveals numerous patterns of how each of these outbreaks types relates to specific foods and locations. The discovery of such patterns in foodborne disease outbreak data can be very useful is determination and implementation of suitable intervention techniques. In particular, if the associations between different food types and consumption locations are known then custom intervention techniques including specific training methods can be designed to train individuals in hygienic food handling, preparation, and consumption practices.
Keywords:Foodborne disease outbreaks  Surveillance databases  Data mining  Classification  Association rule mining  Attribute selection
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