Data Analytics in Food Safety: Improving Quality Control and Preventing Contamination
DOGHO, Moses Ohakumhe *
Youngstown State University-Ohio, United States.
Babatunde Ibrahim Ojoawo
Ohio University, Athens, United States.
*Author to whom correspondence should be addressed.
Abstract
Objective: This study examines the growing need for the application of data analytics in making food quality control easier, better, and safer. It looks into how new tools like predictive modeling, machine learning, and blockchain-based traceability systems can help prevent contamination and reduce foodborne outbreaks.
Study Design: A detailed review of existing literature, case studies, and relevant industry reports between 2019 and 2025 was carried out to assess the existing and potential impact of data analytics on food quality control and food safety.
Methodology: The research employs a qualitative approach, drawing insights from peer-reviewed journals, WHO outbreak records, industry whitepapers, and global case studies. Data visualization was also included to show relevant trends, technology gaps, and outbreak frequency.
Results: A review of high-profile outbreaks between 2019 and 2024 reveals a disturbing trend of repeat contamination incidents linked to dairy, poultry, and fresh produce. It also established that the rise in foodborne outbreaks was due to a number of reasons, like poor data infrastructure, low use of predictive technology, and disconnected traceable systems. The use of analytics and data analytics tools effectively helps us detect issues early, track contamination before it happens, and maintain a strong supply chain.
Conclusions: The application of data analytics is no longer a luxury; it is now a necessity that must be maximized to make food safer. As the global food industry becomes more complex and prone to contamination, using AI-driven predictive systems, blockchain traceability, and real-time analytics can significantly reduce outbreak risks. The future of food quality control relies on active data management, collaboration across sectors, and increased investment in smart farming technologies.
Keywords: Food safety, quality control, data analytics, predictive analytics, machine learning