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Daily Arxiv

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Food safety trends across Europe: insights from the 392-million-entry CompreHensive European Food Safety (CHEFS) database

Created by
  • Haebom

Author

Nehir Kizililsoley, Floor van Meer, Osman Mutlu, Wouter F Hoenderdaal, Rosan G. Hob e, Wenjuan Mu, Arjen Gerssen, HJ van der Fels-Klerx, Akos J o zwiak, Ioannis Manikas, Ali H urriyeto\v{g}lu, Bas HM van der Velden

Outline

The European Union (EU) food safety monitoring data, which includes 392 million analyses of more than 15.2 million samples, is publicly available on Zenodo. However, it is divided into about 1,000 files, making it difficult to access and analyze. In this paper, we introduce the CompreHensive European Food Safety (CHEFS) database, which integrates EU food safety monitoring data. CHEFS integrates and structures data on pesticide residues, veterinary drug residues, and chemical contaminants. The data is analyzed from 2000 to 2024 to analyze changes in monitoring activities, the most tested products, non-compliant products, the most common contaminants, and differences between countries. This highlights the CHEFS database as a centralized data source and strategic tool for food safety policy, research, and regulation.

Takeaways, Limitations

Takeaways:
Improving accessibility and analysis of EU food safety monitoring data.
Support for food safety trend analysis, risk prediction, and establishment of early warning systems.
Providing a strategic tool for food safety policy, research and regulation.
Ability to analyze differences in food safety monitoring across countries.
Limitations:
The need for continuous updating and maintenance of the database.
The need to verify the completeness and accuracy of data.
Further research is needed to determine the generalizability of the results.
Need for expertise in data interpretation and utilization.
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