Insights Powered by Artificial Intelligence: Analyzing the Extent of Method Validation in Pesticide Residue Literature.

Journal: Journal of agricultural and food chemistry
Published Date:

Abstract

Validation of analytical methods to assess figures of merit and other key performance parameters is a fundamental requirement within the fitness-for-purpose concept. By combining generative AI and subject matter review, this perspective article provides insights into analytical trends, technological advancements, and the current state of analytical reporting with respect to validation of published pesticide residue methods involving mass spectrometry in agricultural applications. Reporting trends of analytical parameters and technological advancements were evaluated across a data set of 391 studies published in the from 1970 to 2024. This feasibility study demonstrated that with properly optimized prompts and performance verification, AI can efficiently and accurately evaluate scientific literature.

Authors

  • Leah S Riter
    Bayer U.S.─Crop Science, 700 Chesterfield Parkway West, Chesterfield, Missouri 63017, United States.
  • Steven J Lehotay
    U.S. Department of Agriculture, Agricultural Research Service, Eastern Regional Research Center, 600 East Mermaid Lane, Wyndmoor, Pennsylvania 19038, United States.
  • John Swarthout
    Bayer U.S.─Crop Science, 700 Chesterfield Parkway West, Chesterfield, Missouri 63017, United States.