Frontiers in Veterinary Science (Jul 2021)

Large-Scale Data Mining of Rapid Residue Detection Assay Data From HTML and PDF Documents: Improving Data Access and Visualization for Veterinarians

  • Majid Jaberi-Douraki,
  • Majid Jaberi-Douraki,
  • Majid Jaberi-Douraki,
  • Soudabeh Taghian Dinani,
  • Soudabeh Taghian Dinani,
  • Soudabeh Taghian Dinani,
  • Nuwan Indika Millagaha Gedara,
  • Nuwan Indika Millagaha Gedara,
  • Nuwan Indika Millagaha Gedara,
  • Xuan Xu,
  • Xuan Xu,
  • Xuan Xu,
  • Emily Richards,
  • Fiona Maunsell,
  • Nader Zad,
  • Nader Zad,
  • Nader Zad,
  • Lisa A. Tell

DOI
https://doi.org/10.3389/fvets.2021.674730
Journal volume & issue
Vol. 8

Abstract

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Extra-label drug use in food animal medicine is authorized by the US Animal Medicinal Drug Use Clarification Act (AMDUCA), and estimated withdrawal intervals are based on published scientific pharmacokinetic data. Occasionally there is a paucity of scientific data on which to base a withdrawal interval or a large number of animals being treated, driving the need to test for drug residues. Rapid assay commercial farm-side tests are essential for monitoring drug residues in animal products to protect human health. Active ingredients, sensitivity, matrices, and species that have been evaluated for commercial rapid assay tests are typically reported on manufacturers' websites or in PDF documents that are available to consumers but may require a special access request. Additionally, this information is not always correlated with FDA-approved tolerances. Furthermore, parameter changes for these tests can be very challenging to regularly identify, especially those listed on websites or in documents that are not publicly available. Therefore, artificial intelligence plays a critical role in efficiently extracting the data and ensure current information. Extracting tables from PDF and HTML documents has been investigated both by academia and commercial tool builders. Research in text mining of such documents has become a widespread yet challenging arena in implementing natural language programming. However, techniques of extracting tables are still in their infancy and being investigated and improved by researchers. In this study, we developed and evaluated a data-mining method for automatically extracting rapid assay data from electronic documents. Our automatic electronic data extraction method includes a software package module, a developed pattern recognition tool, and a data mining engine. Assay details were provided by several commercial entities that produce these rapid drug residue assay tests. During this study, we developed a real-time conversion system and method for reflowing contents in these files for accessibility practice and research data mining. Embedded information was extracted using an AI technology for text extraction and text mining to convert to structured formats. These data were then made available to veterinarians and producers via an online interface, allowing interactive searching and also presenting the commercial test assay parameters in reference to FDA-approved tolerances.

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