Text mining for disease surveillance in veterinary clinical data: part one, the language of veterinary clinical records and searching for words

Front Vet Sci. 2024 Jan 23:11:1352239. doi: 10.3389/fvets.2024.1352239. eCollection 2024.

Abstract

The development of natural language processing techniques for deriving useful information from unstructured clinical narratives is a fast-paced and rapidly evolving area of machine learning research. Large volumes of veterinary clinical narratives now exist curated by projects such as the Small Animal Veterinary Surveillance Network (SAVSNET) and VetCompass, and the application of such techniques to these datasets is already (and will continue to) improve our understanding of disease and disease patterns within veterinary medicine. In part one of this two part article series, we discuss the importance of understanding the lexical structure of clinical records and discuss the use of basic tools for filtering records based on key words and more complex rule based pattern matching approaches. We discuss the strengths and weaknesses of these approaches highlighting the on-going potential value in using these "traditional" approaches but ultimately recognizing that these approaches constrain how effectively information retrieval can be automated. This sets the scene for the introduction of machine-learning methodologies and the plethora of opportunities for automation of information extraction these present which is discussed in part two of the series.

Keywords: big data; clinical records; companion animals; machine learning; neural language modeling; text mining.

Grants and funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. Work for this review carried out by GA, GN, and MAC at Manchester University was funded by CWG grant from Dogs Trust (SAVSNET Agile) and Healtex: UK Healthcare Text Analytics Research Network (EP/N027280/1, EPSRC). HD was funded by University of Liverpool. P-JN was funded by CWG grant from Dogs Trust (SAVSNET Agile). SF was supervised by NAM on a BBSRC funded PhD studentship.