Peer-reviewed veterinary case report
Non-invasive core temperature check for cats and dogs using surface
By Zhao, Zimu et al.·Published in BMC veterinary research·2024·School of Information and Software Engineering, China·View original on PubMed →
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Original publication title: A non-invasive method to determine core temperature for cats and dogs using surface temperatures based on machine learning.
Plain-English summary
A study involving 200 cats and 200 dogs explored a new way to check their core body temperature without the need for rectal thermometers. Researchers used machine learning to predict core temperatures based on surface temperatures measured on the pets' bodies. The results showed that this method could accurately estimate core temperatures, with very small errors for both cats and dogs. This non-invasive approach could make it easier for veterinarians to monitor pets' health without causing discomfort.
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Abstract
BACKGROUND: Rectal temperature (RT) is an important index of core temperature, which has guiding significance for the diagnosis and treatment of pet diseases. OBJECTIVES: Development and evaluation of an alternative method based on machine learning to determine the core temperatures of cats and dogs using surface temperatures. ANIMALS: 200 cats and 200 dogs treated between March 2022 and May 2022. METHODS: A group of cats and dogs were included in this study. The core temperatures and surface body temperatures were measured. Multiple machine learning methods were trained using a cross-validation approach and evaluated in one retrospective testing set and one prospective testing set. RESULTS: The machine learning models could achieve promising performance in predicting the core temperatures of cats and dogs using surface temperatures. The root mean square errors (RMSE) were 0.25 and 0.15 for cats and dogs in the retrospective testing set, and 0.15 and 0.14 in the prospective testing set. CONCLUSION: The machine learning model could accurately predict core temperatures for companion animals of cats and dogs using easily obtained body surface temperatures.
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Search related cases →Original publication on PubMed: https://pubmed.ncbi.nlm.nih.gov/38745195/