Peer-reviewed veterinary case report
Non-invasive AI system to detect cancer in dog skin lumps
By Dank, Gillian et al.·Published in Frontiers in veterinary science·2023·Koret School of Veterinary Medicine·View original on PubMed →
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Original publication title: A pilot study for a non-invasive system for detection of malignancy in canine subcutaneous and cutaneous masses using machine learning.
- Species:
- dog
Plain-English summary
A group of 45 dogs with skin lumps were tested using a new thermal imaging device called HT Vista, which uses artificial intelligence to help tell if a mass is benign or cancerous. The device measures the heat from the lump and surrounding healthy tissue, and the results were compared to traditional tests like cytology and biopsies. The HT Vista system showed a high accuracy rate of 90%, meaning it could be a helpful tool for vets in deciding whether further testing is needed for lumps. This technology could improve early cancer detection in dogs in the future.
People also search for: dog skin lump cancer detection · thermal imaging for dog tumors · how to tell if a dog lump is cancerous
Abstract
INTRODUCTION: Early diagnosis of cancer enhances treatment planning and improves prognosis. Many masses presenting to veterinary clinics are difficult to diagnose without using invasive, time-consuming, and costly tests. Our objective was to perform a preliminary proof-of-concept for the HT Vista device, a novel artificial intelligence-based thermal imaging system, developed and designed to differentiate benign from malignant, cutaneous and subcutaneous masses in dogs. METHODS: Forty-five dogs with a total of 69 masses were recruited. Each mass was clipped and heated by the HT Vista device. The heat emitted by the mass and its adjacent healthy tissue was automatically recorded using a built-in thermal camera. The thermal data from both areas were subsequently analyzed using an Artificial Intelligence algorithm. Cytology and/or biopsy results were later compared to the results obtained from the HT Vista system and used to train the algorithm. Validation was done using a "Leave One Out" cross-validation to determine the algorithm's performance. RESULTS: The accuracy, sensitivity, specificity, positive predictive value, and negative predictive value of the system were 90%, 93%, 88%, 83%, and 95%, respectively for all masses. CONCLUSION: We propose that this novel system, with further development, could be used to provide a decision-support tool enabling clinicians to differentiate between benign lesions and those requiring additional diagnostics. Our study also provides a proof-of-concept for ongoing prospective trials for cancer diagnosis using advanced thermodynamics and machine learning procedures in companion dogs.
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Search related cases →Original publication on PubMed: https://pubmed.ncbi.nlm.nih.gov/36777665/