Peer-reviewed veterinary case report
A Non-Invasive Diagnostic Platform for Canine Leishmaniasis Using VOC Analysis and Distributed Veterinary Infrastructure
- Journal:
- Veterinary Sciences
- Year:
- 2025
- Authors:
- Marius Iulian Mihailescu et al.
- Affiliation:
- Faculty of Engineering and Computer Science, SPIRU HARET University, 47 Fabricii Street, 076144 Bucharest, Romania · CH
- Species:
- dog
Abstract
This article describes a new software architecture for the non-invasive detection of canine leishmaniasis disease. The proposed platform combines gas-sensing technologies, artificial intelligence (AI), and modular cloud-based software components to identify disease-specific volatile organic compounds (VOCs) found in dog breath and hair samples. The system, which has a multi-tier architecture that includes data collection, pre-processing, machine learning-based analysis, diagnosis-request processing, and user interfaces for veterinarians, faculty researchers, and dog owners, has been integrated into a Li-ion Power website plug-in. The primary goal of implementing the proposed platform is to detect parasites at any point they are infectious to a host. This includes detecting parasites at all stages of their life cycle, where they can infect a new host. In addition, this is crucial for accurate diagnosis, effective treatment, and preventing further transmission.
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Search related cases →Original publication: https://doi.org/10.3390/vetsci12080732