An artificial intelligence-based diagnosis system for the identification of helminth parasitic infections in mithun and allied bovines
Jayanta Kumar Chamuah, Bikash Sarma, Angughali Aheto Sumi, Mahak Singh, Harshit Kumar, J. Arul Valan, S. Girish Patil

TL;DR
This paper introduces an AI system that automatically identifies parasitic infections in livestock, aiming to address a lack of veterinary expertise in India's NEH region.
Contribution
A novel CNN-based AI system for identifying 16 helminth parasites in livestock using standard and microscopic images.
Findings
The CNN model achieved 96% accuracy in identifying parasitic species from a dataset of over 5,334 images.
The system demonstrated consistent performance with an average accuracy of 0.9616 ± 0.0024 and high F1 scores.
A PHP-based web interface allows real-time predictions and flexible deployment for livestock health monitoring.
Abstract
This study presents a novel deep learning approach addressing the critical shortage of veterinary expertise in India’s North Eastern Hill (NEH) region through automated identification of parasitic infections in livestock. We developed a Convolutional Neural Network (CNN) architecture capable of analyzing both standard and microscopic images to identify and classify 16 distinct parasitic species. The model comprises four convolutional layers (32, 64, 128, 256 filters) with ReLU activation and MaxPooling for efficient feature extraction, followed by Dense layers and a Softmax classifier. The model was trained on a comprehensive dataset of over 5,334 annotated images, achieving 96% accuracy after 30 training epochs. To evaluate stability, it was trained ten times, yielding an average accuracy of 0.9616 ± 0.0024 (95% CI: [0.9601, 0.9630]), Macro F1 of 0.9527 ± 0.0021, and Weighted F1 of…
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Taxonomy
TopicsDigital Imaging for Blood Diseases · AI in cancer detection · Helminth infection and control
