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Mpox Detection Advanced: Rapid Epidemic Response Through Synthetic Data

Medicine and Health

Mpox Detection Advanced: Rapid Epidemic Response Through Synthetic Data

Y. Kularathne, P. Janitha, et al.

In a groundbreaking study by Yudara Kularathne, Prathapa Janitha, Sithira Ambepitiya, Prarththanan Sothyrajah, Thanveer Ahamed, and Dinuka Wijesundara, a computer vision model demonstrates how synthetic data can achieve remarkable accuracy in detecting Mpox lesions. This innovative approach reveals the potential for rapid response in medical emergencies with minimal data input.

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Playback language: English
Abstract
Rapid development of disease detection models using computer vision is crucial in responding to medical emergencies. Traditional data collection methods are often too slow, requiring innovative approaches for quick, reliable model generation from minimal data. This study introduces a novel approach by constructing a computer vision model to detect Mpox lesions using only synthetic data generated by diffusion models. The model achieved a 97% accuracy rate, with 96% precision and recall for Mpox cases, and similarly high metrics for normal and other skin disorder cases. The SynthVision methodology indicates the potential to develop accurate computer vision models with minimal data input for future medical emergencies.
Publisher
Published On
Authors
Yudara Kularathne, Prathapa Janitha, Sithira Ambepitiya, Prarththanan Sothyrajah, Thanveer Ahamed, Dinuka Wijesundara
Tags
computer vision
Mpox detection
synthetic data
diffusion models
medical emergencies
model accuracy
skin disorders
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