Adapting an Artificial Intelligence Sexually Transmitted Diseases Symptom Checker Tool for Mpox Detection: The HeHealth Experience
Rayner Kay Jin Tan, Dilruk Perera, Salomi Arasaratnam, Yudara, Kularathne

TL;DR
This study describes the adaptation of an AI-based STD symptom checker into a tool for Mpox detection, demonstrating high accuracy and discussing implementation challenges during an outbreak.
Contribution
The paper presents a novel adaptation of an existing AI STD screening tool for Mpox detection, including development, validation, and deployment during an outbreak.
Findings
87% accuracy to rule in Mpox
90% accuracy to rule out Mpox
Analyzed 21,000 images from users
Abstract
Artificial Intelligence applications have shown promise in the management of pandemics and have been widely used to assist the identification, classification, and diagnosis of medical images. In response to the global outbreak of Monkeypox (Mpox), the HeHealth.ai team leveraged an existing tool to screen for sexually transmitted diseases to develop a digital screening test for symptomatic Mpox through AI approaches. Prior to the global outbreak of Mpox, the team developed a smartphone app, where app users can use their own smartphone cameras to take pictures of their own penises to screen for symptomatic STD. The AI model was initially developed using 5000 cases and use a modified convolutional neural network to output prediction scores across visually diagnosable penis pathologies including Syphilis, Herpes Simplex Virus, and Human Papilloma Virus. From June 2022 to October 2022, a…
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Taxonomy
TopicsVirology and Viral Diseases · Poxvirus research and outbreaks
MethodsSpatial-Channel Token Distillation
