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Home / Lyme Research

Lyme Research

Automated Detection of Erythema Migrans in early Lyme disease, and Other Confounding Skin Lesions, via Deep Learning

Automated Detection of Erythema Migrans in early Lyme disease, and Other Confounding Skin Lesions, via Deep Learning

Recognition of the EM rash is crucial to early diagnosis and treatment. Improved rash recognition using deep learning methodology to prescreen patient rash photos may help prevent later serious manifestations of Lyme disease.

Filed Under: Lyme Disease Research, Lyme Disease Research News Tagged With: Lyme, Lyme Disease, Lyme Research

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