G. Hurault, Elisa Domínguez-Hüttinger, S. Langan, H. Williams, R. Tanaka
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Personalized prediction of daily eczema severity scores using a mechanistic machine learning model
Atopic dermatitis (AD) is a chronic inflammatory skin disease with periods of flares and remission. Designing personalized treatment strategies for AD is challenging, given the apparent unpredictability and large variation in AD symptoms and treatment responses within and across individuals. Better prediction of AD severity over time for individual patients could help to select optimum timing and type of treatment for improving disease control.