2023
DOI: 10.1101/2023.07.17.549435
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Assessing generalizability of a dengue classifier across multiple datasets

Abstract: Background: Early diagnosis of dengue fever is important for individual treatment and monitoring disease prevalence in the population. To assist diagnosis, previous studies have proposed classification models to detect dengue from symptoms and clinical measurements. However, there has been little exploration of whether existing models can be used to make predictions for new populations. Methods: We trained logistic regression models on five publicly available dengue datasets from previous studies, using three … Show more

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