Classifying and quantifying changes in papilloedema using machine learning
Joseph Branco,
Jui-Kai Wang,
Tobias Elze
et al.
Abstract:BackgroundMachine learning (ML) can differentiate papilloedema from normal optic discs using fundus photos. Currently, papilloedema severity is assessed using the descriptive, ordinal Frisén scale. We hypothesise that ML can quantify papilloedema and detect a treatment effect on papilloedema due to idiopathic intracranial hypertension.MethodsWe trained a convolutional neural network to assign a Frisén grade to fundus photos taken from the Idiopathic Intracranial Hypertension Treatment Trial (IIHTT). We applied… Show more
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