2023
DOI: 10.1093/jamiaopen/ooad091
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Prediction of short-acting beta-agonist usage in patients with asthma using temporal-convolutional neural networks

Nicholas Hirons,
Angier Allen,
Noah Matsuyoshi
et al.

Abstract: Objective Changes in short-acting beta-agonist (SABA) use are an important signal of asthma control and risk of asthma exacerbations. Inhaler sensors passively capture SABA use and may provide longitudinal data to identify at-riskpatients. We evaluate the performance of several ML models in predicting daily SABA use for participants with asthma and determine relevant features for predictive accuracy. Methods Participants with… Show more

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