Prediction of short-acting beta-agonist usage in patients with asthma using temporal-convolutional neural networks

Author:

Hirons Nicholas1,Allen Angier2ORCID,Matsuyoshi Noah1,Su Jason3,Kaye Leanne2ORCID,Barrett Meredith A2

Affiliation:

1. Propeller Health , San Francisco, CA, United States

2. ResMed Science Center , San Diego, CA, United States

3. School of Public Health, University of California Berkeley , Berkeley, CA, United States

Abstract

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 self-reported asthma enrolled in a digital health platform (Propeller Health, WI), which included a smartphone application and inhaler sensors that collected the date and time of SABA use. Linear regression, random forests, and temporal convolutional networks (TCN) were applied to predict expected SABA puffs/person/day from SABA usage and environmental triggers. The models were compared with a simple baseline model using explained variance (R2), as well as using average precision (AP) and area under the receiving operator characteristic curve (ROC AUC) for predicting days with ≥1–10 puffs. Results Data included 1.2 million days of data from 13 202 participants. A TCN outperformed other models in predicting puff count (R2 = 0.562) and day-over-day change in puff count (R2 = 0.344). The TCN predicted days with ≥10 puffs with an ROC AUC score of 0.952 and an AP of 0.762 for predicting a day with ≥1 puffs. SABA use over the preceding 7 days had the highest feature importance, with a smaller but meaningful contribution from air pollutant features. Conclusion Predicted SABA use may serve as a valuable forward-looking signal to inform early clinical intervention and self-management. Further validation with known exacerbation events is needed.

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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