Using Momentary Assessment and Machine Learning to Identify Barriers to Self-management in Type 1 Diabetes: Observational Study.
Peng ZhangChristopher J FonnesbeckDouglas C SchmidtJules WhiteSamantha KleinbergShelagh A MulvaneyPublished in: JMIR mHealth and uHealth (2022)
Combining EMA data with machine learning methods showed promise in the relationship with risk for nonadherence. The next steps include collecting larger data sets that would more effectively power a classifier that can be deployed to infer individual behavior. Improvements in individual self-management insights, behavioral risk predictions, enhanced clinical decision-making, and just-in-time patient support in diabetes could result from this type of approach.