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PEER-REVIEWED STUDY
Date published: March 2022
This study evaluates machine learning models to predict A1c improvement and develop personalized recommendations for better clinical outcomes in a remote diabetes monitoring program. Read the full study in the Journal of Medical Internet Research.
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