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Activity Number: 297 - Recent Statistical Advances for Mobile Health
Type: Invited
Date/Time: Wednesday, August 11, 2021 : 3:30 PM to 5:20 PM
Sponsor: Biometrics Section
Abstract #319187
Title: Safe learning methods for mHealth
Author(s): Eric Laber*
Companies: Duke University
Keywords:
Abstract:

An optimal mHealth strategy for type I diabetes (T1D) maximizes longterm patient health by tailoring recommendations for diet, exercise, and insulin uptake to the unique biology and evolving health status of each patient. We develop a response-adaptive randomization method that learns an optimal intervention strategy while controlling the risk of adverse events. The method, which uses a variant of Thompson Sampling (TS) to facilitate learning, maximizes efficiency while providing strict controls on the probability of an adverse event and, in this way, aligns with the Neyman-Pearson framework in testing and classification. Thus, we term the method Neyman-Pearson Thompson Sampling (NP-TS). We illustrate the application of NP-TS using data from a pilot mHealth study on T1D.


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