Personalized Deep Learning for Substance Use in Hawaii: Protocol for a Passive Sensing and Ecological Momentary Assessment Study

Feb 7, 2024JMIR research protocols

Using Personalized Deep Learning to Monitor Substance Use in Hawaii with Passive Sensing and Real-Time Surveys

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Abstract

Over 40 individuals have expressed interest in participating in a study to monitor methamphetamine cravings using wearable technology.

  • The study aims to assess the feasibility of continuous remote monitoring and real-time craving predictions in specific underrepresented communities.
  • A novel dataset will be created using Fitbit biosensor readings and participant-reported data on cravings and substance use.
  • Personalized AI models are expected to predict methamphetamine cravings more effectively than traditional methods by utilizing individual participant data.
  • Initial recruitment of participants has progressed with minimal logistical challenges.
  • Cultural and human factors influencing data annotation accuracy are being explored as part of the research.

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