Using Wearable Passive Sensing to Predict Binge Eating in Response to Negative Affect Among Individuals With Transdiagnostic Binge Eating: Protocol for an Observational Study

Jul 6, 2023JMIR research protocols

Using Wearable Sensors to Predict Binge Eating Triggered by Negative Emotions in People with Various Binge Eating Patterns

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Abstract

Sensor features may distinguish positive and negative affect states in individuals with binge eating with greater than 60% accuracy.

  • Binge eating is linked to elevated negative affect, which can increase the risk of such eating behaviors.
  • Current methods, like ecological momentary assessment (EMA), rely on self-reported data and may miss physiological signals of affect.
  • Wearable sensors can continuously measure physiological markers such as heart rate and electrodermal activity, potentially improving real-time predictions of binge eating.
  • This study plans to recruit 30 individuals with binge eating to test the effectiveness of wearable sensor data in predicting binge eating episodes.
  • The integration of sensor data with EMA-reported negative affect aims to enhance prediction accuracy compared to EMA alone.

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