Predicting eating disorders from Internet activity.
Shiri Sadeh-SharvitEllen E Fitzsimmons-CraftCraig Barr TaylorElad Yom-TovPublished in: The International journal of eating disorders (2020)
ED risk or clinical status can be predicted via machine learning with moderate accuracy using Internet activity variables. This model, if replicated in larger samples where it demonstrates stronger predictive value, could identify populations where further assessment is merited. Future iterations could also inform tailored digital interventions, timed to be provided when target online behaviors occur, thereby potentially improving the well-being of many individuals who may otherwise remain undetected.