Characterize Disease Progression Subphenotypes in Real World Populations with Overweight and Obesity using a Graph-based Neural Network Framework

Nov 26, 2025medRxiv : the preprint server for health sciences

Identifying Patterns of Disease Progression in Overweight and Obese People Using a Graph-Based Neural Network

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Abstract

Among 237,103 adults with overweight or obesity, 43.6% were identified as having a progressive obesity trajectory.

  • Three distinct obesity progression subphenotypes were identified: a progressive group, an intermediate group, and a stable group.
  • The progressive group showed greater baseline multimorbidity and a decline in socioeconomic status over time.
  • Significant differences in the risk of developing obesity-associated comorbidities and all-cause mortality were observed among the subphenotypes.
  • GLP-1 receptor agonist use was linked to a lower risk of heart failure in two of the subphenotypes.
  • A possible increase in chronic kidney disease risk was noted in the progressive group associated with GLP-1 receptor agonist use.

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