CGM-JEPA: Learning Consistent Continuous Glucose Monitor Representations via Predictive Self-Supervised Pretraining
Hada Melino Muhammad, Zechen Li, Flora Salim, Ahmed A. Metwally

TL;DR
CGM-JEPA introduces a self-supervised learning framework for continuous glucose monitor data that produces transferable, high-level representations, improving predictive performance across different modalities and settings.
Contribution
It proposes a novel pretraining method predicting masked latent representations, enhancing transferability and robustness of CGM data representations across modalities and cohorts.
Findings
X-CGM-JEPA outperforms baselines in AUROC across regimes.
It reduces subgroup disparities in AUROC.
Distributional view improves label-aware clustering.
Abstract
Continuous Glucose Monitoring (CGM) can detect early metabolic subphenotypes (insulin resistance, IR; -cell dysfunction), but population-scale deployment faces two coupled problems. First, the same physiological state appears through multiple views (CGM time series, venous OGTT, Glucodensity summaries), so single-view representations fail to transfer when deployment shifts the modality or setting. Second, baselines perform inconsistently across these shifts. Both problems point to one remedy: representations that abstract away from any single view to capture higher-level temporal and distributional structure. We propose CGM-JEPA, a self-supervised pretraining framework which predicts masked latent representations rather than raw values, yielding abstraction that transfers across modalities. X-CGM-JEPA adds a masked Glucodensity cross-view objective for complementary…
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