A multimodal sleep foundation model for disease prediction
Stanford University · Rigshospitalet · +6 more institutions
Abstract
Abstract Sleep is a fundamental biological process with broad implications for physical and mental health, yet its complex relationship with disease remains poorly understood. Polysomnography (PSG)—the gold standard for sleep analysis—captures rich physiological signals but is underutilized due to challenges in standardization, generalizability and multimodal integration. To address these challenges, we developed SleepFM, a multimodal sleep foundation model trained with a new contrastive learning approach that accommodates multiple PSG configurations. Trained on a curated dataset of over 585,000 hours of PSG recordings from approximately 65,000 participants across several cohorts, SleepFM produces latent sleep…
Citation impact
- FWCI
- 137.69
- Percentile
- 100%
- References
- 52
Authors
12Topics & keywords
- Generalizability theory
- Polysomnography
- Sleep (system call)
- Sleep apnea
- Disease
- Dementia
- Foundation (evidence)
- Stroke (engine)