TEMPO: Transformers for Temporal Disease Progression from Cross-Sectional Data
arXiv cs.LG / 4/28/2026
📰 NewsModels & Research
Key Points
- The paper introduces TEMPO, a Transformer-based model for inferring temporal biomarker progression from cross-sectional patient data, aiming to overcome limitations of traditional event-based models that assume rigid structure and output only ordinal sequences.
- TEMPO learns both ordinal and continuous event sequences via simulation-based supervised learning, using two Transformer modules: one modeling biomarkers as tokens for event ordering and another modeling patients as tokens to estimate disease stage from per-biomarker abnormality profiles.
- On synthetic benchmarks, TEMPO substantially improves prediction quality over state-of-the-art SA-EBM, cutting normalized Kendall’s Tau distance by 52.89% and staging MAE by 25.33%, with even larger gains in high-dimensional settings.
- Applied to the ADNI dataset, TEMPO reproduces a biologically plausible Alzheimer’s progression pattern, including early medial temporal atrophy, followed by amyloid accumulation and cognitive decline, and later tau pathology with accelerated global neurodegeneration.
- The authors claim TEMPO avoids the need for custom inference algorithms and allows fast empirical comparisons among competing generative hypotheses.
Related Articles

Claude Haiku for Low-Cost AI Inference: Patterns from a Horse Racing Prediction System
Dev.to

How We Built an Ambient AI Clinical Documentation Pipeline (and Saved Doctors 8+ Hours a Week)
Dev.to

🦀 PicoClaw Deep Dive — A Field Guide to Building an Ultra-Light AI Agent in Go 🐹
Dev.to

Real-Time Monitoring for AI Agents: Beyond Log Streaming
Dev.to
Top 10 Physical AI Models Powering Real-World Robots in 2026
MarkTechPost