PREBA: Surgical Duration Prediction via PCA-Weighted Retrieval-Augmented LLMs and Bayesian Averaging Aggregation
arXiv cs.LG / 3/17/2026
📰 NewsIdeas & Deep AnalysisTools & Practical UsageModels & Research
Key Points
- PREBA introduces a retrieval-augmented framework that grounds LLM-based surgical duration predictions in institution-specific clinical context using PCA-weighted retrieval and Bayesian averaging.
- The approach builds an evidence-based prompt from clinically similar historical cases and population priors to improve prediction calibration and clinical plausibility.
- It encodes heterogeneous clinical features into a unified representation for systematic retrieval and fuses multi-round LLM outputs with priors via Bayesian averaging.
- Empirical evaluation on two real-world datasets with three LLMs shows up to 40% MAE reduction and R^2 improving from -0.13 to 0.62, approaching supervised-method performance.
Related Articles

I built an online background remover and learned a lot from launching it
Dev.to
How AI is Transforming Dynamics 365 Business Central
Dev.to
Algorithmic Gaslighting: A Formal Legal Template to Fight AI Safety Pivots That Cause Psychological Harm
Reddit r/artificial
Do I need different approaches for different types of business information errors?
Dev.to
ShieldCortex: What We Learned Protecting AI Agent Memory
Dev.to