Bayesian Joint Modeling for Disease Progression Prediction
Analysis
Key Takeaways
- •Proposes a Bayesian hierarchical joint modeling framework for longitudinal and survival data.
- •Addresses limitations of traditional two-stage methods.
- •Emphasizes predictive evaluation and clinical interpretability.
- •Demonstrates improved performance on simulated and real-world data.
- •Provides a tool for dynamic, patient-specific prognosis.
“The Bayesian joint model consistently outperforms conventional two-stage approaches in terms of parameter estimation accuracy and predictive performance.”