Project Summary: Heart Failure Readmission & Resource Optimization
Predict readmission risk and forecast staffing resources to improve outcomes and reduce costs.
We built a healthcare-ready pipeline using MIMIC-IV to cohort heart failure patients, extract features, and train classification models (Logistic Regression, Random Forest, XGBoost) for 30-day readmission. A downstream regression estimates nursing hours by care level and length of stay to support staffing plans.
Highlights
- Clear cohorting and preprocessing strategy for reproducibility.
- Calibrated classification with AUROC/AUPRC tracking; regression uses MAE/RMSE.
- Operational framing with personas, KPIs, and pilot-to-scale roadmap.
Explore
- Overview: Heart Failure Readmission
- Technical: Data, models, pipeline
- Management: Delivery & risks
- Product: Personas, KPIs, roadmap
References
- Repository: cyranothebard/heart_failure_readmission
- Slide deck: Google Slides
This post summarizes key takeaways; see linked pages for details.