Case Study

Reducing Hospital Readmissions through Predictive Modeling

Using predictive analytics to identify high-risk patients and enable proactive care decisions.

The Challenge

Why It Matters

The Objective

Our Approach

Data Preparation

Developed relational database using a star schema model, enabling reliable analytics and scalable reporting.

Feature Engineering

Analyzed data to identify key patterns and engineered features to capture utilization and clinical risk drivers.

Predictive Modeling

Built machine learning models to predict readmission risk and support proactive care decisions.

Performance Tracking

Delivered insights through dashboards and reports to track key features and support data-driven decisions.

The Solution

Improved patient readmission risk identification

More efficient hospital resource allocation

Increased visibility into risk driver patterns

Better alignment between care, analytics, and decision-making

The Impact

Key Takeaways

Project Delivery Team

Kwame Boateng Akomeah, Dev Arora, Tony Lordson, and Anil Kumar Swamy Bandaru

Lewis University Capstone Project
New York SPARCS Data

Let’s solve a business problem with data