Objective: Streamline and simplify medical and PMS data across all points of care to achieve strategic goals based on data insights and proven AI/ML models.
Key Challenges Addressed:
- Reduce un-necessary Inpatient and emergency room utilization
- Patients’ satisfaction on care services provided
- Identify and Retain patients on care plan by providing right care in first few period.
How do we address your challenges:
- Use of developed AI/ML models using amalgamated claims, EMR and SDoH data to predict member future cost and outcomes
- Unique Retraining strategy to improve model accuracy than industry standards (2-4x higher).
- Integrated library of modules with chronic models to support informed clinical decisions.
- Azure Cloud-enabled PaaS components for faster and scalable deployment.
Pilot Outcome:
- Identified the priority patients based on high cost and high utilization members
- Developed client’s goal specific and disease cohorts
- Ability to concentrate on high priority patients in turn reduced the patient churn and cost
Implementation Plan:
- Week 1-2: Spent on ‘Discovery’ to understand the business and data.
- Week 2-4: Build/configure data pipelines and execute pre-built AI/ML models. Enhance models if required.
- Week 5: Review final output, measure accuracy, create golden record & share results.
The solution is built on native Azure components to intelligently scale using below key components:
- Azure Data Factory: Data Ingestion and orchestration solution
- Azure Data Lake Storage Gen2 : Scalable, cost effective storage for big data analytics
- Azure Databricks: Fast and collaborative Apache Spark-based analytics service designed for data science and data engineering
- Azure Key Vault: For securely storing secrets and credentials
- Azure SQL DB : Scalable relational database service
- Azure WebApp : Scalable, managed service which hosts the front end application