Customer Company Size
Large Corporate
Region
- Europe
Product
- DSS
Tech Stack
- Machine Learning
Implementation Scale
- Enterprise-wide Deployment
Impact Metrics
- Cost Savings
- Productivity Improvements
Technology Category
- Analytics & Modeling - Machine Learning
Applicable Industries
- Healthcare & Hospitals
Applicable Functions
- Quality Assurance
Use Cases
- Predictive Quality Analytics
Services
- Data Science Services
About The Customer
The customer is a major hospital located in Western Europe. The hospital employs more than 2300 people and is committed to improving clinical outcomes while enhancing their ability to compete on cost. They were interested in adopting an Accountable Care Organization (ACO) model and were facing challenges in accurately measuring physician and healthcare organizations' performances due to uncoordinated heterogeneous data sources and poor quality data. The hospital estimated that administering the wrong care at the wrong time represented upward of $1.6M loss per year.
The Challenge
The customer, a major hospital in Western Europe, was facing challenges in accurately measuring physician and healthcare organizations' performances due to uncoordinated heterogeneous data sources, irregular and poor quality data, insufficient risk-adjustment of results, and lack of automation in physician profiling processes. They were seeking to embrace an Accountable Care Organization (ACO) model to improve clinical outcomes and compete on cost. Some clinical processes, like prescribing expensive or unnecessary drugs or recommending longer hospital stays than needed, were costly and detrimental to patient care. The customer estimated that administering the wrong care at the wrong time represented upward of $1.6M loss per year, a problem that they believed could be solved with accurate physician profiling.
The Solution
The customer's quality manager team built a data service with DSS that automatically cleans and aggregates various datasets (claims, patient, physician, and Rx data). The aggregated data enabled them to identify precisely which patient, treatments, and outcomes are linked to which physician processes. A machine learning algorithm was integrated at the center of this DSS-powered data service, enabling them to isolate patterns that reveal specific impacts on patient health outcome. When the model processes new incoming data from the various systems, practices ranging from drug prescriptions to hospitalization time are scored depending on how detrimental or beneficial they are in terms of cost and specific patient health.
Operational Impact
Quantitative Benefit
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