1. Provide precision care with personalized treatment and healthier outcomes
2. Discover new treatments and identify the right patient candidate profiles for each treatment
1. Optimize operations to deliver the best possible care at the lowest cost
2. Leverage connected devices for more patient insight and innovative treatment models
1. Identify signs of fraud, waste & abuse (FWA) early and take preventive measures
2. Improve patient safety through better determination of treatment criteria and risk factors
A provider used text analytics of patient comments to identify service problems and made improvements that boosted patient satisfaction levels.
A hospital made care recommendations using predictive models combining patient history with current diagnostics to improve outcomes.
A surgical center analyzed selected treatments and patients’ physical status to predict the optimal post-surgical care and speed recovery.
An insurer analyzed readmission data to determine root causes and took steps that reduced return visits to providers.
A provider significantly improved accuracy and speed of early sepsis identification, reducing false positives and triaging to focus on urgent cases, while slashing costs.
A major hospital operator used regional and seasonal illness and incident patterns to predict and optimize staffing for its distributed care centers.
An insurer improved its ability to predict prescription fraud by identifying new, indicative patterns such as unreasonable distance from doctor to pharmacy.
A provider can now better predict potential medication safety issues, such as detecting unnecessary or excessive opioid prescriptions for particular treatments.
Let us show you how data science can improve patient care with more efficient operations, to drive revenue, cut costs, and avoid risks.