April 24, 2019
1PM CDT // 11 AM PDT

Patient 360 and Opioid Fraud with Graph & ML

April 24, 2019 - 1 PM CDT // 11 AM PDT

Join us for our upcoming online seminar to learn how to unlock patient 360 & prevent opioid fraud with graph & ML technology. We will be discussing how graph-based Patient 360 breaks silos and enables analytics to discover more efficient operations, better healthcare outcomes, and fraud detection.

Cut Costs & Prevent Fraud with Graph Technology & ML Analytics

Copyright © 2019 Expero - All rights reserved.

Patient 360 and Opioid Fraud with Graph & ML

April 24, 2019 - 1 PM CDT // 11 AM PDT

Join us for our upcoming online seminar to learn how to unlock patient 360 & prevent opioid fraud with graph & ML technology. We will be discussing how graph-based Patient 360 breaks silos and enables analytics to discover more efficient operations, better healthcare outcomes, and fraud detection.

 Cut Costs & Prevent Fraud with Graph Technology & ML Analytics

What You Will Learn

  • Full Patient 360 - Tie all aspects of the patient together and identify relationships. Use Graph & Time Series to view history and identify with ML patterns.
  • Churn Prevention - Data segmentation, analytics for historical data and pattern views. 
  • Sentiment Tracking & Patient Care Analysis - Analytics to navigate your data and track patient care.
  • Identification of Claim Anomalies - Fast, impactful analysis of data for anomaly detection.
  • Member Care & Doctor Abuse Detection - Intervention and Graph relationship management for cause and case tracking.
  • Influence Analysis - Most influential doctors + pharmacies;  most influential financial analysts.
  • Network Efficiency - Using graph to determine which networks are most efficient.
  • Working Prototypes - See graph and ML in action

What You Will Learn

  • Full Patient 360 - Tie all aspects of the patient together and identify relationships. Use Graph & Time Series to view history and identify with ML patterns.
  • Churn Prevention - Data segmentation, analytics for historical data and pattern views. 
  • Sentiment Tracking & Patient Care Analysis - Analytics to navigate your data and track patient care.
  • Identification of Claim Anomalies - Fast, impactful analysis of data for anomaly detection.
  • Member Care & Doctor Abuse Detection - Intervention and Graph relationship management for cause and case tracking.
  • Influence Analysis - Most influential doctors + pharmacies;  most influential financial analysts.
  • Network Efficiency - Using graph to determine which networks are most efficient.
  • Working Prototypes - See graph and ML in action

Healthcare Graph & ML

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