This course equips attendees with a cutting-edge understanding and practical skills in AI, Generative AI, and Machine Learning for regulator-ready “Evidence of Compliance” in healthcare fraud, waste and abuse prevention and early detection. Participants will learn to analyze and predict fraud, enhance investigations, and automate processes.
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CEO and Founder, Lavelle and Associates, LLC, Atlanta, Georgia
Sr. Principal Consultant and Adjunct Professor
Former Chair of the Board and Faculty Member NHCAA
M.S., AHFI, CPC, ACFE
Consulting Partner – Sigmoid
Founder - AI&DA Insights
PHD, Data Mining, Machine Learning, Predictive Modelling, Temple University
MBA (ABD), Carnegie Melon University
MS in Computer Science & Engineering, University of Belgrade
Senior Vice President, Medical Investigation & Audit, National Health Insurance Company – Daman
MBA, University of North Dakota
B.Sc., Criminal Justice, North Dakota State University
Accredited Healthcare Fraud Investigator (AHFI), National Health Care Anti-Fraud Association
Certified Professional Coder (CPC), AAPC
Certified Forensic Interviewer, Center for Interviewer Standards and Assessment
This 4-day course unveils the power of AI, Generative AI, and Machine Learning in combating healthcare fraud, waste, and abuse. It focuses on prevention, early detection, and reporting, enabling participants to take a proactive approach in developing and implementing strategic plans. These efforts support the achievement of value-based healthcare while addressing requirements for evidence of compliance. We'll demonstrate how these technologies offer unparalleled insights, significantly enhancing your fraud, waste and abuse prevention and detection capabilities within the UAE and GCC.
Professionals from payers, TPAs, RCMs, healthcare providers,and regulatory bodies involved in:
Job Titles
Directors, Managers, and Supervisors from:
Regulations for Medical Audit and Recovery and how to use them to your advantage
Most Common Fraud Schemes
Analytics and AI
The Evolution of Use of Machine Intelligence for Fraud Detection by US Insurers
This block of instruction will track the actual history and development of data analytics through early use of computer technology, data-driven analytics, to supervised learning (edits), neural networks and finally the use of AI solutions.
Case studies from ten years’ experience with a large payer’s experimentation with vendors, data scientists and “home-grown” applications will be shared.
Emerging Trends in Healthcare Fraud: An Evolving International Landscape
Case studies from the most recent adjudicated criminal cases, with emphasis on transnational criminal organizations. Emphasis on the newest schemes, which involve fraudsters’ use of AI for manipulation of Electronic Health Records systems to drive inappropriate utilization of Medicare-covered products and services.
Beneficiary Fraud: Detection and Mitigation
Cases regarding beneficiary insurance “card sharing”, cloned medical records, the use of AI in medical imaging, false record creation, as well as misrepresented cosmetic treatments, falsification of diagnoses and kickbacks related to drugs, medical devices, durable medical equipment, and other products paid for by federal healthcare programs. Drug, device or biologics pricing, including arrangements for discounts, rebates, service fees, and formulary placement and price reporting. This final block will discuss the evolving and growing need for hospice care in the US, and the ensuing fraud and abuse by providers eroding this important benefit. Discussion of Home Health and Nursing Home abuse perpetuated by private equity firms. Use of data detection will be shared in case studies.
Emerging Trends & The Future of Healthcare Fraud Detection
Group exercise with the use of data utilization trending for identification of fraudulent “beta testing” in claims systems. Real-life data graphs will be presented for the participants to analyze and determine.
Hospice, Home Health Visits and Skilled Nursing Home Fraud and Abuse
This final block will discuss the evolving and growing need for hospice care in the US, and the ensuing fraud and abuse by providers eroding this important benefit. Discussion of Home Health and Nursing Home abuse perpetuated by private
equity firms. Use of data detection will be shared in case studies.
Quiz
The Evolving Fraud Landscape
The Power of Data Visualization – From Dashboards to Generative AI for EDA
Understanding Analytics: From Descriptive to Generative
The Spectrum of Analytics: Descriptive Analytics, Diagnostic Analytics, Predictive Analytics, Prescriptive Analytics, Generative Analytics
Basics of Predictive/Prescriptive Analytics (Machine Learning)
Diving into Generative AI, LLMs, and Agentic AI
Applications of ML/AI/GenAI to Healthcare Fraud Detection (Deep Dive)
Generating Business Rules & Data Preparation for AI Models
Building ML Models with Generative AI Assistance
Automating Fraud Detection with Agentic AI & Practical Schemes
Emerging Trends & The Future of Healthcare Fraud Detection
| Course Program | |
|---|---|
| Time | Topic |
| Day 1 | |
| 08:00 to 08:30 | Registration & Introduction |
| Day 1-4 | |
| 08:30 to 10:00 | Session One |
| 10:00 to 10:15 | Tea Break & Networking |
| 10:15 to 12:15 | Session Two |
| 12:15 to 13:00 | Lunch Break & Networking |
| 13:00 to 14:30 | Session Three |
| 15:00 to 15:15 | Tea Break and Networking |
| 15:15 to 16:30 | Session Four |