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Forbes Healthcare Summit
2014-12-03    
All Day
Forbes Healthcare Summit: Smart Data Transforming Lives How big will the data get? This year we may collect more data about the human body than [...]
Customer Analytics & Engagement in Health Insurance
2014-12-04 - 2014-12-05    
All Day
Using Data Analytics, Product Experience & Innovation to Build a Profitable Customer-Centric Strategy Takeaway business ROI: Drive business value with customer analytics: learn what every business [...]
mHealth Summit
DECEMBER 7-11, 2014 The mHealth Summit, the largest event of its kind, convenes a diverse international delegation to explore the limits of mobile and connected [...]
The 26th Annual IHI National Forum
Overview ​2014 marks the 26th anniversary of an event that has shaped the course of health care quality in profound, enduring ways — the Annual [...]
Why A Risk Assessment is NOT Enough
2014-12-09    
2:00 pm - 3:30 pm
A common misconception is that  “A risk assessment makes me HIPAA compliant” Sadly this thought can cost your practice more than taking no action at [...]
iHT2 Health IT Summit
2014-12-10 - 2014-12-11    
All Day
Each year, the Institute hosts a series of events & programs which promote improvements in the quality, safety, and efficiency of health care through information technology [...]
Design a premium health insurance plan that engages customers, retains subscribers and understands behaviors
2014-12-16    
11:30 am - 12:30 pm
Wed, Dec 17, 2014 1:00 AM - 2:00 AM IST Join our webinar with John Mills - UPMC, Tim Gilchrist - Columbia University HITLAP, and [...]
Events on 2014-12-03
Forbes Healthcare Summit
3 Dec 14
New York City
Events on 2014-12-04
Events on 2014-12-07
mHealth Summit
7 Dec 14
Washington
Events on 2014-12-09
Events on 2014-12-10
iHT2 Health IT Summit
10 Dec 14
Houston
Articles

Nov 29: Data Mining Snares Health Insurance Fraud

pediatric health insurance surveillance

As Medicare searches for ways to head off fraud, private payers are starting to embrace predictive modeling in their own quest to stamp out insurance fraud before claims are paid. “I think the big move on the payer side is to pre-pay,” according to Bill Fox, senior director of LexisNexis Health Care, a year-and-a-half-old division of online information giant LexisNexis, a subsidiary of Reed Elsevier. That means payers are trying to examine claims before the money goes out the door. “Virtually every big payer we talk to is thinking about it,” Fox told InformationWeek Healthcare.

LexisNexis is among those joining the movement to detect fraud with advanced data mining by building analytics and risk-management capabilities into its vast data platforms. The company has built databases on 250 million people in the U.S., culled from 35 billion public records, and now is applying its analytics capabilities to health insurance. The company analyzes its data using its supercomputer platform, which is built on top of high-performance computing cluster technology, and was made available earlier this year as an open-source platform through a new LexisNexis subsidiary called HPCC Systems. Fox says this allows for fast queries of “massive amounts of big data.” The technology helps disambiguate and link data, piecing together nuggets of information to reveal collusion, both proactively and after some evidence of wrongdoing has been found.

Such analysis looks for complex patterns in the diagnosis, treatment, and billing of patient encounters that aren’t easily spotted in traditional claims review.

In targeting health insurance fraud, LexisNexis looks at 15 to 18 metrics on claims and individual providers, then assigns a risk score to each healthcare provider. The system scouts for risks inherent in claims and risks inherent in each person, according to Fox, an attorney by trade who previously handled insurance fraud cases at a major law firm and has worked with the U.S. attorney’s office in Philadelphia to investigate white-collar crime, including cybercrime.

For years, payers have relied on claims edits to spot errors, but they haven’t been able to edit for patterns suggesting fraud because an edit focuses on a single claim and it’s impossible to identify a pattern with one claim. But predictive modeling and other analytics tools can scan a series of claims to flag individual physicians and coders for extra review, Fox said, allowing payers to incorporate extra edits into future claims.

“Predictive modeling looks at outliers,” Fox noted. Unusual values could indicate fraud or just simply improper coding or a physician who practices in a certain way, he said. In the past, there was no easy way of finding many errors and other unusual patterns that might merit further investigation.

Clients do tend to be payers, who are looking to stamp out waste and not be forced to pay for claims that they later learn to be improper. But Fox said that institutions such as large providers, integrated delivery networks, and accountable care organizations might be interested in this kind of service to avoid trouble with Medicare auditors and the U.S. Department of Justice as federal officials step up their anti-fraud activities.

With the advent of accountable care organizations and other elements of healthcare reform, financial risk is going to be shared among multiple entities, offering yet another reason to stamp out internal waste and fraud, according to Fox. “We’ll likely see more interest from providers,” he said.

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