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Transforming Medicine: Evidence-Driven mHealth
2015-09-30 - 2015-10-02    
8:00 am - 5:00 pm
September 30-October 2, 2015Digital Medicine 2015 Save the Date (PDF, 1.23 MB) Download the Scripps CME app to your smart phone and/or tablet for the conference [...]
Health 2.0 9th Annual Fall Conference
2015-10-04 - 2015-10-07    
All Day
October 4th - 7th, 2015 Join us for our 9th Annual Fall Conference, October 4-7th. Set over 3 1/2 days, the 9th Annual Fall Conference will [...]
2nd International Conference on Health Informatics and Technology
2015-10-05    
All Day
OMICS Group is one of leading scientific event organizer, conducting more than 100 Scientific Conferences around the world. It has about 30,000 editorial board members, [...]
MGMA 2015 Annual Conference
2015-10-11 - 2015-10-14    
All Day
In the business of care delivery®, you have to be ready for everything. As a valued member of your organization, you’re the person that others [...]
5th International Conference on Wireless Mobile Communication and Healthcare
2015-10-14 - 2015-10-16    
All Day
5th International Conference on Wireless Mobile Communication and Healthcare - "Transforming healthcare through innovations in mobile and wireless technologies" The fifth edition of MobiHealth proposes [...]
International Health and Wealth Conference
2015-10-15 - 2015-10-17    
All Day
The International Health and Wealth Conference (IHW) is one of the world's foremost events connecting Health and Wealth: the industries of healthcare, wellness, tourism, real [...]
Events on 2015-09-30
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MGMA 2015 Annual Conference
11 Oct 15
Nashville
Events on 2015-10-15
Latest News

Big Data Helps OmedaRx Improve Medication Adherence

icd 9 shortfalls

Like many pharmacy benefit management companies, OmedaRx has relied on population health analytics to help it ensure patients are taking the medications they need. But often, the information gleaned from the software is too general. Now, the company is implementing a new cloud-based system that uses big data, analytics and machine learning to create more precise, cost-effective care management plans aimed at producing better patient outcomes.

OmedaRx is the pharmacy benefit management company of Cambia Health Solutions, parent company of Regence Blue Cross Blue Shield, and manages the prescription plans to Regence health plan members in Oregon, Washington, Utah and Idaho.

A year ago, OmedaRx began piloting Max for Medication Adherence from analytics provider GNS Healthcare, another Cambia Health Solutions company. The system uses big data to identify individuals at risk of costly drug-related events because they aren’t adhering to the recommended timing and dosage of their medications.

The results to date have been impressive and this month OmedaRx is beginning a full-scale evaluation of the platform’s effectiveness, phasing in 500 patients every month for six months. The plan is to ultimately include OmedaRx’s entire Medicare population of about 120,000.

Also See:FDA Looks To Big Data To Protect Public Health

Poor medication adherence is relatively common, according to the U.S. Department of Health and Human Services’ Agency for Healthcare Research and Quality. Studies have shown that 20 to 30 percent of medication prescriptions are never filled and that, on average, 50 percent of medications for chronic disease are not taken as prescribed. Poor medication adherence drives $290 billion in avoidable health care costs, or about 13 percent of total U.S. healthcare expenditures, according to the New England Healthcare Institute, an independent, not-for-profit organization.

Medication management has evolved from intuition-based treatments to population health, which emerged in the mid-1990s with a top-down, rules-based approach that treats individuals as hypotheticals, says Colin Hill, chairman and CEO of GNS Healthcare.

But traditional methods to determine which patients to reach out to don’t target people who are at high risk of negative health consequences. For example, OmedaRx might now determine that 5,000 people need intervention. With big data and more advanced analytics, it’s possible to determine that only 700 are really at risk.

“If we can increase medical adherence in a high-risk patient, we expect that will reduce the negative outcomes and costs associated with that patient,” says OmedaRx VP Jim Carlson, who is a pharmacist by training. “When we are able to, by intervention, reduce the risk of negative health outcomes, this is the Holy Grail.”

The growth, and availability, of data is key to creating analytics applications that can refine and advance medication adherence programs. Another key is machine learning, which advances the type of questions that can be asked, and answered. Consider analysis that determines, in a specific population, that the cost to treat a patient’s diabetes has increased 50 percent over the last year. The next questions are why, and what are the correlations? After that, forecasting needs to be done to determine what happens if that trend continues.

With machine learning, an inference of cause and effect, known as causal inference, can be determined: What happens to the cost if a particular course of action is taken? What happens if another course is taken? This lets companies consider many different future paths and pick the best one. “Big Data is really the breakthrough,” says Hill. “We now have large enough and rich enough data to power up causal inference and decision optimization.”

OmedaRx began testing Max for Medication Adherence in a pilot with about 100 patients.

The program starts with OmedaRx sharing electronic feeds of its pharmacy claims data with GNS Healthcare, which combines it with electronic feeds of pharmacy and medical claims data from Cambia (and its insurance companies such as Regency BCBS) as well as consumer and demographics from third-party vendors including information clearinghouses. Much of the data OmedaRx sends to GNS Healthcare is structured, but GNS Healthcare also can work with unstructured data.

The data is fed into GNS Healthcare’s Max Solution Platform using a number of coding applications capable of handling the unique features of individual data sets. From there, the mixed data is used to develop computational models.

The data sets and analytics platform are housed in a GNS Healthcare data warehouse, MeasureBase. Analysts can query the data warehouse using GNS Healthcare’s  Measure Language, which uses its own straight-forward language  that the company says makes it easy to specify what they want to measure, on which people, over what time periods in simple terms – without writing SQL or database queries. The data warehouse is housed in a highly secure virtual private cloud operated by GNS Healthcare. The cloud employs a massively parallel cloud-based architecture made of multiple web-based servers, according to GNS Healthcare. All services have been approved under the Federal Risk and Authorization Management Program (FedRAMP) for Federal Information Security Management Act of 2002 (FISMA).

GNS Healthcare’s platform can synthesize trillions of data points coming from claims history, electronic medical records, socioeconomic and geographic data, consumer behavior data, genomics data, bioinformatics data and more, the company says.

The data is run through GNS Healthcare’s patented Reverse Engineering and Forward Simulation (REFS) machine learning and simulation engine within the Max Solution Platform, which analyzes and models the data sets as multidimensional observations about people over time. The engine learns by reverse-engineering collections of models and then simulates representations to generate predictions, including risks of negative outcomes such as adverse events. It also quantifies the effect of behavior changes, stratifies populations based on individuals’ likelihood to engage, measures the power of interventions to change behavior and matches individuals to the most cost-efficient and effective intervention.

GNS Healthcare routinely generates analytics reports and models for OmedaRx. The data can be presented in dashboards as well as in stratified lists of individuals and can include risks, efficacy that quantifies risk reduction resulting from behavior and clinical behavior changes.

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