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12:00 AM - HLTH 2019
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01 Oct
2019-10-01 - 2019-10-02    
All Day
The UK’s leading health technology and smart health event, bringing together a specialist audience of over 4,000 health and care professionals covering IT and clinical [...]
08 Oct
2019-10-08 - 2019-10-09    
12:00 am
Looking to maximize the efficiency of your current Revenue Cycle solution? Join us as we present strategies for analyzing your MEDITECH Revenue Cycle, and learn from other [...]
2019 Southwest Dental Conference
2019-10-10 - 2019-10-11    
All Day
ABOUT 2019 SOUTHWEST DENTAL CONFERENCE For 91 years, the Southwest Dental Conference has been the meeting of choice for quality professional development and innovative educational [...]
Annual Conference & Exhibition Lyotalk USA 2019
2019-10-10 - 2019-10-11    
All Day
ABOUT ANNUAL CONFERENCE & EXHIBITION LYOTALK USA 2019 Lyotalk is USA’s largest annual conference on Lyophilization/Freeze Drying. Lyotalk attracts gathering from of 150+ experts from [...]
Lab Indonesia 2019
2019-10-10 - 2019-10-12    
All Day
ABOUT LAB INDONESIA 2019 LabAsia is Southeast Asia’s leading laboratory exhibition, serving as the region’s trade platform for laboratory equipment & services suppliers to engage [...]
30th International Conference on Clinical and Experimental Ophthalmology
2019-10-11 - 2019-10-12    
All Day
ABOUT 30TH INTERNATIONAL CONFERENCE ON CLINICAL AND EXPERIMENTAL OPHTHALMOLOGY The 30th International Conference on Clinical and Experimental Ophthalmology is going to be held during October [...]
7th International Conference on Cosmetology & Beauty 2019
Cosmetology and Beauty 2019 passionately welcomes each one of you to attend a global conference in the field of cosmetology which is held on October [...]
16 Oct
2019-10-16 - 2019-10-17    
All Day
ABOUT 17TH INTERNATIONAL CONFERENCE ON CANCER RESEARCH AND THERAPY Cancer Research Conference 2019 coordinates addressing the principal themes and in addition inevitable methodologies of oncology. [...]
Global Cardio Diabetes Conclave 2019
2019-10-18 - 2019-10-20    
All Day
ABOUT GLOBAL CARDIO DIABETES CONCLAVE 2019 A strong correlation between cardiovascular diseases and diabetes is now well established. The American Heart Association considers that individuals [...]
2019 Rehabilitation Medicine Society of Australia and New Zealand
2019-10-20 - 2019-10-23    
All Day
ABOUT 2019 REHABILITATION MEDICINE SOCIETY OF AUSTRALIA AND NEW ZEALAND On behalf of Rehabilitation Medicine Society of Australia and New Zealand (RMSANZ) and the organising [...]
21 Oct
2019-10-21 - 2019-10-23    
All Day
ABOUT GLOBAL CONFERENCE ON SURGERY AND ANESTHESIA (GCSA 2019) Global Conference on Surgery and Anesthesia (GCSA 2019) scheduled on October 21-23 2019 in Dubai, UAE [...]
21 Oct
2019-10-21 - 2019-10-22    
All Day
ABOUT 10TH INTERNATIONAL CONFERENCE ON MASS SPECTROMETRY AND CHROMATOGRAPHY ME Conferences is excited to announce the “10th International Conference on Mass Spectrometry and Chromatography” that [...]
MEDICAL JAPAN 2019 TOKYO
2019-10-23 - 2019-10-25    
All Day
ABOUT MEDICAL JAPAN 2019 TOKYO B to B Trade Show Covering All the Products/Services/Technologies in the Healthcare Industry! MEDICAL JAPAN TOKYO, a sister show of [...]
15th ACAM Laser and Cosmetic Medicine Conference 2019
2019-10-23 - 2019-10-25    
All Day
ABOUT 15TH ACAM LASER AND COSMETIC MEDICINE CONFERENCE 2019 As the new president of ACAM, I am delighted to welcome you all to the 15th [...]
23rd European Nephrology Conference
2019-10-24 - 2019-10-25    
All Day
ABOUT 23RD EUROPEAN NEPHROLOGY CONFERENCE Theme: The Imminent of Nephrology: Current & Advance Approaches to treat Kidney Diseases 23rd European Nephrology Conference is the world’s [...]
FNCE 2019 Food & Nutrition Conference & Expo
2019-10-26 - 2019-10-29    
All Day
ABOUT FNCE 2019 – FOOD & NUTRITION CONFERENCE & EXPO Experience dynamic educational opportunities not available elsewhere. Gain access to new trends, perspectives from expert [...]
HLTH 2019
2019-10-27 - 2019-10-30    
All Day
ABOUT HLTH 2019 HLTH is the largest and most important conference for health innovation. It’s an unprecedented, large-scale forum for collaboration across senior leaders from [...]
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8 Oct 19
Massachusetts
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Global Cardio Diabetes Conclave 2019
18 Oct 19
Bidhannagar
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HLTH 2019
27 Oct 19
Las Vegas
Articles

Can Data-Powered Comparative Effectiveness Research Save Healthcare?

Mounting evidence suggests CER will deliver new, cost-effective treatment options. But at least one controversial problem needs to be resolved first.

With so much emphasis from government and private insurers on the need to lower the cost of medical care, comparative effectiveness research (CER) has come into its own. CER aims to compare two or more existing treatment regimens to determine which are most cost-effective. Since so many sophisticated software tools are now available to help facilitate such research, healthcare IT executives need to stay well-informed about the strengths and limitations of CER.

In the past, I’ve written about Clinical Query, a searchable patient data repository being used by Boston’s Beth Israel Deaconess Medical Center to facilitate CER. Last year the database was launched to allow researchers and clinicians to look for potential connections between diseases, treatment options and risk factors, which in turn can become the jumping off point for a research project.

If a Harvard researcher wants to compare the benefits of diuretics to ACE inhibitors among patients with hypertension, for instance, he or she can use Clinical Query to look at the records of more than 2 million patients and 200 million data points, including diagnoses, medications taken, lab values, and radiology images.

A comparison of data on the two classes of high blood pressure meds might reveal that one is more effective than the other. And while the results of that CER analysis may not carry the same weight as a randomized clinical trial in which groups of patients are actually given the drugs in real time to see which was more effective, the CER results can still guide clinicians on treatment options for their patients.

A CER Network Could Transform Medicine

During a recent conversation, John Halamka, MD, CIO at Beth Israel Deaconess, pointed out that Clinical Query is just the beginning of much more ambitious attempt to aggregate not only the 2 million patient records in their system but the tens of millions of records from major healthcare systems nationwide.

“For comparative effectiveness research, you may need 10 million, 20 million patients,” Halamka said. “So wouldn’t it be much better if you had a CER network, where Stanford, UCLA, Harvard and Mayo Clinic all decided to share [de-identified] patient data?” Grants from the Patient-Centered Outcomes Institute (PCORI), a federally sponsored agency, are going out to various organizations to turn this proposed network into a reality.

In April, PCORI laid out its grand vision of creating a National Patient-Centered Clinical Research Network to help improve CER. At the same time, it announced a funding program to support the network.

PCORI’s vision has huge potential for improving clinical practice. One of the current shortcomings of clinical research is that so much of it is limited by the small number of patients enrolled in each study. In fact, several potentially valuable treatment options have been discarded because investigators were not able to detect a statistically significant difference between options A and B. Many of these investigations were guilty of what’s referred to a Type II error, in which a treatment regimen is deemed useless simply because the number of patients being evaluated was too small to spot a therapeutic effect.

More than 25 years ago, a critique found 71 “negative” studies published in respected medical journals had prematurely condemned potentially valuable treatments because too few subjects had been included to correctly conclude the treatment was useless. Decades later, a second analysis revealed researchers were making the same mistake. A JAMA review found 383 randomized controlled trials (RCTs) were not large enough to detect a 25% to 50% difference between an experimental and control group. Studies that take advantage of a network that includes millions of patients are far less likely to fall into that trap.

Massive Databases Don’t Guarantee Success

A massive network of EMR-derived clinical data would be invaluable, but large numbers aren’t enough. A database like this can serve as the starting point for a powerful observational study that could reveal, for example, that 10,000 patients taking penicillin for strep throat fared better than an equivalent number of patients taking a more expensive antibiotic. But such correlations don’t establish a cause and effect relationship. Randomized controlled trials are much better at that.

The other danger in putting too much faith in large CER studies that rely on EMR data is summed up by Tomas Philipson of the University of Chicago and Eric Sun of Stanford University. Their report, Blue Pill or Red Pill: The Limitations of Comparative Effectiveness Research, acknowledges that CER “measures the effects of different drugs or other treatments on a population, with the goal of finding out which ones produce the greatest benefits for the most patients.” It then quotes President Obama’s comment: “If there’s broad agreement … [that] the blue pill works better than the red pill… and it turns out the blue pills are half as expensive as the red pill, then we want to make sure that doctors and patients have that information available to them.”

The report goes on to explain that a 2005 CER analysis found that there was little difference in the effectiveness of older, less-expensive antipsychotic drugs compared to more expensive second-generation agents. The 2005 analysis concluded that only paying for the cheaper medications would save $1.2 billion. But the CER analysis had a fatal flaw: It looked only at the effects of the two groups of drugs on an average patient. As the Philipson and Sun critique points out: “…individuals differ from one another and from population averages. Therefore, what may be on average a ‘winning’ therapy may simply not work for a large number of patients. Conversely, a drug that is less effective on average may still be the best, or only, choice for a sizable proportion of patients.”

Philipson and Sun conclude that paying only for the cheaper drugs would have resulted in “worse mental health for many thousands of people, resulting in higher costs to society that would equal or outweigh any savings in Medicaid costs.”

The data that electronic health systems are creating will have a profound effect in shaping healthcare reform. Using that data well will depend on a deeper understanding of CER’s strengths and weaknesses.

(Source)