Events Calendar

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12:00 AM - TEDMED 2017
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Raleigh Health IT Summit
2017-10-19 - 2017-10-20    
All Day
About Health IT Summits Renowned leaders in U.S. and North American healthcare gather throughout the year to present important information and share insights at the Healthcare [...]
Connected Health Conference 2017
2017-10-25 - 2017-10-27    
All Day
The Connected Life Journey Shaping health and wellness for every generation. Top-rated content Valued perspectives from providers, payers, pharma and patients Unmatched networking with key [...]
TEDMED 2017
2017-11-01 - 2017-11-03    
All Day
A healthy society is everyone’s business. That’s why TEDMED speakers are thought leaders and accomplished individuals from every sector of society, both inside and outside [...]
AMIA 2017 Annual Symposium
2017-11-04 - 2017-11-08    
All Day
Call for Participation We invite you to contribute your best work for presentation at the AMIA Annual Symposium – the foremost symposium for the science [...]
Events on 2017-10-19
Raleigh Health IT Summit
19 Oct 17
Raleigh
Events on 2017-10-25
Events on 2017-11-01
TEDMED 2017
1 Nov 17
La Quinta
Events on 2017-11-04
AMIA 2017 Annual Symposium
4 Nov 17
WASHINGTON
Articles

Scientists Say EHRs Can Help Identify High-Risk Pregnancy Patients

The use of electronic health records could help identify high-risk pregnancy patients who require treatment to avoid medical complications, according to an article published in the Johns Hopkins Public Health magazine, FierceEMR reports.

Researchers — assisted by Johns Hopkins University’s Center for Population Health IT — are conducting a pilot program that uses predictive modeling and natural language processing to sort through the text in EHRs of pregnant Medicaid beneficiaries.

The researchers are looking for information such as whether beneficiaries smoke or live in abusive environments. Those beneficiaries typically do not receive regular or follow-up care, according to FierceEMR.

After the EHR data identify the high-risk beneficiaries, the researchers can contact them about receiving needed care.