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MedInformatix Summit 2014
2014-07-22 - 2014-07-25    
All Day
MedInformatix is excited to present this year’s meeting! 07/22 Tuesday Focus: Product Development Highlights:Latest Updates in Product Development, Interactive Roundtables, and More. 07/23 Wednesday Focus: Healthcare Trends [...]
MMGMA 2014 Summer Conference
2014-07-23 - 2014-07-25    
All Day
Mark your calendar for Wednesday - Friday, July 23-25, and join your colleagues and business partners in Duluth for our MMGMA Summer Conference: Delivering Superior [...]
This is it: The Last Chance for EHR Stimulus Funds! Webinar
2014-07-31    
10:00 am - 11:00 am
Contact: Robert Moberg ChiroTouch 9265 Sky Park Court Suite 200 San Diego, CA 92123 Phone: 619-528-0040 ChiroTouch to Host This is it: The Last Chance [...]
RCM Best Practices
2014-07-31    
2:00 pm - 3:00 pm
In today’s cost-conscious healthcare environment every dollar counts. Yet, inefficient billing processes are costing practices up to 15% of their revenue annually. The areas of [...]
Events on 2014-07-22
MedInformatix Summit 2014
22 Jul 14
New Orleans
Events on 2014-07-23
MMGMA 2014 Summer Conference
23 Jul 14
Duluth
Events on 2014-07-31
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.