Media Contacts

Julie Kiefer

Associate Director, Science Communications, University of Utah Health
Email: julie.kiefer@hsc.utah.edu
Phone: 801-587-1293

Feb 02, 2021 10:00 AM

App development in collaboration with Eric Nelson at the University of Florida and BeeHyv.

Press release provided by eLife

A decision-support tool that could be accessed via mobile devices may help clinicians in lower-resource settings avoid unnecessary antibiotic prescriptions for children with diarrhea, a study published today in eLife shows

The preliminary findings suggest that incorporating real-time environmental, epidemiologic, and clinical data into an easy-to-access, electronic tool could help clinicians appropriately treat children with diarrhea even when testing is not available. This could help avoid the overuse of antibiotics, which contributes to the emergence of drug-resistant bacteria.

“Diarrhea is a common condition among children in low-resource settings,” explains lead author Benjamin Brintz, research associate in epidemiology, University of Utah Health. “Antibiotics are often prescribed for it, despite the fact these medications will not help patients who have diarrhea caused by viruses. Helping clinicians determine if a case of diarrhea is likely caused by a virus or bacteria could help reduce inappropriate antibiotic prescriptions.”

In their study, Brintz and his colleagues developed a statistical model that integrated multiple sources of real-time data to help clinicians determine whether a child’s diarrhea was caused by bacteria or a virus. This included information about prior patients, the seasons, and weather, which is useful because some viruses are seasonal in nature and certain bacterial infections may be spread by flooding or similar conditions.

To account for interruptions to electronic information sources, which can be frequent in some settings, the team built the model so it would still work if some of the information was missing. They also optimized it for use on mobile devices. They then tested how well the model would work if it were applied to real cases of diarrhea in pediatric patients. Their results showed that it could reduce inappropriate antibiotic prescriptions by more than 50%.

The authors say the next step in their research will be to ensure the tool provides enough certainty that clinicians can trust it, and that it will not lead to patients who require antibiotics being undertreated. But if this decision aid can meet these high standards, it could be a valuable resource for clinicians with limited diagnostic tools who often rely solely on their best professional judgement. 

“The global burden of diarrhea is highest in low- and middle-income countries, where there is limited access to laboratory testing,” concludes senior author Daniel Leung, MD, associate professor of internal medicine (Infectious Disease) at U of U Health. “The care of children in these regions could greatly benefit from an accurate and flexible decision-making tool.”

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The research published as ‘A modular approach to integrating multiple data sources into real-time clinical prediction for pediatric diarrhea’ and was supported by the National Institutes of Health, the National Center for Advancing Translational Sciences and the Bill and Melinda Gates Foundation.

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