May 09, 2016
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Asthma-related Twitter posts forecast ED visits

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BALTIMORE — An analysis of real-time Twitter data was able to prospectively project population-level asthma ED visits and hospital admissions, according to study findings presented at the Pediatric Academic Societies Meeting.

Perspective from Daniel M. Fein, MD

“By using real-time Twitter activity, health departments could actually anticipate asthma ED visits or hospitalizations in the following days and possibly intervene before some of them occur,” Yolande Mfondoum Pengetnze, MD, medical director at Parkland Center for Clinical Innovation in Dallas, said in a press release. “For instance, a notification might be sent by the health department when there is an increase in asthma-related tweets in the community, giving people with asthma a heads-up to take necessary precautions, like avoiding exposure to asthma triggers or being more assiduous in taking their asthma medications.”

To evaluate the correlation between real-time Twitter data and asthma ED visits or hospital admissions in the Dallas-Fort Worth area, the researchers sampled 3,810 tweets posted between October 2013 and June 2014 that used common asthma terms. Pengetnze and colleagues then created a dataset of tweets to distinguish asthma-relevant tweets, those where the user mentioned their ongoing asthma symptoms, from nonrelevant tweets, in which the user only mentioned asthma as a comment.

The researchers used Twitter location data to isolate tweets from the Dallas-Fort Worth area, and only included asthma-relevant tweets in their analysis. Using linear regression analyses, they evaluated the chronological association between the number of asthma-relevant tweets and asthma ED visits/admissions data from the Dallas Fort Worth Hospital Council Foundation, a network of more than 70 hospitals.

A positive association between the average number of asthma-relevant tweets in a 7-day period and the number of asthma-related ED visits in the subsequent 7 days was observed (beta = 0.58; 95% CI, 0.47-0.69).

In addition, the researchers found similar correlations with other time windows of asthma-relevant tweets with asthma-related ED visits/admissions. After days with a significantly increased number of asthma-relevant tweets, the researchers calculated the ensuing 7 days as “high” asthma days or days when the number of asthma visits were greater than average.

“Our research is innovative and unique because it harnesses the power of Big Data from social media and other sources to address the problem of anticipating ED visits for a chronic condition, in this case asthma, in close to real-time conditions,” study investigator Sudha Ram, PhD, director of the INSITE Center for Business Intelligence and Analytics at the University of Arizona, said in the release. “We believe this work paves the way to address signal extraction and prediction for other chronic conditions and goes beyond current work that mostly looks at infectious conditions.” – by Bob Stott 

Reference:

Pengetnze YM, et al. Abstract 4600.8. Presented at: Pediatric Academic Societies Meeting; April 30-May 3, 2016; Baltimore.

Disclosure: The researchers report no relevant financial disclosures.