Twitter users who post information about their personal health online
might be considered by some to be "over-sharers," but new research led
by the University of Arizona suggests that health-related tweets may
have the potential to be helpful for hospitals.
Led by Sudha Ram, a UA professor of management information systems
and computer science, and Dr. Yolande Pengetnze, a physician scientist
at the Parkland Center for Clinical Innovation in Dallas, the
researchers looked specifically at the chronic condition of asthma and how asthma-related tweets, analyzed alongside other data, can help predict asthma-related emergency room visits.
Ram and her collaborators—including Wenli Zhang, a UA doctoral
student in management information systems, and researchers from the
Parkland Center for Clinical Innovation—created a model that was able to
successfully predict approximately how many asthma sufferers would
visit the emergency room at a large hospital in Dallas on a given day,
based on an analysis of data gleaned from electronic medical records, air quality sensors and Twitter.
Their findings, to be published in the forthcoming IEEE Journal of Biomedical and Health Informatics'
special issue on big data, could help hospital emergency departments
nationwide plan better with regard to staffing and resource management,
said Ram, the paper's lead author.
"We realized that asthma is one of the biggest traffic generators in
the emergency department," Ram said. "Often what happens is that there
are not the right people in the ED to treat these patients, or not the
right equipment, and that causes a lot of unforeseen problems."
Over a three-month period, Ram and her team collected air quality
data from environmental sensors in the vicinity of the Dallas hospital.
They also gathered and analyzed asthma-related tweets containing certain
keywords such as "asthma," "inhaler" or "wheezing." After collecting
millions of tweets from across the globe, they used text-mining
techniques to zoom in on relevant tweets in the ZIP codes where most of
the hospital's patients live, according to electronic medical records.
The researchers found that as certain air quality measures worsened,
asthma visits to the emergency room went up. Asthma visits also
increased as the number of asthma-related tweets went up. The
researchers additionally looked at asthma-related Google searches in the
area but found that they were not a good predictor for asthma emergency
room visits.
By analyzing tweets and air quality
information together, Ram and her collaborators were able to use
machine learning algorithms to predict with 75 percent accuracy whether
the emergency room could expect a low, medium or high number of
asthma-related visits on a given day.
The research highlights the important role that big data, including
streams from social media and environmental sensors, could play in
addressing health challenges, Ram said.
She and her team hope that their findings will help them create
similar predictive models for emergency room visits related to other
chronic conditions, such as diabetes.
"You can get a lot of interesting insights from social media that you can't from electronic health records,"
Ram said. "You only go to the doctor once in a while, and you don't
always tell your doctor how much you've been exercising or what you've
been eating. But people share that information all the time on social
media. We think that prediction models like this can be very useful, if
we can combine various types of data, to address chronic diseases."
Ram is co-director of the UA's INSITE Center for Business
Intelligence and Analytics in the Eller College on Management. The
INSITE Center focuses on predictive analytics through the use of data
from a variety of sources, including social media, sensors, mobile applications and Web-based platforms.
Health care—and how various forms of data can be used to address health-care issues—is a key area of interest for the center.
Big data analysis already has been used to predict the spread of
contagious disease. The Google Flu Trends Web service, for example,
estimates when and where flu will spread based on analysis of
flu-related Google searches.
The model developed by Ram and her collaborators is different in that it focuses on a chronic condition.
"People often end up in the emergency room
not necessarily for contagious diseases but for complications resulting
from chronic conditions like asthma or diabetes or cardiac problems,
which cost a lot to our health care system," Ram said.
More than 25 million Americans are affected by asthma, which accounts
for approximately 2 million emergency department visits, half a million
hospitalizations and 3,500 deaths annually, incurring more than $50
billion in direct medical costs, Ram and her collaborators write in
their paper.
Although hospitals can make risk predictions about when individual
asthma patients might return, based on medical histories, the model
created by Ram and her collaborators makes predictions at the population
level.
"The CDC gets reports of emergency department
visits several weeks after the fact, and then they put out surveillance
maps," Ram said. "With our new model, we can now do this in almost real
time, so that's an important public health surveillance implication."
Ram's co-author Pengetnze said the research represents a creative new approach to population health.
"The multidisciplinary collaboration in this study combines clinical
expertise, health services knowledge, electronic health records, and
non-traditional big data
sources to address the major health challenge that is asthma," she
said. "This multifaceted approach could have important implications for
the timeliness of public health surveillance, hospital preparedness and clinical workflows, first for asthma then for other burdensome chronic conditions like childhood obesity, Type 2 diabetes, and cardiovascular diseases, to name a few."
With the first phase of their research complete, Ram and her team now
plan to expand the asthma study to 75 hospitals in the Dallas-Fort
Worth area.
"We've got really good results," Ram said, "and now we're working on
building even more robust models to see if we can increase the accuracy
level by using more types of datasets over a longer time period."
SOURCE:
Medicalxress and Provided by
University of Arizona



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