Research from Columbia Business School Reveals How to Shorten Emergency Room Wait Time
- Predictive analytics can help hospitals reduce wait times for patients by up to 15 percent
- Hospitals can use predictive analytics to develop proactive policies for diverting patients before ERs become over-crowded
- Predictive analytics harnesses the data around ER visits to predict future demand
NEW YORK, Aug. 29, 2016 /PRNewswire/ -- According to the U.S. Department of Health and Human Services, demand for emergency health care services is rapidly increasing, causing over-crowding and long wait-times in emergency rooms nationwide. New research from Columbia Business School shows that predictive analytics – that is, using data about ER demand to predict future demand – could help hospitals reduce wait times and improve care by diverting patients away from emergency rooms before they become overcrowded.
Hospital diversions are intended to help patients get care faster by directing them away from overcrowded ERs and toward facilities that can care for them more appropriately and quickly. In current practice, diversion decisions are typically made based solely on information about current congestion — i.e. if a maximum threshold is reached, then new patients will be diverted. However, the researchers suggest that by using predictions of when patient congestion is likely to build, hospitals could substantially reduce the wait times of patients seeking medical care from an ER.
"Patients on their way to the emergency room want to know that their emergency is going to be handled as expeditiously as possible," said Professor Carri Chan, co-author of the study and Sidney Taurel Associate Professor of Business at Columbia Business School. "By using predictive modeling to develop more effective diversion policies, hospitals can reduce wait times for patients by up to 15 percent, improving care and customer satisfaction while at the same time saving time and money."
The study, titled Using Future Information to Reduce Waiting Times in the Emergency Department via Diversion, co-authored by Chan and Kuang Xu of Stanford University, proposes a new algorithm to predict future emergency arrivals. This algorithm can be then be applied to make decisions about diverting incoming patients.
Chan concluded: "Using predictive analytics is a step towards eliminating the over-crowding and long wait times that plague may of today's emergency rooms, ensuring patients receive the care they need when they need it."
To learn more about the cutting-edge research being conducted at Columbia Business School, please visit www.gsb.columbia.edu.
About Columbia Business School
Columbia Business School is the only world–class, Ivy League business school that delivers a learning experience where academic excellence meets with real–time exposure to the pulse of global business. Led by Dean Glenn Hubbard, the School's transformative curriculum bridges academic theory with unparalleled exposure to real–world business practice, equipping students with an entrepreneurial mindset that allows them to recognize, capture, and create opportunity in any business environment. The thought leadership of the School's faculty and staff, combined with the accomplishments of its distinguished alumni and position in the center of global business, means that the School's efforts have an immediate, measurable impact on the forces shaping business every day. To learn more about Columbia Business School's position at the very center of business, please visit www.gsb.columbia.edu.
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SOURCE Columbia Business School
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