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An Exhaustive Review And Analysis On Applications Of Statistical Forecasting In Hospital Emergency Departments

Muhammet Gul, Erkan Celik
Published 2018 · Medicine
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Emergency departments (EDs) provide medical treatment for a broad spectrum of illnesses and injuries to patients who arrive at all hours of the day. The quality and efficient delivery of health car...
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