Predicting risk of unplanned hospital readmission within 30-days of discharge using machine learning approaches
Unplanned hospital readmissions are a preventable and costly outcome in the health care system. There are limited tools to estimate risk of readmission. The machine learning process offers an opportunity to develop a risk predictor to identify those at high risk of readmission upon discharge. OKAKI has an opportunity to diversify the commercial products it can offer to health care administrators.
Intern:
Vishal Sharma
Faculty Supervisor:
Dean Eurich
Province:
Alberta
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