Description
This project aims to
(1) develop and test a predictive model identifying emerging sepsis using artificial intelligence and machine learning, and (2) translate model-based learnings into improved operational criteria and a proposal to pilot the new identification method.
This project leverages in-hospital and ambulatory data from the Sutter Health electronic health record.
Principal Investigator
Funder
Greathouse Family Foundation/Sutter Philanthropy
Research Topics
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