Clinical Research Directory
Browse clinical research sites, groups, and studies.
Comparison of Sepsis Prediction Algorithms
Sponsor: Emory University
Summary
Sepsis is a severe response to infection resulting in organ dysfunction and often leading to death. More than 1.5 million people get sepsis every year in the U.S., and 270,000 Americans die from sepsis annually. Delays in the diagnosis of sepsis lead to increased mortality. Several clinical decision support algorithms exist for the early identification of sepsis. The research team will compare the performance of three sepsis prediction algorithms to identify the algorithm that is most accurate and clinically actionable. The algorithms will run in the background of the electronic health record (EHR) and the predictions will not be revealed to patients or clinical staff. In this current evaluation study, the algorithms will not affect any part of a patient's care. The algorithms will be deployed across the Emory healthcare system on data from all patients presenting to the emergency department.
Official title: Prospective Evaluation of Sepsis Prediction Algorithms in a Multi-Hospital Healthcare System
Key Details
Gender
All
Age Range
18 Years - Any
Study Type
OBSERVATIONAL
Enrollment
1200
Start Date
2026-06
Completion Date
2026-12
Last Updated
2026-01-07
Healthy Volunteers
No
Conditions
Interventions
Epic Sepsis Model Version - 1
The Epic Sepsis Model (ESM) version 1, a proprietary sepsis prediction model.
Epic Sepsis Model Version - 2
The Epic Sepsis Model (ESM) version 2, a proprietary sepsis prediction model.
Emory Sepsis Model
Emory internal algorithm
Locations (7)
Emory Midtown Hospital
Atlanta, Georgia, United States
Emory Saint Joseph's Hospital
Atlanta, Georgia, United States
Emory Healthcare System
Atlanta, Georgia, United States
Emory Hospital
Atlanta, Georgia, United States
Emory Decatur Hospital
Decatur, Georgia, United States
Emory Johns Creek Hospital
Johns Creek, Georgia, United States
Emory Hillandale Hospital
Lithonia, Georgia, United States