Our goals are to:
1.Define, standardize, document, and predict infection-related clinical presentation, course, and outcomes.
2.Increase accessibility of data including well-described clinical presentations, course, and outcomes.
3.Generate a public data repository to improve research in this important field
4.Develop new approaches to digital biomarker discovery and outcome prediction using artificial intelligence and machine learning.
5.Provide feedback to improve data quality control procedures.
6.Validate digital biomarkers and assess potential impact on treatment.
Infections show a range of diverse phenotypes with variable impact on clinical course and outcomes. Our NDS proposal focuses on this heterogeneity within critically ill patients with infections using a combined data-driven approach for an improved personalized assessment, characterization, and outcome prediction on patients with infections.