# Improving sepsis care with AI-based clinical decision support

> **NIH NIH R35** · UNIVERSITY OF PENNSYLVANIA · 2024 · $406,250

## Abstract

Project Summary
Sepsis is a syndrome characterizied by a dysregulated host immune response to an infection that leads to
organ dysfunction. Because sepsis is among the leading causes of death among hospitalized patients and
accounts for substantial harms, costs, and loss of quality of life, many efforts have been made to improve
sepsis care. The mainstay of treatment is timely recognition and prompt initiation of broad-spectrum an-
timicrobial therapy. However, identification of sepsis is fraught with uncertainty in busy and complex clinical
environments and treatment delays are common in the emergency department, hospital ward, and intensive
care unit. As a result, the use of artificial intelligence (AI) and machine learning (ML) methods to provide
timely clinical decision support (CDS) has good face validity to improve care. Despite hundreds of published
papers on predictive sepsis systems, there is very little evidence that such systems actually improve care
processes or patient outcomes. Therefore, this proposal outlines three important knowledge gaps at the in-
tersection of AI/ML methods and clinical care that have so far hindered the development of successful sepsis
CDS systems. First, the optimal outcome (i.e., training label) on which to develop predictive systems for sep-
sis is unknown. Current sepsis definitions were designed primarily to standardize clinical trial enrollment and
epidemiologic surveillance rather than to support bedside treatment decisions. Second, although sepsis is
currently defined by changes in organ function from baseline, the optimal approach to capture time-varying
changes in clinical parameters remains unknown. Many AI/ML methods are uniquely suited to learning such
important patterns in the data but their use in predicting sepsis remains under-explored. Third, there are
significant differences in patient outcomes and clinical presentation between community- and hospital-onset
sepsis. However, how these differences might affect predictive accuracy, estimates of variable importance,
timing and use of predictive alerts, among other important considerations for CDS development, remains un-
known. Thus, this proposal seeks to answer these fundamental questions to overcome key knowledge gaps
and realize the promise of AI/ML methods for improving sepsis care. Broadly speaking, we will consider sev-
eral state-of-the-art approaches to answer these questions, including the use of i) informatics methods such
as active learning to facilitate efficient and large-scale clinician review of patient data, ii) advanced causal
inference methods such as target trial emulation to compare the clinical effects of treatment according to
different sepsis definitions, and iii) AI/ML methods such as convolutional neural networks and denoising
autoencoders to determine the optimal representations of complex and time-varying clinical features. An-
swering these questions will pave the way for the development of AI/ML CDS systems that ar...

## Key facts

- **NIH application ID:** 10939968
- **Project number:** 1R35GM155262-01
- **Recipient organization:** UNIVERSITY OF PENNSYLVANIA
- **Principal Investigator:** Gary Weissman
- **Activity code:** R35 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2024
- **Award amount:** $406,250
- **Award type:** 1
- **Project period:** 2024-07-15 → 2029-05-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10939968

## Citation

> US National Institutes of Health, RePORTER application 10939968, Improving sepsis care with AI-based clinical decision support (1R35GM155262-01). Retrieved via AI Analytics 2026-05-23 from https://api.ai-analytics.org/grant/nih/10939968. Licensed CC0.

---

*[NIH grants dataset](/datasets/nih-grants) · CC0 1.0*
