Impact of a deep learning sepsis prediction model on quality of care and survival.
Aaron E BoussinaSupreeth Prajwal ShashikumarAtul MalhotraRobert L OwensRobert El-KarehChristopher A LonghurstKimberly QuinteroAllison DonahueTheodore C ChanShamim NematiGabriel WardiPublished in: NPJ digital medicine (2024)
Sepsis remains a major cause of mortality and morbidity worldwide. Algorithms that assist with the early recognition of sepsis may improve outcomes, but relatively few studies have examined their impact on real-world patient outcomes. Our objective was to assess the impact of a deep-learning model (COMPOSER) for the early prediction of sepsis on patient outcomes. We completed a before-and-after quasi-experimental study at two distinct Emergency Departments (EDs) within the UC San Diego Health System. We included 6217 adult septic patients from 1/1/2021 through 4/30/2023. The exposure tested was a nurse-facing Best Practice Advisory (BPA) triggered by COMPOSER. In-hospital mortality, sepsis bundle compliance, 72-h change in sequential organ failure assessment (SOFA) score following sepsis onset, ICU-free days, and the number of ICU encounters were evaluated in the pre-intervention period (705 days) and the post-intervention period (145 days). The causal impact analysis was performed using a Bayesian structural time-series approach with confounder adjustments to assess the significance of the exposure at the 95% confidence level. The deployment of COMPOSER was significantly associated with a 1.9% absolute reduction (17% relative decrease) in in-hospital sepsis mortality (95% CI, 0.3%-3.5%), a 5.0% absolute increase (10% relative increase) in sepsis bundle compliance (95% CI, 2.4%-8.0%), and a 4% (95% CI, 1.1%-7.1%) reduction in 72-h SOFA change after sepsis onset in causal inference analysis. This study suggests that the deployment of COMPOSER for early prediction of sepsis was associated with a significant reduction in mortality and a significant increase in sepsis bundle compliance.
Keyphrases
- intensive care unit
- septic shock
- acute kidney injury
- deep learning
- healthcare
- randomized controlled trial
- machine learning
- chronic kidney disease
- end stage renal disease
- risk factors
- cardiovascular disease
- emergency department
- palliative care
- mechanical ventilation
- young adults
- insulin resistance
- coronary artery disease
- acute respiratory distress syndrome
- prognostic factors
- patient reported outcomes
- skeletal muscle
- electronic health record
- patient reported
- free survival