TL;DR
SepsisLab introduces a novel early sepsis prediction system that quantifies uncertainty from missing data and employs active sensing to improve diagnostic confidence, validated on multiple datasets.
Contribution
The paper presents uncertainty propagation methods for sepsis prediction and a robust active sensing algorithm to enhance early diagnosis accuracy.
Findings
Uncertainty is highest at hospital admission start.
Proposed active sensing outperforms existing methods.
SepsisLab system benefits early sepsis detection.
Abstract
Sepsis is the leading cause of in-hospital mortality in the USA. Early sepsis onset prediction and diagnosis could significantly improve the survival of sepsis patients. Existing predictive models are usually trained on high-quality data with few missing information, while missing values widely exist in real-world clinical scenarios (especially in the first hours of admissions to the hospital), which causes a significant decrease in accuracy and an increase in uncertainty for the predictive models. The common method to handle missing values is imputation, which replaces the unavailable variables with estimates from the observed data. The uncertainty of imputation results can be propagated to the sepsis prediction outputs, which have not been studied in existing works on either sepsis prediction or uncertainty quantification. In this study, we first define such propagated uncertainty as…
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