Multi-Subset Approach to Early Sepsis Prediction
Kevin Ewig, Xiangwen Lin, Tucker Stewart, Katherine Stern, Grant, O'Keefe, Ankur Teredesai, and Juhua Hu

TL;DR
This paper introduces a multi-subset machine learning approach that leverages temporal trend features to improve early sepsis prediction 6 hours before clinical suspicion, addressing the challenge of large prediction gaps.
Contribution
It proposes a novel multi-subset method combined with temporal trend features to enhance early sepsis prediction accuracy over existing models.
Findings
Multi-subset approach improves prediction performance.
Temporal trend features aid in early detection.
Method effectively addresses the 6-hour prediction gap.
Abstract
Sepsis is a life-threatening organ malfunction caused by the host's inability to fight infection, which can lead to death without proper and immediate treatment. Therefore, early diagnosis and medical treatment of sepsis in critically ill populations at high risk for sepsis and sepsis-associated mortality are vital to providing the patient with rapid therapy. Studies show that advancing sepsis detection by 6 hours leads to earlier administration of antibiotics, which is associated with improved mortality. However, clinical scores like Sequential Organ Failure Assessment (SOFA) are not applicable for early prediction, while machine learning algorithms can help capture the progressing pattern for early prediction. Therefore, we aim to develop a machine learning algorithm that predicts sepsis onset 6 hours before it is suspected clinically. Although some machine learning algorithms have…
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Taxonomy
TopicsSepsis Diagnosis and Treatment · Machine Learning in Healthcare · Forecasting Techniques and Applications
