Semantically Enhanced Dynamic Bayesian Network for Detecting Sepsis Mortality Risk in ICU Patients with Infection
Tony Wang, Tom Velez, Emilia Apostolova, Tim Tschampel, Thuy L. Ngo,, Joy Hardison

TL;DR
This study develops a semantically enhanced dynamic Bayesian network that leverages a sepsis knowledgebase to accurately predict mortality risk in ICU patients with infection, outperforming traditional scoring tools.
Contribution
The paper introduces a novel, knowledgebase-guided DBN model that integrates structured and unstructured clinical data for improved sepsis mortality prediction.
Findings
DBN achieved an AUROC of 0.91, outperforming traditional scores.
The model demonstrated superior calibration and risk stratification.
Knowledgebase-driven approach enhanced predictive accuracy.
Abstract
Although timely sepsis diagnosis and prompt interventions in Intensive Care Unit (ICU) patients are associated with reduced mortality, early clinical recognition is frequently impeded by non-specific signs of infection and failure to detect signs of sepsis-induced organ dysfunction in a constellation of dynamically changing physiological data. The goal of this work is to identify patient at risk of life-threatening sepsis utilizing a data-centered and machine learning-driven approach. We derive a mortality risk predictive dynamic Bayesian network (DBN) guided by a customized sepsis knowledgebase and compare the predictive accuracy of the derived DBN with the Sepsis-related Organ Failure Assessment (SOFA) score, the Quick SOFA (qSOFA) score, the Simplified Acute Physiological Score (SAPS-II) and the Modified Early Warning Score (MEWS) tools. A customized sepsis ontology was used to…
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Taxonomy
TopicsSepsis Diagnosis and Treatment · Machine Learning in Healthcare
