Abstract

Sepsis is the primary cause of burn-related mortality and morbidity. Traditional indicators of sepsis exhibit poor performance when used in this unique population due to their underlying hypermetabolic and inflammatory response following burn injury. To address this challenge, we developed the Machine Intelligence Learning Optimizer (MILO), an automated machine learning (ML) platform, to automatically produce ML models for predicting burn sepsis. We conducted a retrospective analysis of 211 adult patients (age ≥ 18 years) with severe burn injury (≥ 20% total body surface area) to generate training and test datasets for ML applications. The MILO approach was compared against an exhaustive “non-automated” ML approach as well as standard statistical methods. For this study, traditional multivariate logistic regression (LR) identified seven predictors of burn sepsis when controlled for age and burn size (OR 2.8, 95% CI 1.99–4.04, P = 0.032). The area under the ROC (ROC-AUC) when using these seven predictors was 0.88. Next, the non-automated ML approach produced an optimal model based on LR using 16 out of the 23 features from the study dataset. Model accuracy was 86% with ROC-AUC of 0.96. In contrast, MILO identified a k-nearest neighbor-based model using only five features to be the best performer with an accuracy of 90% and a ROC-AUC of 0.96. Machine learning augments burn sepsis prediction. MILO identified models more quickly, with less required features, and found to be analytically superior to traditional ML approaches. Future studies are needed to clinically validate the performance of MILO-derived ML models for sepsis prediction.

Highlights

  • Sepsis is the primary cause of burn-related mortality and morbidity

  • Glycemic variability and thrombocytopenia were included in the American Burn Association (ABA) Consensus Guidelines; measurement of glycemic variability is challenging without continuous glucose monitoring technology and platelet count aids burn sepsis recognition at later stages of severe infection

  • Multivariate logistic regression (LR) identified body temperature, white blood cell count (WBC), HGB, HCT, Na+, and platelet count (PLT) as predictors of sepsis when controlled for age and burn size

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Summary

Introduction

Traditional indicators of sepsis exhibit poor performance when used in this unique population due to their underlying hypermetabolic and inflammatory response following burn injury. To address this challenge, we developed the Machine Intelligence Learning Optimizer (MILO), an automated machine learning (ML) platform, to automatically produce ML models for predicting burn sepsis. The systemic inflammatory response s­ yndrome[2,3] lacks clinical sensitivity and specificity when applied to severely burned p­ atients[1], while the newer 2016 “Sepsis-3” criteria remain controversial in both burned and non-burned p­ atients[4,5,6,7] To this end, early and accurate recognition of sepsis represents a significant clinical knowledge gap in burn critical care. The objective of this study is to provide proof of concept clinical utility of ML for sepsis recognition in comparison to existing criteria in the high-risk burn population

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