Abstract

A complicated clinical course for critically ill patients admitted to the intensive care unit (ICU) usually includes multiorgan dysfunction and subsequent death. Owing to the heterogeneity, complexity, and unpredictability of the disease progression, ICU patient care is challenging. Identifying the predictors of complicated courses and subsequent mortality at the early stages of the disease and recognizing the trajectory of the disease from the vast array of longitudinal quantitative clinical data is difficult. Therefore, we attempted to perform a meta-analysis of previously published gene expression datasets to identify novel early biomarkers and train the artificial intelligence systems to recognize the disease trajectories and subsequent clinical outcomes. Using the gene expression profile of peripheral blood cells obtained within 24 h of pediatric ICU (PICU) admission and numerous clinical data from 228 septic patients from pediatric ICU, we identified 20 differentially expressed genes predictive of complicated course outcomes and developed a new machine learning model. After 5-fold cross-validation with 10 iterations, the overall mean area under the curve reached 0.82. Using a subset of the same set of genes, we further achieved an overall area under the curve of 0.72, 0.96, 0.83, and 0.82, respectively, on four independent external validation sets. This model was highly effective in identifying the clinical trajectories of the patients and mortality. Artificial intelligence systems identified eight out of twenty novel genetic markers (SDC4, CLEC5A, TCN1, MS4A3, HCAR3, OLAH, PLCB1, and NLRP1) that help predict sepsis severity or mortality. While these genes have been previously associated with sepsis mortality, in this work, we show that these genes are also implicated in complex disease courses, even among survivors. The discovery of eight novel genetic biomarkers related to the overactive innate immune system, including neutrophil function, and a new predictive machine learning method provides options to effectively recognize sepsis trajectories, modify real-time treatment options, improve prognosis, and patient survival.

Highlights

  • Ill patients are admitted to the Intensive Care Unit (ICU) for complex and dynamic care, preserving organ function and improving outcomes in otherwise dire situations

  • The pediatric sepsis dataset GSE66099 [19] downloaded from the NCBI Gene Expression Omnibus (GEO) repository, contains the gene expression profiles extracted from the peripheral blood samples of patients who were admitted to the pediatric ICU (PICU) during the first 24 h of admission

  • Out of the 228 patients in the cohort, 18 patients met the criteria for sepsis, 30 for Systemic Inflammatory Response Syndrome (SIRS), and 180 for septic shock

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Summary

Introduction

Ill patients are admitted to the Intensive Care Unit (ICU) for complex and dynamic care, preserving organ function and improving outcomes in otherwise dire situations. Sepsis consists of a heterogeneous mix of phenotypes [4, 5], various degrees of disease complexities, and trajectories leading to recovery or death [6, 7]. Different strategies have been pursued predicting deterioration [8,9,10] and managing patients with sepsis in critical care units [11] using physiological, clinical, and biomarker parameters. Due to the heterogeneous nature of patients presenting to the ICU and the diverse disease course that follows, it has been difficult to identify generalized models of disease [12]

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