Litcius/Paper detail

Refining empiric subgroups of pediatric sepsis using machine-learning techniques on observational data

Yidi Qin, Rebecca I. Caldino Bohn, Aditya Sriram, Kate F. Kernan, Joseph A. Carcillo, Soyeon Kim, Hyun Jung Park

2023Frontiers in Pediatrics13 citationsDOIOpen Access PDF

Abstract

Sepsis contributes to 1 of every 5 deaths globally with 3 million per year occurring in children. To improve clinical outcomes in pediatric sepsis, it is critical to avoid "one-size-fits-all" approaches and to employ a precision medicine approach. To advance a precision medicine approach to pediatric sepsis treatments, this review provides a summary of two phenotyping strategies, empiric and machine-learning-based phenotyping based on multifaceted data underlying the complex pediatric sepsis pathobiology. Although empiric and machine-learning-based phenotypes help clinicians accelerate the diagnosis and treatments, neither empiric nor machine-learning-based phenotypes fully encapsulate all aspects of pediatric sepsis heterogeneity. To facilitate accurate delineations of pediatric sepsis phenotypes for precision medicine approach, methodological steps and challenges are further highlighted.

Topics & Concepts

SepsisMedicinePrecision medicineIntensive care medicineObservational studyMachine learningArtificial intelligenceComputer scienceInternal medicinePathologySepsis Diagnosis and TreatmentNeonatal and Maternal InfectionsBacterial Identification and Susceptibility Testing