# Identifying potential three key targets gene for septic shock in children using bioinformatics and machine learning methods

**Authors:** Wei Guo, Hao Chen, Feng Wang, Yingjiao Chi, Wei Zhang, Shan Wang, Kezhu Chen, Hong Chen

PMC · DOI: 10.3389/fimmu.2025.1586584 · 2025-06-17

## TL;DR

This study identifies three key genes linked to septic shock deaths in children using bioinformatics and machine learning, offering insights for better treatment.

## Contribution

The study introduces a novel approach combining bioinformatics and machine learning to identify three core genes associated with fatal sepsis in children.

## Key findings

- 83 differentially expressed genes were identified, with 78 up-regulated and 5 down-regulated.
- Three core genes (CD163, MCEMP1, and RETN) were found to be associated with sepsis mortality in children.
- These genes are linked to pathways like complement and coagulation cascades and toll-like receptor signaling.

## Abstract

Septic shock in children is an infectious disease caused by low immunity, and its mortality is very high. Early prediction of the risk of death in children with septic shock is helpful for clinicians to judge the severity of the disease, take active treatment measures, and improve the adverse outcomes of patients. However, the mechanism of death from sepsis in children remains unclear. This study aims to use bioinformatics and machine learning algorithms to identify key genes and pathways associated with fatal sepsis in children, and provide theoretical basis for rational drug use in follow-up TCM treatment.

Gene expression profiles were obtained from the GEO database (GSE4607) for 15 blank patients and 14 children with sepsis death. Differentially expressed genes (DEGs) were enriched by GO and KEGG pathways. Construct and visualize protein-protein interaction (PPI) networks to identify candidate genes responsible for fatal sepsis in children. Three kinds of machine learning models were established, and the candidate genes were screened by intersection to obtain the core genes with diagnostic value. ROC curve was drawn for core genes to clarify the diagnostic value of genetic markers.

Analysis of differences in the preprocessed dataset identified 83 genes, including 78 up-regulated genes and 5 down-regulated genes. 17 candidate genes were screened by protein interaction network analysis. Three machine learning algorithms LASSO, random forest (RF), and support vector machine recursive feature elimination (SVM-RFE) were used to finally screen out three core genes: CD163, MCEMP1 and RETN. CD163, MCEMP1 and RETN may jointly regulate complement and coagulation cascades, toll like receptor signaling pathway, graft versus host disease, type I diabetes mellitus.

In this study, three core genes (CD163, MCEMP1 and RETN) that lead to sepsis death in children were screened out, providing a new understanding of the lethal mechanism of sepsis in children and a promising new therapeutic approach.

## Linked entities

- **Genes:** CD163 (CD163 molecule) [NCBI Gene 9332], MCEMP1 (mast cell expressed membrane protein 1) [NCBI Gene 199675], RETN (resistin) [NCBI Gene 56729]

## Full-text entities

- **Genes:** MCEMP1 (mast cell expressed membrane protein 1) [NCBI Gene 199675] {aka C19orf59}, CD163 (CD163 molecule) [NCBI Gene 9332] {aka M130, MM130, SCARI1}, RETN (resistin) [NCBI Gene 56729] {aka ADSF, FIZZ3, RENT, RETN1, RSTN, XCP1}
- **Diseases:** type I diabetes mellitus (MESH:D003922), sepsis (MESH:D018805), infectious disease (MESH:D003141), death (MESH:D003643), graft versus host disease (MESH:D006086), Septic shock (MESH:D012772)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

7 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12209225/full.md

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Source: https://tomesphere.com/paper/PMC12209225