A six‑gene support vector machine classifier contributes to the diagnosis of pediatric septic shock.

Published
February 06, 2020
Journal
Molecular medicine reports
PICOID
1eca322f
DOI
Citations
4
Keywords
pediatric septic shock, meta‑analysis, differentially expressed genes, weighted gene co‑expression network analysis, support vector machine classifier
Copyright
Patients/Population/Participants

patients with pediatric septic shock

Intervention

usage of four microarray datasets (GSE26378, GSE26440, GSE13904 and GSE4607) and analysis using the MetaDE and WGCNA packages

Comparison

screening of consistently differentially expressed genes (DEGs) and identification of disease-associated modules and genes

Outcome

construction of a support vector machine (SVM) classifier based on six optimal feature genes for PSS diagnosis

Abstract

P
I
C
O

Septic shock is induced by an uncontrolled inflammatory immune response to pathogens and the survival rate of patients with pediatric septic shock (PSS) is particularly low, with a mortality rate of 25‑50%. The present study explored the mechanisms of PSS using four microarray datasets (GSE26378, GSE26440, GSE13904 and GSE4607) that were obtained from the Gene Expression Omnibus database. Based on the MetaDE package, the consistently differentially expressed genes (DEGs) in the four datasets were screened. Using the WGCNA package, the disease‑associated modules and genes were identified. Subsequently, the optimal feature genes were further selected using the caret package. Finally, a support vector machine (SVM) classifier based on the optimal feature genes was built using the e1071 package. Initially, there were 2,699 consistent DEGs across the four datasets. From the 10 significantly stable modules across the datasets, four stable modules (including the magenta, purple, turquoise and yellow modules), in which the consistent DEGs were significantly enriched (P<0.05), were further screened. Subsequently, six optimal feature genes (including cysteine rich transmembrane module containing 1, S100 calcium binding protein A9, solute carrier family 2 member 14, stomatin, uridine phosphorylase 1 and utrophin) were selected from the genes in the four stable modules. Additionally, an effective SVM classifier was constructed based on the six optimal genes. The SVM classifier based on the six optimal genes has the potential to be applied for PSS diagnosis. This may improve the accuracy of early PSS diagnosis and suggest possible molecular targets for interventions.

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