Identification of anoikis-related genes classification patterns and immune infiltration characterization in ischemic stroke based on machine learning

Qin, Xiaohong and Yi, Shangfeng and Rong, Jingtong and Lu, Haoran and Ji, Baowei and Zhang, Wenfei and Ding, Rui and Wu, Liquan and Chen, Zhibiao (2023) Identification of anoikis-related genes classification patterns and immune infiltration characterization in ischemic stroke based on machine learning. Frontiers in Aging Neuroscience, 15. ISSN 1663-4365

[thumbnail of pubmed-zip/versions/1/package-entries/fnagi-15-1142163/fnagi-15-1142163.pdf] Text
pubmed-zip/versions/1/package-entries/fnagi-15-1142163/fnagi-15-1142163.pdf - Published Version

Download (14MB)

Abstract

Introduction: Ischemic stroke (IS) is a type of stroke that leads to high mortality and disability. Anoikis is a form of programmed cell death. When cells detach from the correct extracellular matrix, anoikis disrupts integrin junctions, thus preventing abnormal proliferating cells from growing or attaching to an inappropriate matrix. Although there is growing evidence that anoikis regulates the immune response, which makes a great contribution to the development of IS, the role of anoikis in the pathogenesis of IS is rarely explored.

Methods: First, we downloaded GSE58294 set and GSE16561 set from the NCBI GEO database. And 35 anoikis-related genes (ARGs) were obtained from GSEA website. The CIBERSORT algorithm was used to estimate the relative proportions of 22 infiltrating immune cell types. Next, consensus clustering method was used to classify ischemic stroke samples. In addition, we used least absolute shrinkage and selection operator (LASSO), support vector machine-recursive feature elimination (SVM-RFE) and random forest (RF) algorithms to screen the key ARGs in ischemic stroke. Next, we performed receiver operating characteristics (ROC) analysis to assess the accuracy of each diagnostic gene. At the same time, the nomogram was constructed to diagnose IS by integrating trait genes. Then, we analyzed the correlation between gene expression and immune cell infiltration of the diagnostic genes in the combined database. And gene ontology (GO) and kyoto encyclopedia of genes and genomes (KEGG) analysis were performed on these genes to explore differential signaling pathways and potential functions, as well as the construction and visualization of regulatory networks using NetworkAnalyst and Cytoscape. Finally, we investigated the expression pattern of ARGs in IS patients across age or gender.

Results: Our study comprehensively analyzed the role of ARGs in IS for the first time. We revealed the expression profile of ARGs in IS and the correlation with infiltrating immune cells. And The results of consensus clustering analysis suggested that we can classify IS patients into two clusters. The machine learning analysis screened five signature genes, including AKT1, BRMS1, PTRH2, TFDP1 and TLE1. We also constructed nomogram models based on the five risk genes and evaluated the immune infiltration correlation, gene-miRNA, gene-TF and drug-gene interaction regulatory networks of these signature genes. The expression of ARGs did not differ by sex or age.

Discussion: This study may provide a beneficial reference for further elucidating the pathogenesis of IS, and render new ideas for drug screening, individualized therapy and immunotherapy of IS.

Item Type: Article
Subjects: Pustakas > Medical Science
Depositing User: Unnamed user with email support@pustakas.com
Date Deposited: 12 Oct 2023 07:05
Last Modified: 12 Oct 2023 07:05
URI: http://archive.pcbmb.org/id/eprint/1016

Actions (login required)

View Item
View Item