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Immune mechanism of low bone mineral density caused by ankylosing spondylitis based on bioinformatics and machine learning

Background and Objective: This study aims to find the key immune genes and mechanisms of low bone mineral density (LBMD) in ankylosing spondylitis (AS) patients. Methods: AS and LBMD datasets were downloaded from the GEO database, and differential expression gene analysis was performed to obtain DEG...

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Autores principales: Zhang, Ding, Liu, Jia, Gao, Bing, Zong, Yuan, Guan, Xiaoqing, Zhang, Fengyi, Shen, Zhubin, Lv, Shijie, Guo, Li, Yin, Fei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9716034/
https://www.ncbi.nlm.nih.gov/pubmed/36468006
http://dx.doi.org/10.3389/fgene.2022.1054035
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author Zhang, Ding
Liu, Jia
Gao, Bing
Zong, Yuan
Guan, Xiaoqing
Zhang, Fengyi
Shen, Zhubin
Lv, Shijie
Guo, Li
Yin, Fei
author_facet Zhang, Ding
Liu, Jia
Gao, Bing
Zong, Yuan
Guan, Xiaoqing
Zhang, Fengyi
Shen, Zhubin
Lv, Shijie
Guo, Li
Yin, Fei
author_sort Zhang, Ding
collection PubMed
description Background and Objective: This study aims to find the key immune genes and mechanisms of low bone mineral density (LBMD) in ankylosing spondylitis (AS) patients. Methods: AS and LBMD datasets were downloaded from the GEO database, and differential expression gene analysis was performed to obtain DEGs. Immune-related genes (IRGs) were obtained from ImmPort. Overlapping DEGs and IRGs got I-DEGs. Pearson coefficients were used to calculate DEGs and IRGs correlations in the AS and LBMD datasets. Louvain community discovery was used to cluster the co-expression network to get gene modules. The module most related to the immune module was defined as the key module. Metascape was used for enrichment analysis of key modules. Further, I-DEGs with the same trend in AS and LBMD were considered key I-DEGs. Multiple machine learning methods were used to construct diagnostic models based on key I-DEGs. IID database was used to find the context of I-DEGs, especially in the skeletal system. Gene–biological process and gene-pathway networks were constructed based on key I-DEGs. In addition, immune infiltration was analyzed on the AS dataset using the CIBERSORT algorithm. Results: A total of 19 genes were identified I-DEGs, of which IFNAR1, PIK3CG, PTGER2, TNF, and CCL3 were considered the key I-DEGs. These key I-DEGs had a good relationship with the hub genes of key modules. Multiple machine learning showed that key I-DEGs, as a signature, had an excellent diagnostic performance in both AS and LBMD, and the SVM model had the highest AUC value. Key I-DEGs were closely linked through bridge genes, especially in the skeletal system. Pathway analysis showed that PIK3CG, IFNAR1, CCL3, and TNF participated in NETs formation through pathways such as the MAPK signaling pathway. Immune infiltration analysis showed neutrophils had the most significant differences between case and control groups and a good correlation with key I-DEG. Conclusion: The key I-DEGs, TNF, CCL3, PIK3CG, PTGER2, and IFNAR1, can be utilized as biomarkers to determine the risk of LBMD in AS patients. They may affect neutrophil infiltration and NETs formation to influence the bone remodeling process in AS.
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spelling pubmed-97160342022-12-03 Immune mechanism of low bone mineral density caused by ankylosing spondylitis based on bioinformatics and machine learning Zhang, Ding Liu, Jia Gao, Bing Zong, Yuan Guan, Xiaoqing Zhang, Fengyi Shen, Zhubin Lv, Shijie Guo, Li Yin, Fei Front Genet Genetics Background and Objective: This study aims to find the key immune genes and mechanisms of low bone mineral density (LBMD) in ankylosing spondylitis (AS) patients. Methods: AS and LBMD datasets were downloaded from the GEO database, and differential expression gene analysis was performed to obtain DEGs. Immune-related genes (IRGs) were obtained from ImmPort. Overlapping DEGs and IRGs got I-DEGs. Pearson coefficients were used to calculate DEGs and IRGs correlations in the AS and LBMD datasets. Louvain community discovery was used to cluster the co-expression network to get gene modules. The module most related to the immune module was defined as the key module. Metascape was used for enrichment analysis of key modules. Further, I-DEGs with the same trend in AS and LBMD were considered key I-DEGs. Multiple machine learning methods were used to construct diagnostic models based on key I-DEGs. IID database was used to find the context of I-DEGs, especially in the skeletal system. Gene–biological process and gene-pathway networks were constructed based on key I-DEGs. In addition, immune infiltration was analyzed on the AS dataset using the CIBERSORT algorithm. Results: A total of 19 genes were identified I-DEGs, of which IFNAR1, PIK3CG, PTGER2, TNF, and CCL3 were considered the key I-DEGs. These key I-DEGs had a good relationship with the hub genes of key modules. Multiple machine learning showed that key I-DEGs, as a signature, had an excellent diagnostic performance in both AS and LBMD, and the SVM model had the highest AUC value. Key I-DEGs were closely linked through bridge genes, especially in the skeletal system. Pathway analysis showed that PIK3CG, IFNAR1, CCL3, and TNF participated in NETs formation through pathways such as the MAPK signaling pathway. Immune infiltration analysis showed neutrophils had the most significant differences between case and control groups and a good correlation with key I-DEG. Conclusion: The key I-DEGs, TNF, CCL3, PIK3CG, PTGER2, and IFNAR1, can be utilized as biomarkers to determine the risk of LBMD in AS patients. They may affect neutrophil infiltration and NETs formation to influence the bone remodeling process in AS. Frontiers Media S.A. 2022-11-18 /pmc/articles/PMC9716034/ /pubmed/36468006 http://dx.doi.org/10.3389/fgene.2022.1054035 Text en Copyright © 2022 Zhang, Liu, Gao, Zong, Guan, Zhang, Shen, Lv, Guo and Yin. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Genetics
Zhang, Ding
Liu, Jia
Gao, Bing
Zong, Yuan
Guan, Xiaoqing
Zhang, Fengyi
Shen, Zhubin
Lv, Shijie
Guo, Li
Yin, Fei
Immune mechanism of low bone mineral density caused by ankylosing spondylitis based on bioinformatics and machine learning
title Immune mechanism of low bone mineral density caused by ankylosing spondylitis based on bioinformatics and machine learning
title_full Immune mechanism of low bone mineral density caused by ankylosing spondylitis based on bioinformatics and machine learning
title_fullStr Immune mechanism of low bone mineral density caused by ankylosing spondylitis based on bioinformatics and machine learning
title_full_unstemmed Immune mechanism of low bone mineral density caused by ankylosing spondylitis based on bioinformatics and machine learning
title_short Immune mechanism of low bone mineral density caused by ankylosing spondylitis based on bioinformatics and machine learning
title_sort immune mechanism of low bone mineral density caused by ankylosing spondylitis based on bioinformatics and machine learning
topic Genetics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9716034/
https://www.ncbi.nlm.nih.gov/pubmed/36468006
http://dx.doi.org/10.3389/fgene.2022.1054035
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