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Recognition of DNA Methylation Molecular Features for Diagnosis and Prognosis in Gastric Cancer

Background: The management of gastric cancer (GC) still lacks tumor markers with high specificity and sensitivity. The goal of current research is to find effective diagnostic and prognostic markers and to clarify their related mechanisms. Methods: In this study, we integrated GC DNA methylation dat...

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Autores principales: Liu, Donghui, Li, Long, Wang, Liru, Wang, Chao, Hu, Xiaowei, Jiang, Qingxin, Wang, Xuyao, Xue, Guiqin, Liu, Yu, Xue, Dongbo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8566671/
https://www.ncbi.nlm.nih.gov/pubmed/34745226
http://dx.doi.org/10.3389/fgene.2021.758926
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author Liu, Donghui
Li, Long
Wang, Liru
Wang, Chao
Hu, Xiaowei
Jiang, Qingxin
Wang, Xuyao
Xue, Guiqin
Liu, Yu
Xue, Dongbo
author_facet Liu, Donghui
Li, Long
Wang, Liru
Wang, Chao
Hu, Xiaowei
Jiang, Qingxin
Wang, Xuyao
Xue, Guiqin
Liu, Yu
Xue, Dongbo
author_sort Liu, Donghui
collection PubMed
description Background: The management of gastric cancer (GC) still lacks tumor markers with high specificity and sensitivity. The goal of current research is to find effective diagnostic and prognostic markers and to clarify their related mechanisms. Methods: In this study, we integrated GC DNA methylation data from publicly available datasets obtained from TCGA and GEO databases, and applied random forest and LASSO analysis methods to screen reliable differential methylation sites (DMSs) for GC diagnosis. We constructed a diagnostic model of GC by logistic analysis and conducted verification and clinical correlation analysis. We screened credible prognostic DMSs through univariate Cox and LASSO analyses and verified a prognostic model of GC by multivariate Cox analysis. Independent prognostic and biological function analyses were performed for the prognostic risk score. We performed TP53 correlation analysis, mutation and prognosis analysis on eleven-DNA methylation driver gene (DMG), and constructed a multifactor regulatory network of key genes. Results: The five-DMS diagnostic model distinguished GC from normal samples, and diagnostic risk value was significantly correlated with grade and tumor location. The prediction accuracy of the eleven-DMS prognostic model was verified in both the training and validation datasets, indicating its certain potential for GC survival prediction. The survival rate of the high-risk group was significantly lower than that of the low-risk group. The prognostic risk score was an independent risk factor for the prognosis of GC, which was significantly correlated with N stage and tumor location, positively correlated with the VIM gene, and negatively correlated with the CDH1 gene. The expression of CHRNB2 decreased significantly in the TP53 mutation group of gastric cancer patients, and there were significant differences in CCDC69, RASSF2, CHRNB2, ARMC9, and RPN1 between the TP53 mutation group and the TP53 non-mutation group of gastric cancer patients. In addition, CEP290, UBXN8, KDM4A, RPN1 had high frequency mutations and the function of eleven-DMG mutation related genes in GC patients is widely enriched in multiple pathways. Conclusion: Combined, the five-DMS diagnostic and eleven-DMS prognostic GC models are important tools for accurate and individualized treatment. The study provides direction for exploring potential markers of GC.
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spelling pubmed-85666712021-11-05 Recognition of DNA Methylation Molecular Features for Diagnosis and Prognosis in Gastric Cancer Liu, Donghui Li, Long Wang, Liru Wang, Chao Hu, Xiaowei Jiang, Qingxin Wang, Xuyao Xue, Guiqin Liu, Yu Xue, Dongbo Front Genet Genetics Background: The management of gastric cancer (GC) still lacks tumor markers with high specificity and sensitivity. The goal of current research is to find effective diagnostic and prognostic markers and to clarify their related mechanisms. Methods: In this study, we integrated GC DNA methylation data from publicly available datasets obtained from TCGA and GEO databases, and applied random forest and LASSO analysis methods to screen reliable differential methylation sites (DMSs) for GC diagnosis. We constructed a diagnostic model of GC by logistic analysis and conducted verification and clinical correlation analysis. We screened credible prognostic DMSs through univariate Cox and LASSO analyses and verified a prognostic model of GC by multivariate Cox analysis. Independent prognostic and biological function analyses were performed for the prognostic risk score. We performed TP53 correlation analysis, mutation and prognosis analysis on eleven-DNA methylation driver gene (DMG), and constructed a multifactor regulatory network of key genes. Results: The five-DMS diagnostic model distinguished GC from normal samples, and diagnostic risk value was significantly correlated with grade and tumor location. The prediction accuracy of the eleven-DMS prognostic model was verified in both the training and validation datasets, indicating its certain potential for GC survival prediction. The survival rate of the high-risk group was significantly lower than that of the low-risk group. The prognostic risk score was an independent risk factor for the prognosis of GC, which was significantly correlated with N stage and tumor location, positively correlated with the VIM gene, and negatively correlated with the CDH1 gene. The expression of CHRNB2 decreased significantly in the TP53 mutation group of gastric cancer patients, and there were significant differences in CCDC69, RASSF2, CHRNB2, ARMC9, and RPN1 between the TP53 mutation group and the TP53 non-mutation group of gastric cancer patients. In addition, CEP290, UBXN8, KDM4A, RPN1 had high frequency mutations and the function of eleven-DMG mutation related genes in GC patients is widely enriched in multiple pathways. Conclusion: Combined, the five-DMS diagnostic and eleven-DMS prognostic GC models are important tools for accurate and individualized treatment. The study provides direction for exploring potential markers of GC. Frontiers Media S.A. 2021-10-21 /pmc/articles/PMC8566671/ /pubmed/34745226 http://dx.doi.org/10.3389/fgene.2021.758926 Text en Copyright © 2021 Liu, Li, Wang, Wang, Hu, Jiang, Wang, Xue, Liu and Xue. 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
Liu, Donghui
Li, Long
Wang, Liru
Wang, Chao
Hu, Xiaowei
Jiang, Qingxin
Wang, Xuyao
Xue, Guiqin
Liu, Yu
Xue, Dongbo
Recognition of DNA Methylation Molecular Features for Diagnosis and Prognosis in Gastric Cancer
title Recognition of DNA Methylation Molecular Features for Diagnosis and Prognosis in Gastric Cancer
title_full Recognition of DNA Methylation Molecular Features for Diagnosis and Prognosis in Gastric Cancer
title_fullStr Recognition of DNA Methylation Molecular Features for Diagnosis and Prognosis in Gastric Cancer
title_full_unstemmed Recognition of DNA Methylation Molecular Features for Diagnosis and Prognosis in Gastric Cancer
title_short Recognition of DNA Methylation Molecular Features for Diagnosis and Prognosis in Gastric Cancer
title_sort recognition of dna methylation molecular features for diagnosis and prognosis in gastric cancer
topic Genetics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8566671/
https://www.ncbi.nlm.nih.gov/pubmed/34745226
http://dx.doi.org/10.3389/fgene.2021.758926
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