Development and validation of biomarkers related to anoikis in liver cirrhosis based on bioinformatics analysis.

IF 2.5 Q2 GASTROENTEROLOGY & HEPATOLOGY
Jiang-Yan Luo, Sheng Zheng, Juan Yang, Chi Ma, Xiao-Ying Ma, Xing-Xing Wang, Xin-Nian Fu, Xiao-Zhou Mao
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引用次数: 0

Abstract

Background: According to study, anoikis-related genes (ARGs) have been demonstrated to play a significant impact in cirrhosis, a major disease threatening human health worldwide.

Aim: To investigate the relationship between ARGs and cirrhosis development to provide insights into the clinical treatment of cirrhosis.

Methods: RNA-sequencing data related to cirrhosis were obtained from the Gene Expression Omnibus database. Differentially expressed genes (DEGs) between cirrhotic and normal tissues were intersected with ARGs to derive differentially expressed ARGs (DEARGs). The DEARGs were filtered using the least absolute shrinkage and selection operator, support vector machine recursive feature elimination, and random forest algorithms to identify biomarkers for cirrhosis. These biomarkers were used to create a nomogram for predicting the prognosis of cirrhosis. The proportions of diverse immune cell subsets in cirrhotic vs normal tissues were compared using the CIBERSORT computational method. In addition, the linkage between immune cells and biomarkers was assessed, and a regulatory network of mRNA, miRNA, and transcription factors was constructed relying on the biomarkers.

Results: The comparison of cirrhotic and normal tissue samples led to the identification of 635 DEGs. Subsequent intersection of the DEGs with ARGs produced a set of 26 DEARGs. Subsequently, three DEARGs, namely, ACTG1, STAT1, and CCR7, were identified as biomarkers using three machine-learning algorithms. The proportions of M1 and M2 macrophages, resting CD4 memory T cells, resting mast cells, and plasma cells significantly differed between cirrhotic and normal tissue samples. The proportions of M1 and M2 macrophages, resting CD4 memory T cells, and resting mast cells were significantly correlated with the expression of the three biomarkers. The mRNA-miRNA-TF network showed that ACTG1, CCR7, and STAT1 were regulated by 28, 42, and 35 miRNAs, respectively. Moreover, AR, MAX, EP300, and FOXA1 were found to regulate four miRNAs related to the biomarkers.

Conclusion: This study revealed ACTG1, STAT1, and CCR7 as biomarkers of cirrhosis, providing a reference for developing novel diagnostic and therapeutic strategies for cirrhosis.

基于生物信息学分析,开发并验证肝硬化中与anoikis相关的生物标记物。
背景:研究表明,肝硬化是威胁全球人类健康的主要疾病,而肝硬化相关基因(ARGs)对肝硬化的发生有重要影响:目的:研究ARGs与肝硬化发展之间的关系,为肝硬化的临床治疗提供启示:方法:从基因表达总库(Gene Expression Omnibus)数据库中获取与肝硬化相关的 RNA 序列数据。将肝硬化组织和正常组织之间的差异表达基因(DEGs)与ARGs交叉,得出差异表达的ARGs(DEARGs)。使用最小绝对收缩和选择算子、支持向量机递归特征消除和随机森林算法对 DEARGs 进行筛选,以确定肝硬化的生物标记物。这些生物标志物被用于创建预测肝硬化预后的提名图。使用 CIBERSORT 计算方法比较了肝硬化与正常组织中不同免疫细胞亚群的比例。此外,还评估了免疫细胞与生物标志物之间的联系,并根据生物标志物构建了mRNA、miRNA和转录因子的调控网络:结果:通过比较肝硬化组织样本和正常组织样本,发现了 635 个 DEGs。随后将 DEGs 与 ARGs 相交,产生了一组 26 个 DEARGs。随后,利用三种机器学习算法将三个 DEARGs(即 ACTG1、STAT1 和 CCR7)确定为生物标记物。肝硬化组织样本和正常组织样本中的M1和M2巨噬细胞、静息CD4记忆T细胞、静息肥大细胞和浆细胞的比例存在显著差异。M1和M2巨噬细胞、静息CD4记忆T细胞和静息肥大细胞的比例与三种生物标志物的表达有明显的相关性。mRNA-miRNA-TF网络显示,ACTG1、CCR7和STAT1分别受28、42和35个miRNA调控。此外,还发现AR、MAX、EP300和FOXA1调控4个与生物标志物相关的miRNA:这项研究揭示了 ACTG1、STAT1 和 CCR7 是肝硬化的生物标志物,为开发新的肝硬化诊断和治疗策略提供了参考。
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来源期刊
World Journal of Hepatology
World Journal of Hepatology GASTROENTEROLOGY & HEPATOLOGY-
CiteScore
4.10
自引率
4.20%
发文量
172
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