Establishment of a novel prognostic prediction model through bioinformatics analysis for prostate cancer based on ferroptosis-related genes and its application in immune cell infiltration.
Bo-Yu Yang, Mei-Shan Zhao, Ming-Jun Shi, Jing-Cheng Lv, Ye Tian, Yi-Chen Zhu, Fang-Zhou Zhao, Xuan-Hao Li, Jian Song
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引用次数: 1
Abstract
Background: Ferroptosis-related genes (FRGs) play vital roles in survival and prognosis of prostate cancer (PCa) patients. We establish a ferroptosis-related prediction model through bioinformatics analysis for overall survival (OS) and disease-free survival (DFS), so as to evaluate the clinical survival status through the characteristics of immune cell infiltration (ICI), which could provide information for treatment monitoring.
Methods: At first, 268 FRGs were obtained from previous studies. Differentially expressed FRGs were identified based on The Cancer Genome Atlas (TCGA) database, and FRG enrichment analysis was performed by Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG). We then performed univariate, least absolute shrinkage and selection operator (LASSO), and multivariate Cox regression analyses to establish OS- and DFS-related prognostic prediction models. The association of the model and clinicopathological features was further analyzed. Subsequently, unique genomic signatures of immune cell subsets were obtained through the KEGG database. Based on specific genes associated with ferroptosis and their association with ICI, immune infiltration was assessed in patients in different risk groups.
Results: We constructed an OS- and an DFS-prognostic model through bioinformatics analysis. The predicted values of OS and DFS-related models were higher in T3-4 than in T1-2 (P=0.0057, P<0.001), and the predicted value of the DFS model in N0 stage was higher than that in N1 stage (P=0.0136). Results of Single-sample gene set enrichment analysis (ssGSEA) on the basis of the KEGG dataset showed p53 signaling being the most enriched signal in the high-risk group, while endocytosis was the most enriched signal in the low-risk group. M2 macrophages (P=0.007) and neutrophils (P=0.024) were enriched in the high-risk group, and CD4-activated memory T cells were significantly accumulated in the low-risk group (P=0.017).
Conclusions: The OS- and DFS-related model based on FRGs and ICI create new insights into the disease state assessment of PCa patients., which may aid in the development of individualized and precise treatment in the future.
背景:嗜铁相关基因(FRGs)在前列腺癌(PCa)患者的生存和预后中起着至关重要的作用。我们通过对总生存期(OS)和无病生存期(DFS)的生物信息学分析,建立与铁中毒相关的预测模型,通过免疫细胞浸润(ICI)特征评价临床生存状况,为治疗监测提供信息。方法:首先,从以往的研究中获得268个frg。基于The Cancer Genome Atlas (TCGA)数据库鉴定差异表达的FRG,并通过Gene Ontology (GO)和Kyoto Encyclopedia of Genes and Genomes (KEGG)进行FRG富集分析。然后,我们进行了单变量、最小绝对收缩和选择算子(LASSO)和多变量Cox回归分析,以建立OS和dfs相关的预后预测模型。进一步分析模型与临床病理特征的关系。随后,通过KEGG数据库获得了免疫细胞亚群的独特基因组特征。根据与铁下垂相关的特定基因及其与ICI的关系,评估不同风险组患者的免疫浸润。结果:通过生物信息学分析,建立了OS-和dfs -预后模型。结论:基于FRGs和ICI的OS和dfs相关模型为PCa患者的疾病状态评估提供了新的见解。,这可能有助于未来个性化和精确治疗的发展。
期刊介绍:
ranslational Andrology and Urology (Print ISSN 2223-4683; Online ISSN 2223-4691; Transl Androl Urol; TAU) is an open access, peer-reviewed, bi-monthly journal (quarterly published from Mar.2012 - Dec. 2014). The main focus of the journal is to describe new findings in the field of translational research of Andrology and Urology, provides current and practical information on basic research and clinical investigations of Andrology and Urology. Specific areas of interest include, but not limited to, molecular study, pathology, biology and technical advances related to andrology and urology. Topics cover range from evaluation, prevention, diagnosis, therapy, prognosis, rehabilitation and future challenges to urology and andrology. Contributions pertinent to urology and andrology are also included from related fields such as public health, basic sciences, education, sociology, and nursing.