Zhang Hengrui, Wang Jiwei, Su Nan, Yang Ning, Wang Xinyu, Li Chao
Department of Neurosurgery, Qilu Hospital, Cheeloo College of Medicine and Institute of Brain and Brain-Inspired Science, Shandong University, Jinan, China.
Jinan Microecological Biomedicine Shandong Laboratory and Shandong Key Laboratory of Brain Function Remodeling, Jinan, China.
Front Aging Neurosci. 2024 May 30;16:1352681. doi: 10.3389/fnagi.2024.1352681. eCollection 2024.
The prognosis for glioma is generally poor, and the 5-year survival rate for patients with this disease has not shown significant improvement over the past few decades. Parkinson's disease (PD) is a prevalent movement disorder, ranking as the second most common neurodegenerative disease after Alzheimer's disease. Although Parkinson's disease and glioma are distinct diseases, they may share certain underlying biological pathways that contribute to their development.
This study aims to investigate the involvement of genes associated with Parkinson's disease in the development and prognosis of glioma.
We obtained datasets from the TCGA, CGGA, and GEO databases, which included RNA sequencing data and clinical information of glioma and Parkinson's patients. Eight machine learning algorithms were used to identify Parkinson-Glioma feature genes (PGFGs). PGFGs associated with glioma prognosis were identified through univariate Cox analysis. A risk signature was constructed based on PGFGs using Cox regression analysis and the Least Absolute Shrinkage and Selection Operator (LASSO) method. We subsequently validated its predictive ability using various methods, including ROC curves, calibration curves, KM survival analysis, C-index, DCA, independent prognostic analysis, and stratified analysis. To validate the reproducibility of the results, similar work was performed on three external test datasets. Additionally, a meta-analysis was employed to observe the heterogeneity and consistency of the signature across different datasets. We also compared the differences in genomic variations, functional enrichment, immune infiltration, and drug sensitivity analysis based on risk scores. This exploration aimed to uncover potential mechanisms of glioma occurrence and prognosis.
We identified 30 PGFGs, of which 25 were found to be significantly associated with glioma survival. The prognostic signature, consisting of 19 genes, demonstrated excellent predictive performance for 1-, 2-, and 3-year overall survival (OS) of glioma. The signature emerged as an independent prognostic factor for glioma overall survival (OS), surpassing the predictive performance of traditional clinical variables. Notably, we observed differences in the tumor microenvironment (TME), levels of immune cell infiltration, immune gene expression, and drug resistance analysis among distinct risk groups. These findings may have significant implications for the clinical treatment of glioma patients.
The expression of genes related to Parkinson's disease is closely associated with the immune status and prognosis of glioma patients, potentially regulating glioma pathogenesis through multiple mechanisms. The interaction between genes associated with Parkinson's disease and the immune system during glioma development provides novel insights into the molecular mechanisms and targeted therapies for glioma.
胶质瘤的预后通常较差,在过去几十年中,该疾病患者的5年生存率并未显著提高。帕金森病(PD)是一种常见的运动障碍,是仅次于阿尔茨海默病的第二常见神经退行性疾病。尽管帕金森病和胶质瘤是不同的疾病,但它们可能共享某些有助于其发展的潜在生物学途径。
本研究旨在调查与帕金森病相关的基因在胶质瘤发生发展和预后中的作用。
我们从TCGA、CGGA和GEO数据库中获取数据集,其中包括胶质瘤和帕金森病患者的RNA测序数据及临床信息。使用八种机器学习算法识别帕金森 - 胶质瘤特征基因(PGFGs)。通过单变量Cox分析确定与胶质瘤预后相关的PGFGs。使用Cox回归分析和最小绝对收缩和选择算子(LASSO)方法基于PGFGs构建风险特征。随后,我们使用多种方法验证其预测能力,包括ROC曲线、校准曲线、KM生存分析、C指数、DCA、独立预后分析和分层分析。为了验证结果的可重复性,在三个外部测试数据集上进行了类似的工作。此外,采用荟萃分析观察不同数据集之间特征的异质性和一致性。我们还比较了基于风险评分的基因组变异、功能富集、免疫浸润和药物敏感性分析的差异。此次探索旨在揭示胶质瘤发生和预后的潜在机制。
我们鉴定出30个PGFGs,其中25个被发现与胶质瘤生存显著相关。由19个基因组成的预后特征对胶质瘤1年、2年和3年总生存期(OS)表现出优异的预测性能。该特征成为胶质瘤总生存期(OS)的独立预后因素,超越了传统临床变量的预测性能。值得注意的是,我们在不同风险组之间观察到肿瘤微环境(TME)、免疫细胞浸润水平、免疫基因表达和耐药性分析的差异。这些发现可能对胶质瘤患者的临床治疗具有重要意义。
帕金森病相关基因的表达与胶质瘤患者的免疫状态和预后密切相关,可能通过多种机制调节胶质瘤发病机制。胶质瘤发展过程中帕金森病相关基因与免疫系统之间的相互作用为胶质瘤的分子机制和靶向治疗提供了新的见解。