[Dynamic trajectory and cell communication of different cell clusters in malignant progression of glioblastoma].

Q3 Medicine 北京大学学报(医学版) Pub Date : 2024-04-18
Xiang Cai, Rendong Wang, Shijia Wang, Ziqi Ren, Qiuhong Yu, Dongguo Li
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引用次数: 0

Abstract

Objective: To delve deeply into the dynamic trajectories of cell subpopulations and the communication network among immune cell subgroups during the malignant progression of glioblastoma (GBM), and to endeavor to unearth key risk biomarkers in the GBM malignancy progression, so as to provide a more profound understanding for the treatment and prognosis of this disease by integrating transcriptomic data and clinical information of the GBM patients.

Methods: Utilizing single-cell sequencing data analysis, we constructed a cell subgroup atlas during the malignant progression of GBM. The Monocle2 tool was employed to build dynamic progression trajectories of the tumor cell subgroups in GBM. Through gene enrichment analysis, we explored the biological processes enriched in genes that significantly changed with the malignancy progression of GBM tumor cell subpopulations. CellChat was used to identify the communication network between the different immune cell subgroups. Survival analysis helped in identifying risk molecular markers that impacted the patient prognosis during the malignant progression of GBM. This method ological approach offered a comprehensive and detailed examination of the cellular and molecular dynamics within GBM, providing a robust framework for understanding the disease' s progression and potential therapeutic targets.

Results: The analysis of single-cell sequencing data identified 6 different cell types, including lymphocytes, pericytes, oligodendrocytes, macrophages, glioma cells, and microglia. The 27 151 cells in the single-cell dataset included 3 881 cells from the patients with low-grade glioma (LGG), 10 166 cells from the patients with newly diagnosed GBM, and 13 104 cells from the patients with recurrent glioma (rGBM). The pseudo-time analysis of the glioma cell subgroups indicated significant cellular heterogeneity during malignant progression. The cell interaction analysis of immune cell subgroups revealed the communication network among the different immune subgroups in GBM malignancy, identifying 22 biologically significant ligand-receptor pairs across 12 key biological pathways. Survival analysis had identified 8 genes related to the prognosis of the GBM patients, among which SERPINE1, COL6A1, SPP1, LTF, C1S, AEBP1, and SAA1L were high-risk genes in the GBM patients, and ABCC8 was low-risk genes in the GBM patients. These findings not only provided new theoretical bases for the treatment of GBM, but also offered fresh insights for the prognosis assessment and treatment decision-making for the GBM patients.

Conclusion: This research comprehensively and profoundly reveals the dynamic changes in glioma cell subpopulations and the communication patterns among the immune cell subgroups during the malignant progression of GBM. These findings are of significant importance for understanding the complex biological processes of GBM, providing crucial new insights for precision medicine and treatment decisions in GBM. Through these studies, we hope to provide more effective treatment options and more accurate prognostic assessments for the patients with GBM.

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[胶质母细胞瘤恶性发展过程中不同细胞群的动态轨迹和细胞通讯]。
研究目的深入研究胶质母细胞瘤(GBM)恶性进展过程中细胞亚群的动态轨迹和免疫细胞亚群之间的通讯网络,并通过整合GBM患者的转录组数据和临床信息,努力发现GBM恶性进展过程中的关键风险生物标志物,从而为该疾病的治疗和预后提供更深刻的认识:方法:通过单细胞测序数据分析,我们构建了GBM恶性进展过程中的细胞亚群图谱。我们利用 Monocle2 工具构建了 GBM 肿瘤细胞亚群的动态进展轨迹。通过基因富集分析,我们探索了随着 GBM 肿瘤细胞亚群恶性进展而发生显著变化的基因所富集的生物学过程。CellChat用于识别不同免疫细胞亚群之间的通讯网络。生存期分析有助于确定在GBM恶性发展过程中影响患者预后的风险分子标记。这种逻辑方法全面而详细地研究了GBM的细胞和分子动态,为了解疾病的进展和潜在的治疗目标提供了一个强有力的框架:单细胞测序数据分析确定了6种不同的细胞类型,包括淋巴细胞、周细胞、少突胶质细胞、巨噬细胞、胶质瘤细胞和小胶质细胞。单细胞数据集中的27 151个细胞包括来自低级别胶质瘤(LGG)患者的3 881个细胞、来自新诊断为GBM患者的10 166个细胞和来自复发性胶质瘤(rGBM)患者的13 104个细胞。胶质瘤细胞亚群的伪时间分析表明,在恶性进展过程中细胞具有显著的异质性。免疫细胞亚群的细胞相互作用分析揭示了GBM恶性肿瘤中不同免疫亚群之间的交流网络,在12条关键生物通路中发现了22对具有生物学意义的配体-受体。生存分析发现了8个与GBM患者预后相关的基因,其中SERPINE1、COL6A1、SPP1、LTF、C1S、AEBP1和SAA1L是GBM患者的高危基因,而ABCC8是GBM患者的低危基因。这些发现不仅为GBM的治疗提供了新的理论依据,也为GBM患者的预后评估和治疗决策提供了新的见解:这项研究全面而深刻地揭示了胶质瘤恶性发展过程中胶质瘤细胞亚群的动态变化以及免疫细胞亚群之间的交流模式。这些发现对于理解 GBM 复杂的生物学过程具有重要意义,为 GBM 的精准医疗和治疗决策提供了至关重要的新见解。我们希望通过这些研究为 GBM 患者提供更有效的治疗方案和更准确的预后评估。
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来源期刊
北京大学学报(医学版)
北京大学学报(医学版) Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
9815
期刊介绍: Beijing Da Xue Xue Bao Yi Xue Ban / Journal of Peking University (Health Sciences), established in 1959, is a national academic journal sponsored by Peking University, and its former name is Journal of Beijing Medical University. The coverage of the Journal includes basic medical sciences, clinical medicine, oral medicine, surgery, public health and epidemiology, pharmacology and pharmacy. Over the last few years, the Journal has published articles and reports covering major topics in the different special issues (e.g. research on disease genome, theory of drug withdrawal, mechanism and prevention of cardiovascular and cerebrovascular diseases, stomatology, orthopaedic, public health, urology and reproductive medicine). All the topics involve latest advances in medical sciences, hot topics in specific specialties, and prevention and treatment of major diseases. The Journal has been indexed and abstracted by PubMed Central (PMC), MEDLINE/PubMed, EBSCO, Embase, Scopus, Chemical Abstracts (CA), Western Pacific Region Index Medicus (WPR), JSTChina, and almost all the Chinese sciences and technical index systems, including Chinese Science and Technology Paper Citation Database (CSTPCD), Chinese Science Citation Database (CSCD), China BioMedical Bibliographic Database (CBM), CMCI, Chinese Biological Abstracts, China National Academic Magazine Data-Base (CNKI), Wanfang Data (ChinaInfo), etc.
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