Identification of Immune Infiltration-related Molecular Features in Ovarian Cancer Patients and Experimental Validation of Immune Response Molecular Mechanisms through Integrated WGCNA, Machine Learning, and Single-cell Sequencing Analysis.

Juan Yang, Chengli Wen, Ping Li, Mingxiao Yao, Jing Wang
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引用次数: 0

Abstract

Background: Ovarian cancer is one of the most common gynecological malignancies globally, and immunotherapy has emerged as a promising treatment strategy in recent years. However, the effectiveness of immunotherapy is often limited by immune escape mechanisms.

Objective: To unravel the immune response mechanisms in ovarian cancer, this study aimed to employ integrated Weighted Gene Co-expression Network Analysis (WGCNA), machine learning, and single-- cell sequencing analysis to systematically investigate immune infiltration-related molecular features in ovarian cancer patients and experimentally validate the molecular mechanisms of the immune response. This research may provide a new theoretical foundation and treatment strategy for immune-based therapies in ovarian cancer.

Methods: Relevant ovarian cancer datasets were collected from public databases. The ConsensusCluster- Plus and ggplot2 R packages were used to perform dimensionality reduction and clustering analysis of immune infiltration-related genes. Various algorithms were employed to select the best ovarian cancer prognostic model with OC consistency. The prognostic value of angiogenesis and immune-related gene expression was evaluated through Kaplan-Meier survival analysis, and the impact of immune infiltration on immune function in ovarian cancer patients was assessed. Functional pathways were identified using the Gene Set Enrichment Analysis (GSEA) method, and the infiltration abundance of immune and stromal components was inferred using the single-sample Gene Set Enrichment Analysis (ssGSEA) method. The influence of angiogenesis on the cellular level of Ovarian Cancer (OC) was explored in single- cell sequencing data, followed by in vitro cell experiments for further validation. The effect of the angiogenesis model on OC was evaluated through the above-mentioned research and experiments, aiming to investigate the mechanism of targeted therapy strategies in ovarian cancer.

Results: Immune-related data were collected from ovarian cancer patients in this study. Through WGCNA analysis, the MEturquoise module was identified, and a total of 1018 hub genes were determined. A prediction model was constructed using machine learning, with CoxBoost+StepCox selected as the best model, leading to the identification of 10 genes associated with ovarian cancer. Patients with high AIDPS had shorter survival time, and GSEA analysis revealed enrichment in immune-related pathways. Single-sample gene set enrichment analysis demonstrated increased immune cell infiltration and malignant stromal changes in the high AIDPS group. Results from in vitro cell experiments showed that silencing RPL31 inhibited the proliferation and migration of ovarian cancer cells while enhancing immune response capability.

Conclusion: AIDPS holds significant clinical significance in Ovarian Cancer (OC) with poor prognosis observed in patients with high AIDPS. These patients exhibit more significant genomic variations, denser immune cell infiltration, and greater tolerance toward immune therapy. Importantly, inhibiting the expression of RPL31, a key component of AIDPS, can significantly suppress the proliferation, migration, and invasive properties of ovarian cancer cells, while stimulating the cytotoxicity of effector T cells and promoting immune response, thus slowing down the progression of ovarian cancer.

通过整合 WGCNA、机器学习和单细胞测序分析,识别卵巢癌患者免疫浸润相关分子特征并对免疫反应分子机制进行实验验证
背景:卵巢癌是全球最常见的妇科恶性肿瘤之一:卵巢癌是全球最常见的妇科恶性肿瘤之一,近年来,免疫疗法已成为一种前景广阔的治疗策略。然而,免疫疗法的有效性往往受到免疫逃逸机制的限制:为揭示卵巢癌的免疫应答机制,本研究旨在综合运用加权基因共表达网络分析(WGCNA)、机器学习和单细胞测序分析等方法,系统研究卵巢癌患者免疫浸润相关的分子特征,并通过实验验证免疫应答的分子机制。这项研究可为卵巢癌的免疫疗法提供新的理论基础和治疗策略:方法:从公共数据库中收集相关的卵巢癌数据集。使用 ConsensusCluster- Plus 和 ggplot2 R 软件包对免疫浸润相关基因进行降维和聚类分析。研究人员采用了多种算法来选择具有 OC 一致性的最佳卵巢癌预后模型。通过 Kaplan-Meier 生存分析评估了血管生成和免疫相关基因表达的预后价值,并评估了免疫浸润对卵巢癌患者免疫功能的影响。利用基因组富集分析(Gene Set Enrichment Analysis,GSEA)方法确定了功能通路,并利用单样本基因组富集分析(ssGSEA)方法推断了免疫和基质成分的浸润丰度。在单细胞测序数据中探讨了血管生成对卵巢癌(OC)细胞水平的影响,然后进行体外细胞实验进一步验证。通过上述研究和实验,评估了血管生成模型对卵巢癌的影响,旨在研究卵巢癌靶向治疗策略的机制:本研究收集了卵巢癌患者的免疫相关数据。通过WGCNA分析,确定了MEturquoise模块,并确定了1018个枢纽基因。利用机器学习构建了一个预测模型,其中CoxBoost+StepCox被选为最佳模型,从而确定了10个与卵巢癌相关的基因。高AIDPS患者的生存时间较短,GSEA分析显示了免疫相关通路的富集。单样本基因组富集分析显示,高AIDPS组的免疫细胞浸润和恶性基质变化增加。体外细胞实验结果显示,沉默 RPL31 可抑制卵巢癌细胞的增殖和迁移,同时增强免疫反应能力:结论:AIDPS 在卵巢癌(OC)中具有重要的临床意义,高 AIDPS 患者的预后较差。这些患者表现出更明显的基因组变异、更密集的免疫细胞浸润以及对免疫疗法更强的耐受性。重要的是,抑制 AIDPS 的关键成分 RPL31 的表达可以显著抑制卵巢癌细胞的增殖、迁移和侵袭性,同时刺激效应 T 细胞的细胞毒性并促进免疫反应,从而减缓卵巢癌的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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