Gronauer Raphael, Madersbacher Leonie, Monfort-Lanzas Pablo, Floriani Gabriel, Sprung Susanne, Zeimet Alain Gustave, Marth Christian, Fiegl Heidelinde, Hackl Hubert
Institute of Bioinformatics, Biocenter, Medical University of Innsbruck, Innsbruck, Austria.
Institute of Medical Biochemistry, Biocenter, Medical University of Innsbruck, Innsbruck, Austria.
Front Immunol. 2024 Nov 28;15:1489235. doi: 10.3389/fimmu.2024.1489235. eCollection 2024.
The efficacy of immunotherapies in high-grade serous ovarian cancer (HGSOC) is limited, but clinical trials investigating the potential of combination immunotherapy including poly-ADP-ribose polymerase inhibitors (PARPis) are ongoing. Homologous recombination repair deficiency or BRCAness and the composition of the tumor microenvironment appear to play a critical role in determining the therapeutic response.
We conducted comprehensive immunogenomic analyses of HGSOC using data from several patient cohorts. Machine learning methods were used to develop a classification model for BRCAness from gene expression data. Integrated analysis of bulk and single-cell RNA sequencing data was used to delineate the tumor immune microenvironment and was validated by immunohistochemistry. The impact of PARPi and BRCA1 mutations on the activation of immune-related pathways was studied using ovarian cancer cell lines, RNA sequencing, and immunofluorescence analysis.
We identified a 24-gene signature that predicts BRCAness. Comprehensive immunogenomic analyses across patient cohorts identified samples with BRCAness and high immune infiltration. Further characterization of these samples revealed increased infiltration of immunosuppressive cells, including tumor-associated macrophages expressing , , and , as specified by single-cell RNA sequencing data and gene expression analysis of samples from patients receiving combination therapy with PARPi and anti-PD-1. Our findings show also that genomic instability and PARPi activated the cGAS-STING signaling pathway and the downstream innate immune response in a similar manner to HGSOC patients with BRCAness status. Finally, we have developed a web application (https://ovrseq.icbi.at) and an associated R package OvRSeq, which allow for comprehensive characterization of ovarian cancer patient samples and assessment of a vulnerability score that enables stratification of patients to predict response to the combination immunotherapy.
Genomic instability in HGSOC affects the tumor immune environment, and TAMs play a crucial role in modulating the immune response. Based on various datasets, we have developed a diagnostic application that uses RNA sequencing data not only to comprehensively characterize HGSOC but also to predict vulnerability and response to combination immunotherapy.
免疫疗法在高级别浆液性卵巢癌(HGSOC)中的疗效有限,但正在进行的临床试验正在研究包括聚ADP - 核糖聚合酶抑制剂(PARPis)在内的联合免疫疗法的潜力。同源重组修复缺陷或BRCAness以及肿瘤微环境的组成似乎在决定治疗反应中起关键作用。
我们使用来自几个患者队列的数据对HGSOC进行了全面的免疫基因组分析。机器学习方法用于从基因表达数据开发BRCAness分类模型。对批量和单细胞RNA测序数据进行综合分析以描绘肿瘤免疫微环境,并通过免疫组织化学进行验证。使用卵巢癌细胞系、RNA测序和免疫荧光分析研究了PARPi和BRCA1突变对免疫相关途径激活的影响。
我们鉴定出一个可预测BRCAness的24基因特征。对患者队列进行的全面免疫基因组分析确定了具有BRCAness和高免疫浸润的样本。对这些样本的进一步表征显示免疫抑制细胞浸润增加,包括单细胞RNA测序数据和接受PARPi与抗PD - 1联合治疗患者样本的基因表达分析所确定的表达 、 和 的肿瘤相关巨噬细胞。我们的研究结果还表明,基因组不稳定性和PARPi以与具有BRCAness状态的HGSOC患者相似的方式激活了cGAS - STING信号通路和下游先天性免疫反应。最后,我们开发了一个网络应用程序(https://ovrseq.icbi.at)和一个相关的R包OvRSeq,可对卵巢癌患者样本进行全面表征,并评估一个易感性评分,该评分能够对患者进行分层以预测对联合免疫疗法的反应。
HGSOC中的基因组不稳定性影响肿瘤免疫环境,肿瘤相关巨噬细胞在调节免疫反应中起关键作用。基于各种数据集,我们开发了一种诊断应用程序,该应用程序不仅使用RNA测序数据全面表征HGSOC,还可预测对联合免疫疗法的易感性和反应。