79个胶质母细胞瘤转录组肿瘤抗原候选物的鉴定和优先排序。

IF 5.1
Špela Kert, Jože Pižem, Sara Petrin, Matic Bošnjak, Miha Jerala, Alenka Matjašič, Andrej Zupan
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引用次数: 0

摘要

胶质母细胞瘤(GBM)是一种侵袭性脑肿瘤,对当前免疫治疗方法的反应性有限,部分原因是其低突变负担和肿瘤内异质性。因此,系统地了解肿瘤抗原景观对于推进肿瘤免疫学和支持免疫治疗策略的合理发展至关重要。在这项研究中,我们对79个福尔马林固定石蜡包埋(FFPE) idh野生型GBM样本中提取的RNA进行了全转录组测序,以系统地鉴定和优先考虑来自三种来源的候选肿瘤抗原:单核苷酸变异(snv)、过表达肿瘤相关抗原(TAAs)和基因融合事件。候选肽使用综合计算标准进行评估,包括转录物表达、预测抗原加工特征、肽- hla结合亲和力和稳定性。在整个队列中,突变衍生的肿瘤特异性抗原(tsa)在很大程度上是个体样本的私有抗原,而TAAs则构成了一个更大、更常见的候选库。尽管不同抗原类别的预测结合特性具有可比性,但复发模式存在很大差异,反映了它们不同的生物学起源。融合衍生的候选物是罕见的和样本特异性的。预测的肽表现与HLA I类等位基因的有限子集不成比例地相关。总的来说,本研究提供了一个系统的转录表达GBM候选抗原的优先目录,并在统一的基于转录组的框架内对突变、表达和融合来源的抗原来源进行了比较评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification and prioritisation of tumour antigen candidates from 79 glioblastoma transcriptomes.

Glioblastoma (GBM) is an aggressive brain tumour with limited responsiveness to current immunotherapeutic approaches, partly due to its low mutational burden and intra-tumour heterogeneity. A systematic understanding of the tumour antigen landscape is therefore essential for advancing tumour immunology and supporting rational development of immunotherapeutic strategies. In this study, we performed whole-transcriptome sequencing of RNA extracted from 79 formalin-fixed paraffin-embedded (FFPE) IDH-wildtype GBM samples to systematically identify and prioritise candidate tumour antigens derived from three sources: single-nucleotide variants (SNVs), overexpressed tumour-associated antigens (TAAs), and gene fusion events. Candidate peptides were evaluated using integrated computational criteria, including transcript expression, predicted antigen processing features, peptide-HLA binding affinity and stability. Across the cohort, mutation-derived tumor-specific antigens (TSAs) were largely private to individual samples, whereas TAAs constituted a larger and more recurrent candidate pool. Despite comparable predicted binding characteristics across antigen classes, recurrence patterns differed substantially, reflecting their distinct biological origins. Fusion-derived candidates were rare and sample-specific. Predicted peptide presentation was disproportionately associated with a limited subset of HLA class I alleles. Collectively, this study provides a systematically prioritized catalogue of transcriptionally expressed GBM antigen candidates and offers a comparative evaluation of mutation-, expression-, and fusion-derived antigen sources within a unified transcriptome-based framework.

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