转录组分析将第二代非WNT/非SHH髓母细胞瘤亚群分为临床易处理的亚型

IF 9.3 1区 医学 Q1 CLINICAL NEUROLOGY Acta Neuropathologica Pub Date : 2023-04-24 DOI:10.1007/s00401-023-02575-z
Andrey Korshunov, Konstantin Okonechnikov, Daniel Schrimpf, Svenja Tonn, Martin Mynarek, Jan Koster, Philipp Sievers, Till Milde, Felix Sahm, David T. W. Jones, Andreas von Deimling, Stefan M. Pfister, Marcel Kool
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引用次数: 0

摘要

髓母细胞瘤(MB)是最常见的儿童恶性脑肿瘤之一,是一种由四个不同分子组(WNT、SHH、第3组、第4组)组成的异质性疾病。这些组中的每一个都可以进一步细分为第二代MB(SGS-MB)分子亚组,每个亚组都具有不同的遗传和临床特征。例如,非WNT/非SHH MB(第3/4组)可以从分子上细分为八个不同的临床相关肿瘤亚组。这些SGS MB的进一步分子分层/总结将允许将患者分配到风险相关的治疗方案中。在这里,我们对574个非WNT/非SHH MB进行了基于DNA和RNA的分析,并分析了整个队列和8个SGS MB中各种分子模式的临床意义,目的是制定这些肿瘤的最佳风险分层。多基因分析揭示了几个存活相关基因对该非WNT/非SHH-MB队列中的每个分子亚组具有高度特异性,亚组间重叠最小。这些亚组特异性和预后相关基因与可能成为SGS MB临床分子多样性和肿瘤驱动机制基础的途径有关。通过组合每个SGS MB中的生存相关基因,确定了适合其最佳风险分层的不同的元基因集。定义的亚组特异性元基因集是为每个SGS MB生成的多变量模型中的自变量,其预后价值在非WNT/非SHH MB(n = 377)。总之,目前的结果表明,在风险分层模型中整合转录组数据可以改善每种非WNT/非SHH SGS MB的结果预测。已确定的亚组特异性基因表达特征可能与临床实施相关,存活相关的元基因集可用于进一步的SGS MB风险分层。未来的研究应旨在验证这些基于转录组的SGS MB亚型在前瞻性临床试验中的预后作用。
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Transcriptome analysis stratifies second-generation non-WNT/non-SHH medulloblastoma subgroups into clinically tractable subtypes

Medulloblastoma (MB), one of the most common malignant pediatric brain tumor, is a heterogenous disease comprised of four distinct molecular groups (WNT, SHH, Group 3, Group 4). Each of these groups can be further subdivided into second-generation MB (SGS MB) molecular subgroups, each with distinct genetic and clinical characteristics. For instance, non-WNT/non-SHH MB (Group 3/4) can be subdivided molecularly into eight distinct and clinically relevant tumor subgroups. A further molecular stratification/summarization of these SGS MB would allow for the assignment of patients to risk-associated treatment protocols. Here, we performed DNA- and RNA-based analysis of 574 non-WNT/non-SHH MB and analyzed the clinical significance of various molecular patterns within the entire cohort and the eight SGS MB, with the aim to develop an optimal risk stratification of these tumors. Multigene analysis disclosed several survival-associated genes highly specific for each molecular subgroup within this non-WNT/non-SHH MB cohort with minimal inter-subgroup overlap. These subgroup-specific and prognostically relevant genes were associated with pathways that could underlie SGS MB clinical-molecular diversity and tumor-driving mechanisms. By combining survival-associated genes within each SGS MB, distinct metagene sets being appropriate for their optimal risk stratification were identified. Defined subgroup-specific metagene sets were independent variables in the multivariate models generated for each SGS MB and their prognostic value was confirmed in a completely non-overlapping validation cohort of non-WNT/non-SHH MB (n = 377). In summary, the current results indicate that the integration of transcriptome data in risk stratification models may improve outcome prediction for each non-WNT/non-SHH SGS MB. Identified subgroup-specific gene expression signatures could be relevant for clinical implementation and survival-associated metagene sets could be adopted for further SGS MB risk stratification. Future studies should aim at validating the prognostic role of these transcriptome-based SGS MB subtypes in prospective clinical trials.

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来源期刊
Acta Neuropathologica
Acta Neuropathologica 医学-病理学
CiteScore
23.70
自引率
3.90%
发文量
118
审稿时长
4-8 weeks
期刊介绍: Acta Neuropathologica publishes top-quality papers on the pathology of neurological diseases and experimental studies on molecular and cellular mechanisms using in vitro and in vivo models, ideally validated by analysis of human tissues. The journal accepts Original Papers, Review Articles, Case Reports, and Scientific Correspondence (Letters). Manuscripts must adhere to ethical standards, including review by appropriate ethics committees for human studies and compliance with principles of laboratory animal care for animal experiments. Failure to comply may result in rejection of the manuscript, and authors are responsible for ensuring accuracy and adherence to these requirements.
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