Development and validation of a molecular classifier of meningiomas.

IF 16.4 1区 医学 Q1 CLINICAL NEUROLOGY
Alexander P Landry, Justin Z Wang, Jeff Liu, Vikas Patil, Chloe Gui, Zeel Patel, Andrew Ajisebutu, Yosef Ellenbogen, Qingxia Wei, Olivia Singh, Julio Sosa, Sheila Mansouri, Christopher Wilson, Aaron A Cohen-Gadol, Mohamed A Zaazoue, Ghazaleh Tabatabai, Marcos Tatagiba, Felix Behling, Jill S Barnholtz-Sloan, Andrew E Sloan, Silky Chotai, Lola B Chambless, Alexander D Rebchuk, Serge Makarenko, Stephen Yip, Alireza Mansouri, Derek S Tsang, Kenneth Aldape, Andrew Gao, Farshad Nassiri, Gelareh Zadeh
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引用次数: 0

Abstract

Background: Meningiomas exhibit considerable clinical and biological heterogeneity. We previously identified 4 distinct molecular groups (immunogenic, NF2-wildtype, hypermetabolic, and proliferative) that address much of this heterogeneity. Despite the utility of these groups, the stochasticity of clustering methods and the use of multi-omics data for discovery limits the potential for classifying prospective cases. We sought to address this with a dedicated classifier.

Methods: Using an international cohort of 1698 meningiomas, we constructed and rigorously validated a machine learning-based molecular classifier using only DNA methylation data as input. Original and newly predicted molecular groups were compared using DNA methylation, RNA sequencing, copy number profiles, whole-exome sequencing, and clinical outcomes.

Results: We show that group-specific outcomes in the validation cohort are nearly identical to those originally described, with median progression-free survival (PFS) of 7.4 (4.9-Inf) years in hypermetabolic tumors and 2.5 (2.3-5.3) years in proliferative tumors (not reached in the other groups). Tumors classified as NF2-wildtype had no NF2 mutations, and 51.4% had canonical mutations previously described in this group. RNA pathway analysis revealed upregulation of immune-related pathways in the immunogenic group, metabolic pathways in the hypermetabolic group, and cell cycle programs in the proliferative group. Bulk deconvolution similarly revealed the enrichment of macrophages in immunogenic tumors and neoplastic cells in hypermetabolic and proliferative tumors with similar proportions to those originally described.

Conclusions: Our DNA methylation-based classifier, which is publicly available for immediate clinical use, recapitulates the biology and outcomes of the original molecular groups as assessed using multiple metrics/platforms that were not used in its training.

脑膜瘤分子分类器的开发与验证。
背景:脑膜瘤表现出相当大的临床和生物学异质性。我们之前确定了四种不同的分子群(免疫原性、nf2野生型、高代谢、增生性)来解决这种异质性。尽管这些组的效用,聚类方法的随机性和使用多组学数据发现限制了分类潜在病例的潜力。我们试图用一个专门的分类器来解决这个问题。方法:使用1698个脑膜瘤的国际队列,我们构建并严格验证了仅使用DNA甲基化数据作为输入的基于机器学习的分子分类器。使用DNA甲基化、RNA测序、拷贝数谱、全外显子组测序和临床结果对原始和新预测的分子群进行比较。结果:我们发现验证队列中的组特异性结果与最初描述的结果几乎相同,高代谢肿瘤的中位PFS为7.4(4.9- 6)年,增殖性肿瘤的中位PFS为2.5(2.3-5.3)年(其他组未达到)。被归类为NF2野生型的肿瘤没有NF2突变,51.4%的肿瘤具有先前在该组中描述的典型突变。RNA通路分析显示免疫原性组免疫相关通路上调,高代谢组代谢通路上调,增生性组细胞周期程序上调。大量反褶积同样显示免疫原性肿瘤中巨噬细胞的富集,以及高代谢和增生性肿瘤中肿瘤细胞的富集,其比例与最初描述的相似。结论:我们的基于DNA甲基化的分类器,可立即公开用于临床使用,概括了原始分子群的生物学和结果,使用多个指标/平台进行评估,而这些指标/平台未在其训练中使用。
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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来源期刊
Neuro-oncology
Neuro-oncology 医学-临床神经学
CiteScore
27.20
自引率
6.30%
发文量
1434
审稿时长
3-8 weeks
期刊介绍: Neuro-Oncology, the official journal of the Society for Neuro-Oncology, has been published monthly since January 2010. Affiliated with the Japan Society for Neuro-Oncology and the European Association of Neuro-Oncology, it is a global leader in the field. The journal is committed to swiftly disseminating high-quality information across all areas of neuro-oncology. It features peer-reviewed articles, reviews, symposia on various topics, abstracts from annual meetings, and updates from neuro-oncology societies worldwide.
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