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基于不同生物学通路活性的岛叶弥漫性 glioma 分层的放射组学分析。

Radiomic profiling for insular diffuse glioma stratification with distinct biologic pathway activities.

机构信息

Department of Neurosurgery, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan, China.

Department of MRI, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan, China.

出版信息

Cancer Sci. 2024 Apr;115(4):1261-1272. doi: 10.1111/cas.16089. Epub 2024 Jan 26.

Abstract

Current literature emphasizes surgical complexities and customized resection for managing insular gliomas; however, radiogenomic investigations into prognostic radiomic traits remain limited. We aimed to develop and validate a radiomic model using multiparametric magnetic resonance imaging (MRI) for prognostic prediction and to reveal the underlying biological mechanisms. Radiomic features from preoperative MRI were utilized to develop and validate a radiomic risk signature (RRS) for insular gliomas, validated through paired MRI and RNA-seq data (N = 39), to identify core pathways underlying the RRS and individual prognostic radiomic features. An 18-feature-based RRS was established for overall survival (OS) prediction. Gene set enrichment analysis (GSEA) and weighted gene coexpression network analysis (WGCNA) were used to identify intersectional pathways. In total, 364 patients with insular gliomas (training set, N = 295; validation set, N = 69) were enrolled. RRS was significantly associated with insular glioma OS (log-rank p = 0.00058; HR = 3.595, 95% CI:1.636-7.898) in the validation set. The radiomic-pathological-clinical model (R-P-CM) displayed enhanced reliability and accuracy in prognostic prediction. The radiogenomic analysis revealed 322 intersectional pathways through GSEA and WGCNA fusion; 13 prognostic radiomic features were significantly correlated with these intersectional pathways. The RRS demonstrated independent predictive value for insular glioma prognosis compared with established clinical and pathological profiles. The biological basis for prognostic radiomic indicators includes immune, proliferative, migratory, metabolic, and cellular biological function-related pathways.

摘要

目前的文献强调了手术的复杂性和针对岛叶胶质瘤的定制切除;然而,针对预后放射组学特征的放射基因组学研究仍然有限。我们旨在开发和验证一种基于多参数磁共振成像(MRI)的放射组学模型,用于预后预测,并揭示潜在的生物学机制。利用术前 MRI 的放射组学特征,为岛叶胶质瘤开发和验证一种放射组学风险特征(RRS),通过配对的 MRI 和 RNA-seq 数据(N=39)进行验证,以确定 RRS 和个体预后放射组学特征的潜在核心途径。建立了一个基于 18 个特征的 RRS 用于预测总生存期(OS)。基因集富集分析(GSEA)和加权基因共表达网络分析(WGCNA)用于鉴定交集途径。共纳入 364 例岛叶胶质瘤患者(训练集,N=295;验证集,N=69)。RRS 与岛叶胶质瘤 OS 显著相关(验证集对数秩检验 p=0.00058;HR=3.595,95%CI:1.636-7.898)。放射组学-病理-临床模型(R-P-CM)在预后预测中的可靠性和准确性得到了提高。放射基因组学分析通过 GSEA 和 WGCNA 融合揭示了 322 个交集途径;13 个预后放射组学特征与这些交集途径显著相关。与既定的临床和病理特征相比,RRS 显示出对岛叶胶质瘤预后的独立预测价值。预后放射组学指标的生物学基础包括免疫、增殖、迁移、代谢和细胞生物学功能相关途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b1ab/11007007/1d020c135564/CAS-115-1261-g005.jpg

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