Department of Neuro-Oncology, Cancer Center, China National Clinical Research Center for Neurological Diseases, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.
National Institute for Data Science in Health and Medicine, Capital Medical University, Beijing, China.
J Transl Med. 2024 Jun 18;22(1):578. doi: 10.1186/s12967-024-05401-6.
IDH1-wildtype glioblastoma multiforme (IDHwt-GBM) is a highly heterogeneous and aggressive brain tumour characterised by a dismal prognosis and significant challenges in accurately predicting patient outcomes. To address these issues and personalise treatment approaches, we aimed to develop and validate robust multiomics molecular subtypes of IDHwt-GBM. Through this, we sought to uncover the distinct molecular signatures underlying these subtypes, paving the way for improved diagnosis and targeted therapy for this challenging disease.
To identify stable molecular subtypes among 184 IDHwt-GBM patients from TCGA, we used the consensus clustering method to consolidate the results from ten advanced multiomics clustering approaches based on mRNA, lncRNA, and mutation data. We developed subtype prediction models using the PAM and machine learning algorithms based on mRNA and MRI data for enhanced clinical utility. These models were validated in five independent datasets, and an online interactive system was created. We conducted a comprehensive assessment of the clinical impact, drug treatment response, and molecular associations of the IDHwt-GBM subtypes.
In the TCGA cohort, two molecular subtypes, class 1 and class 2, were identified through multiomics clustering of IDHwt-GBM patients. There was a significant difference in survival between Class 1 and Class 2 patients, with a hazard ratio (HR) of 1.68 [1.15-2.47]. This difference was validated in other datasets (CGGA: HR = 1.75[1.04, 2.94]; CPTAC: HR = 1.79[1.09-2.91]; GALSS: HR = 1.66[1.09-2.54]; UCSF: HR = 1.33[1.00-1.77]; UPENN HR = 1.29[1.04-1.58]). Additionally, class 2 was more sensitive to treatment with radiotherapy combined with temozolomide, and this sensitivity was validated in the GLASS cohort. Correspondingly, class 2 and class 1 exhibited significant differences in mutation patterns, enriched pathways, programmed cell death (PCD), and the tumour immune microenvironment. Class 2 had more mutation signatures associated with defective DNA mismatch repair (P = 0.0021). Enriched pathways of differentially expressed genes in class 1 and class 2 (P-adjust < 0.05) were mainly related to ferroptosis, the PD-1 checkpoint pathway, the JAK-STAT signalling pathway, and other programmed cell death and immune-related pathways. The different cell death modes and immune microenvironments were validated across multiple datasets. Finally, our developed survival prediction model, which integrates molecular subtypes, age, and sex, demonstrated clinical benefits based on the decision curve in the test set. We deployed the molecular subtyping prediction model and survival prediction model online, allowing interactive use and facilitating user convenience.
Molecular subtypes were identified and verified through multiomics clustering in IDHwt-GBM patients. These subtypes are linked to specific mutation patterns, the immune microenvironment, prognoses, and treatment responses.
异柠檬酸脱氢酶 1 野生型胶质母细胞瘤(IDHwt-GBM)是一种高度异质且侵袭性的脑肿瘤,其预后不良,准确预测患者预后存在重大挑战。为了解决这些问题并实现治疗方法的个体化,我们旨在开发和验证 IDHwt-GBM 的稳健多组学生物标志物分子亚型。通过这种方法,我们旨在揭示这些亚型背后的独特分子特征,为这种具有挑战性的疾病的改善诊断和靶向治疗铺平道路。
为了在 TCGA 中的 184 名 IDHwt-GBM 患者中确定稳定的分子亚型,我们使用共识聚类方法整合了基于 mRNA、lncRNA 和突变数据的十种先进多组学聚类方法的结果。我们基于 mRNA 和 MRI 数据使用 PAM 和机器学习算法开发了亚型预测模型,以提高临床实用性。这些模型在五个独立数据集进行了验证,并创建了一个在线交互式系统。我们对 IDHwt-GBM 亚型的临床影响、药物治疗反应和分子关联进行了全面评估。
在 TCGA 队列中,通过对 IDHwt-GBM 患者进行多组学聚类,确定了两种分子亚型,即 1 类和 2 类。1 类和 2 类患者的生存存在显著差异,风险比(HR)为 1.68 [1.15-2.47]。这一差异在其他数据集(CGGA:HR=1.75[1.04, 2.94];CPTAC:HR=1.79[1.09-2.91];GALSS:HR=1.66[1.09-2.54];UCSF:HR=1.33[1.00-1.77];UPENN HR=1.29[1.04-1.58])中得到了验证。此外,2 类对放疗联合替莫唑胺更敏感,这一敏感性在 GLASS 队列中得到了验证。相应地,2 类和 1 类在突变模式、富集途径、程序性细胞死亡(PCD)和肿瘤免疫微环境方面存在显著差异。2 类与 DNA 错配修复缺陷相关的突变特征更多(P=0.0021)。1 类和 2 类中差异表达基因的富集途径(P-adjust<0.05)主要与铁死亡、PD-1 检查点途径、JAK-STAT 信号通路和其他程序性细胞死亡和免疫相关途径有关。在多个数据集之间验证了不同的细胞死亡模式和免疫微环境。最后,我们开发的基于分子亚型、年龄和性别的生存预测模型在测试集中基于决策曲线显示出了临床获益。我们在线部署了分子亚型预测模型和生存预测模型,允许进行交互式使用,提高了用户的便利性。
通过 IDHwt-GBM 患者的多组学生物标志物聚类,确定并验证了分子亚型。这些亚型与特定的突变模式、免疫微环境、预后和治疗反应有关。