A coregulatory influence map of glioblastoma heterogeneity and plasticity.

NPJ precision oncology 2025
Open on PubMed

We present GBM-cRegMap, an online resource providing a comprehensive coregulatory influence network perspective on glioblastoma (GBM) heterogeneity and plasticity. Using representation learning algorithms, we derived two components of this resource: GBM-CoRegNet, a highly specific coregulatory network of tumor cells, and GBM-CoRegMap, a unified network influence map based on 1612 tumors from 16 studies. As a widely applicable closed-loop system connecting cellular models and tumors, GBM-cRegMap will provide the GBM research community with an easy-to-use web tool ( https://gbm.cregmap.com ) that maps any existing or newly generated transcriptomic "query" data to a reference coregulatory network and a large-scale manifold of disease heterogeneity. Using GBM-cRegMap, we demonstrated the synergy between the two components by refining the molecular classification of GBM, identifying potential key regulators, and aligning the transcriptional profiles of tumors and in vitro models. Through the amalgamation of a vast dataset, we validated the proneural (PN)-mesenchymal (MES) axis and identified three subclasses of classical (CL) tumors: astrocyte-like (CL-A), epithelial basal-like (CL-B), and cilium-rich (CL-C). We revealed the CL-C subclass, an intermediate state demonstrating the plasticity of GBM cells along the PN-MES axis under chemotherapy. We identified key regulators, such as PAX8, and NKX2.5, potentially involved in temozolomide (TMZ) resistance. Notably, NKX2.5, more expressed in higher-grade gliomas, negatively impacts patient survival, and regulates genes involved in glucose metabolism.

8 Figures Extracted
Fig. 1
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Overview of the GBM-cRegMap framework (from cells in vitro to tumors and back again) and its user interface (UI) features: CoRegNet, CoRegMap, and CoR...
Fig. 2
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Evaluation of GBM-cRegMap reference components. A Graphical representation (top) of the co-operativity network inferred from the transcriptome of 42 ...
Fig. 3
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Molecular and clinical characteristics of GBM-cRegMap classes. A UMAP visualization of the GBM-cRegMap metacohort, using sample annotation colors der...
Fig. 4
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Identification of GBM subclass-matched cell-line repertoires and functional validation of specific differential subnetworks. A Heatmap showing the to...
Fig. 5
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Example of exploration of MES co-regulated subnetwork using GBM-cRegMap synergistic compounds. The CoRegNet tab allows users to investigate the extent...
Fig. 6
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Example of reference-mapping and annotation of query dataset using CoRegQuery. A As input, users upload or simply provide a GEO series ID ( GSE253458...
Fig. 7
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Functional validation of predicted phenotypic plasticity upon chemotherapy. A Analysis of PAX8 mRNA expression, influence and relative protein expres...
Fig. 8
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Summary of the main characteristics of the GBM-cRegMap classes. The figure displays, from top to bottom: class name and abbreviation; proportion of cl...