
Two research articles published in Nature Genetics shed new light on the cellular complexity of glioblastoma, the most aggressive type of brain cancer.
An international team of scientists, including researchers at the Yale Cancer Center, analyzed tumor samples from 59 glioblastoma patients to better understand how diverse cell types within a tumor change over time and in response to standard therapy. Their findings identify previously unrecognized patterns of cancer cell activity and may help guide future treatment strategies for this disease.
The work described in the two articles was supervised by five senior researchers, including Roel Verhaak, Ph.D., the Harvey and Kate Cushing Professor of Neurosurgery at Yale School of Medicine. His research has long focused on the identification and characterization of gene expression subtypes in glioblastoma. The current articles build on Verhaak’s prior research by leveraging the latest genomic technologies.
“Using high-resolution technologies that enable us to measure gene expression at the single-cell level, we are now able to specifically pinpoint characteristics of glioblastoma cells and the mechanisms behind disease progression. This new work applies these technologies at scale, revealing the heterogeneity and evolution of this aggressive disease,” he says.
The multilayered transcriptional architecture of glioblastoma ecosystems
The first article presents a detailed analysis of 121 primary and recurrent glioblastoma samples from the 59 patients to discover cancer cell types not previously identified in earlier, smaller studies. The large data set included about 430,000 cells and led to the identification of three novel glioblastoma cell “states,” in addition to confirming previously identified ones, that may contribute to a glioblastoma’s ability to adapt and evade therapies.
Glioblastoma is different from patient to patient and its cellular composition is varied even within the same tumor. Despite this variability, the researchers found some common cellular programs across patients that are influenced by specific gene mutations and a tumor’s surrounding cells. These common patterns define three overarching “ecosystems” that reflect distinct cellular communities.
“By dissecting glioblastoma at the single-cell resolution, we’re beginning to understand how individual cancer cells function collectively as an ecosystem. Mapping this cellular landscape gives us critical insights into how glioblastomas develop, evolve, and ultimately resist treatment,” says Kevin Johnson, Ph.D., research scientist in the Department of Neurosurgery at Yale School of Medicine and co-first author of the studies.
Deciphering the longitudinal trajectories of glioblastoma ecosystems by integrative single-cell genomics
The second article examined how the glioblastoma cellular ecosystems change between a patient’s initial diagnosis and disease recurrence. These findings both added to and reinforced the existing complex picture of varied glioblastoma cells and how they evolve and develop resistance to treatment.
Most recurrent glioblastomas retain the cellular makeup associated with the primary tumor, but some do not. For example, tumors with higher levels of the gene MGMT, which is related to chemotherapy resistance, can transition to a more aggressive form when they recur. Another subgroup, with genetic patterns linked to therapeutic radiation resistance, displayed a low-oxygen (hypoxic) profile in the recurring tumor that may assist glioblastoma cells in surviving standard radiation therapy.
Together, the insights from these articles mark a major step toward decoding glioblastoma’s notorious complexity and treatment resistance mechanisms. The articles noted that further genetic studies are still needed to reveal additional recurrence patterns that could inform treatment decisions that improve patient outcomes.
More information:
Masashi Nomura et al, The multilayered transcriptional architecture of glioblastoma ecosystems, Nature Genetics (2025). DOI: 10.1038/s41588-025-02167-5
Avishay Spitzer et al, Deciphering the longitudinal trajectories of glioblastoma ecosystems by integrative single-cell genomics, Nature Genetics (2025). DOI: 10.1038/s41588-025-02168-4
Citation:
Shifting cell types in glioblastoma shed light on recurrence and possible therapy targets (2025, May 12)
retrieved 12 May 2025
from https://medicalxpress.com/news/2025-05-shifting-cell-glioblastoma-recurrence-therapy.html
This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.