4.6 Review

Organoid Models of Glioblastoma and Their Role in Drug Discovery

Journal

FRONTIERS IN CELLULAR NEUROSCIENCE
Volume 15, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fncel.2021.605255

Keywords

glioblastoma; brain organoids; organoid-GBM modeling; drug discovery; compound screening

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Funding

  1. Department of Psychiatry and Behavioral Sciences at the University of Miami Miller School of Medicine
  2. Florida Center for Brain Tumor Research (FCBTR) [GR016090, GR015826]
  3. Accelerate Brain Cancer Cure (ABC2) [GR016090, GR015826]
  4. NIH [NS102590]

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This review examines a range of organoid-GBM models, discussing their individual strengths and weaknesses, and explores their future applications with a focus on compound screening.
Glioblastoma (GBM) is a devastating adult brain cancer with high rates of recurrence and treatment resistance. Cellular heterogeneity and extensive invasion of surrounding brain tissues are characteristic features of GBM that contribute to its intractability. Current GBM model systems do not recapitulate some of the complex features of GBM and have not produced sufficiently-effective treatments. This has cast doubt on the effectiveness of current GBM models and drug discovery paradigms. In search of alternative pre-clinical GBM models, various 3D organoid-based GBM model systems have been developed using human cells. The scalability of these systems and potential to more accurately model characteristic features of GBM, provide promising new avenues for pre-clinical GBM research and drug discovery efforts. Here, we review the current suite of organoid-GBM models, their individual strengths and weaknesses, and discuss their future applications with an emphasis on compound screening.

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