类有机物
胶质瘤
生物
医学
癌症研究
计算机科学
神经科学
作者
Kalil G. Abdullah,Cylaina E. Bird,Joseph Buehler,Lauren C. Gattie,Milan R. Savani,Alex Sternisha,Yi Xiao,Michael M. Levitt,William H. Hicks,Wenhao Li,Denise M.O. Ramirez,Toral Patel,Tomás Garzón-Muvdi,Samuel Barnett,Gao Zhang,David M. Ashley,Kimmo J. Hatanpaa,Timothy E. Richardson,Samuel K. McBrayer
出处
期刊:Neuro-oncology
[Oxford University Press]
日期:2021-11-23
卷期号:24 (4): 612-623
被引量:53
标识
DOI:10.1093/neuonc/noab273
摘要
Abstract Background Historically, creating patient-derived models of lower-grade glioma (LGG) has been challenging, contributing to few experimental platforms that support laboratory-based investigations of this disease. Although organoid modeling approaches have recently been employed to create in vitro models of high-grade glioma (HGG), it is unknown whether this approach can be successfully applied to LGG. Methods In this study, we developed an optimized protocol for the establishment of organoids from LGG primary tissue samples by utilizing physiologic (5%) oxygenation conditions and employed it to produce the first known suite of these models. To assess their fidelity, we surveyed key biological features of patient-derived organoids using metabolic, genomic, histologic, and lineage marker gene expression assays. Results Organoid models were created with a success rate of 91% (n = 20/22) from primary tumor samples across glioma histological subtypes and tumor grades (WHO Grades 1–4), and a success rate of 87% (13/15) for WHO Grade 1–3 tumors. Patient-derived organoids recapitulated stemness, proliferative, and tumor-stromal composition profiles of their respective parental tumor specimens. Cytoarchitectural, mutational, and metabolic traits of parental tumors were also conserved. Importantly, LGG organoids were maintained in vitro for weeks to months and reanimated after biobanking without loss of integrity. Conclusions We report an efficient method for producing faithful in vitro models of LGG. New experimental platforms generated through this approach are well positioned to support preclinical studies of this disease, particularly those related to tumor immunology, tumor-stroma interactions, identification of novel drug targets, and personalized assessments of treatment response profiles.
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