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Series GSE252291 Query DataSets for GSE252291
Status Public on Apr 26, 2024
Title Meningioma transcriptomic landscape demonstrates novel subtypes with regional associated biology and patient outcome
Organism Homo sapiens
Experiment type Expression profiling by high throughput sequencing
Summary Meningiomas are the most common primary intracranial tumors in humans. While most of these tumors are benign, some are malignant, rapidly recur after multimodal treatment with surgery and radiotherapy, and can ultimately be fatal. The current WHO grade system does not always identify high risk meningiomas, therefore better characterizations of the biology of aggressive tumors are needed. In order to address these challenges, we combined 13 bulk RNA-Seq datasets, corrected for batch effects, and applied Uniform Manifold Approximation and Projection (UMAP) to create a reference landscape of ~1300 meningioma tumors. Our analyses revealed multiple distinct meningioma subtypes with specific biological signatures. Clinical metadata, mutations, copy number alterations, and gene-fusion data effectively correlated with regions of the UMAP. Notably, regional distribution of time to recurrence identified major clusters as well as intra-cluster differences of meningiomas with varying patient outcomes. The most aggressive subtype, characterized by an enrichment of higher WHO grades, frequent tumor recurrences, and shorter time to recurrence, exhibited elevated proliferation rates and RNA expression resembling muscle development. To facilitate clinical applications, we developed a cross-validated nearest-neighbors-based algorithm that accurately maps new patients onto this UMAP landscape. Our study highlights the utility of transcriptomic analysis in discerning meningioma heterogeneity as well as successful combination of multiple datasets from various sources. We provide a valuable tool for understanding the disease, predicting tumor biology and patient prognosis. This resource is accessible via the open source, interactive online tool Oncoscape, where the scientific community can explore the landscape and mine clinical and genomic metadata.
 
Overall design We collected meningioma tumor samples, extracted total RNA and sequenced. Then we combined the in-house sequenced dataset with other publicly available meningioma RNA-Seq datasets that we collected to generate a UMAP. Clinical and genomic metadata was overlaid on to the UMAP and meningioma subtypes were analyzed.
 
Contributor(s) Thirimanne H, Arora S, Almiron Bonnin D, Parada C, Ferreira M, Holland EC
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Submission date Dec 30, 2023
Last update date Apr 26, 2024
Contact name Eric Holland
E-mail(s) eholland@fredhutch.org
Organization name Fred Hutch Cancer Center
Department Human Biology
Lab Holland
Street address 1100 Fairview Ave. N
City Seattle
State/province WA
ZIP/Postal code 98109
Country USA
 
Platforms (1)
GPL24676 Illumina NovaSeq 6000 (Homo sapiens)
Samples (279)
GSM7998813 MNG170
GSM7998814 MNG171
GSM7998815 MNG172
Relations
BioProject PRJNA1059263

Download family Format
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MINiML formatted family file(s) MINiMLHelp
Series Matrix File(s) TXTHelp

Supplementary file Size Download File type/resource
GSE252291_UWFHCC_log2tpm_122823.txt.gz 35.0 Mb (ftp)(http) TXT
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