Publication:
Correlations between genomic subgroup and clinical features in a cohort of more than 3000 meningiomas

dc.contributor.authorYoungblood, Mark W.
dc.contributor.authorDurán, Daniel
dc.contributor.authorMontejo, Julio D.
dc.contributor.authorLi, Chang
dc.contributor.authorOmay, Sacit Bülent
dc.contributor.authorOzduman, Koray
dc.contributor.authorSheth, Amar H.
dc.contributor.authorZhao, Amy Y.
dc.contributor.authorTyrtova, Evgeniya
dc.contributor.authorMiyagishima, Danielle F.
dc.contributor.institutionYoungblood, Mark W., Yale Program in Brain Tumor Research, United States, ,
dc.contributor.institutionDurán, Daniel, Yale Program in Brain Tumor Research, United States, , University of Mississippi School of Medicine, Jackson, United States
dc.contributor.institutionMontejo, Julio D., Yale Program in Brain Tumor Research, United States, , Section of Neurosurgery, Dartmouth-Hitchcock Medical Center, Lebanon, United States
dc.contributor.institutionLi, Chang, Yale Program in Brain Tumor Research, United States, , Department of Neurosurgery, Central South University, Changsha, China, Central South University, Changsha, China
dc.contributor.institutionOmay, Sacit Bülent, Yale Program in Brain Tumor Research, United States,
dc.contributor.institutionOzduman, Koray, Department of Neurosurgery, Acıbadem Mehmet Ali Aydınlar Üniversitesi, Istanbul, Turkey
dc.contributor.institutionSheth, Amar H., Yale Program in Brain Tumor Research, United States,
dc.contributor.institutionZhao, Amy Y., Yale Program in Brain Tumor Research, United States,
dc.contributor.institutionTyrtova, Evgeniya, Yale Program in Brain Tumor Research, United States,
dc.contributor.institutionMiyagishima, Danielle F., Yale Program in Brain Tumor Research, United States, ,
dc.date.accessioned2025-10-05T15:43:08Z
dc.date.issued2020
dc.description.abstractOBJECTIVE Recent large-cohort sequencing studies have investigated the genomic landscape of meningiomas, identifying somatic coding alterations in NF2, SMARCB1, SMARCE1, TRAF7, KLF4, POLR2A, BAP1, and members of the PI3K and Hedgehog signaling pathways. Initial associations between clinical features and genomic subgroups have been described, including location, grade, and histology. However, further investigation using an expanded collection of samples is needed to confirm previous findings, as well as elucidate relationships not evident in smaller discovery cohorts. METHODS Targeted sequencing of established meningioma driver genes was performed on a multiinstitution cohort of 3016 meningiomas for classification into mutually exclusive subgroups. Relevant clinical information was collected for all available cases and correlated with genomic subgroup. Nominal variables were analyzed using Fisher’s exact tests, while ordinal and continuous variables were assessed using Kruskal-Wallis and 1-way ANOVA tests, respectively. Machine-learning approaches were used to predict genomic subgroup based on noninvasive clinical features. RESULTS Genomic subgroups were strongly associated with tumor locations, including correlation of HH tumors with midline location, and non-NF2 tumors in anterior skull base regions. NF2 meningiomas were significantly enriched in male patients, while KLF4 and POLR2A mutations were associated with female sex. Among histologies, the results confirmed previously identified relationships, and observed enrichment of microcystic features among mutation unknown samples. Additionally, KLF4-mutant meningiomas were associated with larger peritumoral brain edema, while SMARCB1 cases exhibited elevated Ki-67 index. Machine-learning methods revealed that observable, noninvasive patient features were largely predictive of each tumor’s underlying driver mutation. CONCLUSIONS Using a rigorous and comprehensive approach, this study expands previously described correlations between genomic drivers and clinical features, enhancing our understanding of meningioma pathogenesis, and laying further groundwork for the use of targeted therapies. Importantly, the authors found that noninvasive patient variables exhibited a moderate predictive value of underlying genomic subgroup, which could improve with additional training data. With continued development, this framework may enable selection of appropriate precision medications without the need for invasive sampling procedures. © 2020 Elsevier B.V., All rights reserved.
dc.identifier.doi10.3171/2019.8.JNS191266
dc.identifier.endpage1354
dc.identifier.issn19330693
dc.identifier.issn00223085
dc.identifier.issue5
dc.identifier.pubmed31653806
dc.identifier.scopus2-s2.0-85095702457
dc.identifier.startpage1345
dc.identifier.urihttps://doi.org/10.3171/2019.8.JNS191266
dc.identifier.urihttps://hdl.handle.net/20.500.14719/10210
dc.identifier.volume133
dc.language.isoen
dc.publisherAmerican Association of Neurological Surgeons
dc.relation.sourceJournal of Neurosurgery
dc.subject.authorkeywordsClinical Correlations
dc.subject.authorkeywordsGenomics
dc.subject.authorkeywordsMachine Learning
dc.subject.authorkeywordsMeningioma
dc.subject.authorkeywordsOncology
dc.subject.authorkeywordsPrecision Medicine
dc.subject.authorkeywordsPhosphatidylinositol 3 Kinase
dc.subject.authorkeywordsKi 67 Antigen
dc.subject.authorkeywordsKruppel Like Factor 4
dc.subject.authorkeywordsMerlin
dc.subject.authorkeywordsPhosphatidylinositol 3 Kinase
dc.subject.authorkeywordsSonic Hedgehog Protein
dc.subject.authorkeywordsSwi/snf Related Matrix Associated Actin Dependent Regulator Of Chromatin Subfamily B Member 1
dc.subject.authorkeywordsAdult
dc.subject.authorkeywordsArticle
dc.subject.authorkeywordsBayesian Learning
dc.subject.authorkeywordsBrain Edema
dc.subject.authorkeywordsCancer Genetics
dc.subject.authorkeywordsClinical Feature
dc.subject.authorkeywordsCohort Analysis
dc.subject.authorkeywordsCorrelation Coefficient
dc.subject.authorkeywordsCystic Neoplasm
dc.subject.authorkeywordsFemale
dc.subject.authorkeywordsGender
dc.subject.authorkeywordsGene Mutation
dc.subject.authorkeywordsGenetic Association
dc.subject.authorkeywordsGenome
dc.subject.authorkeywordsHedgehog Signaling
dc.subject.authorkeywordsHigh Throughput Sequencing
dc.subject.authorkeywordsHistopathology
dc.subject.authorkeywordsHuman
dc.subject.authorkeywordsHuman Tissue
dc.subject.authorkeywordsK Nearest Neighbor
dc.subject.authorkeywordsMajor Clinical Study
dc.subject.authorkeywordsMale
dc.subject.authorkeywordsMeningioma
dc.subject.authorkeywordsMiddle Aged
dc.subject.authorkeywordsMutant
dc.subject.authorkeywordsPolr2a Gene
dc.subject.authorkeywordsPredictive Value
dc.subject.authorkeywordsPriority Journal
dc.subject.authorkeywordsRandom Forest
dc.subject.authorkeywordsRetrospective Study
dc.subject.authorkeywordsTargeted Sequencing
dc.subject.authorkeywordsTraf7 Gene
dc.subject.authorkeywordsTumor Gene
dc.subject.authorkeywordsWhole Exome Sequencing
dc.subject.indexkeywordsKi 67 antigen
dc.subject.indexkeywordskruppel like factor 4
dc.subject.indexkeywordsmerlin
dc.subject.indexkeywordsphosphatidylinositol 3 kinase
dc.subject.indexkeywordssonic hedgehog protein
dc.subject.indexkeywordsSWI/SNF related matrix associated actin dependent regulator of chromatin subfamily B member 1
dc.subject.indexkeywordsadult
dc.subject.indexkeywordsArticle
dc.subject.indexkeywordsBayesian learning
dc.subject.indexkeywordsbrain edema
dc.subject.indexkeywordscancer genetics
dc.subject.indexkeywordsclinical feature
dc.subject.indexkeywordscohort analysis
dc.subject.indexkeywordscorrelation coefficient
dc.subject.indexkeywordscystic neoplasm
dc.subject.indexkeywordsfemale
dc.subject.indexkeywordsgender
dc.subject.indexkeywordsgene mutation
dc.subject.indexkeywordsgenetic association
dc.subject.indexkeywordsgenome
dc.subject.indexkeywordshedgehog signaling
dc.subject.indexkeywordshigh throughput sequencing
dc.subject.indexkeywordshistopathology
dc.subject.indexkeywordshuman
dc.subject.indexkeywordshuman tissue
dc.subject.indexkeywordsk nearest neighbor
dc.subject.indexkeywordsmajor clinical study
dc.subject.indexkeywordsmale
dc.subject.indexkeywordsmeningioma
dc.subject.indexkeywordsmiddle aged
dc.subject.indexkeywordsmutant
dc.subject.indexkeywordspolr2a gene
dc.subject.indexkeywordspredictive value
dc.subject.indexkeywordspriority journal
dc.subject.indexkeywordsrandom forest
dc.subject.indexkeywordsretrospective study
dc.subject.indexkeywordstargeted sequencing
dc.subject.indexkeywordstraf7 gene
dc.subject.indexkeywordstumor gene
dc.subject.indexkeywordswhole exome sequencing
dc.titleCorrelations between genomic subgroup and clinical features in a cohort of more than 3000 meningiomas
dc.typeArticle
dcterms.referencesAbdel-Rahman, Mohamed H., Germline BAP1 mutation predisposes to uveal melanoma, lung adenocarcinoma, meningioma, and other cancers, Journal of Medical Genetics, 48, 12, pp. 856-859, (2011), Abedalthagafi, Malak Sameer J., Oncogenic PI3K mutations are as common as AKT1 and SMO mutations in meningioma, Neuro-Oncology, 18, 5, pp. 649-655, (2016), Bi, Wenya (Linda), Genomic landscape of high-grade meningiomas, npj Genomic Medicine, 2, 1, (2017), Boetto, Julien, SMO mutation status defines a distinct and frequent Molecular subgroup in olfactory groove meningiomas, Neuro-Oncology, 19, 3, pp. 345-351, (2017), Brastianos, Priscilla K., Genomic sequencing of meningiomas identifies oncogenic SMO and AKT1 mutations, Nature Genetics, 45, 3, pp. 285-289, (2013), Brat, Daniel J., Comprehensive, integrative genomic analysis of diffuse lower-grade gliomas, New England Journal of Medicine, 372, 26, pp. 2481-2498, (2015), Clark, Victoria E., Genomic analysis of non-NF2 meningiomas reveals mutations in TRAF7, KLF4, AKT1, and SMO, Science, 339, 6123, pp. 1077-1080, (2013), Clark, Victoria E., Recurrent somatic mutations in POLR2A define a distinct subset of meningiomas, Nature Genetics, 48, 10, pp. 1253-1259, (2016), Dumanski, Jan P., Molecular Genetic Analysis of Chromosome 22 in 81 Cases of Meningioma, Cancer Research, 50, 18, pp. 5863-5867, (1990), Ellison, David W., Medulloblastoma: Clinicopathological correlates of SHH, WNT, and non-SHH/WNT molecular subgroups, Acta Neuropathologica, 121, 3, pp. 381-396, (2011)
dspace.entity.typePublication
local.indexed.atScopus
person.identifier.scopus-author-id55699938000
person.identifier.scopus-author-id57216587262
person.identifier.scopus-author-id57195149580
person.identifier.scopus-author-id57456151300
person.identifier.scopus-author-id25945100900
person.identifier.scopus-author-id6507666040
person.identifier.scopus-author-id57210819393
person.identifier.scopus-author-id57203483867
person.identifier.scopus-author-id57205237593
person.identifier.scopus-author-id57216201496

Files