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From pixels to prognosis: leveraging radiomics and machine learning to predict IDH1 genotype in gliomas

dc.contributor.authorKarakas, Asli Beril
dc.contributor.authorGovsa, Figen
dc.contributor.authorOzer, Mehmet Asim
dc.contributor.authorBiceroglu, Huseyin
dc.contributor.authorEraslan, Cenk
dc.contributor.authorTanir, Deniz
dc.date.accessioned2026-01-04T21:57:09Z
dc.date.issued2025-04-29
dc.description.abstractAbstract Gliomas are the most common primary tumors of the central nervous system, and advances in genetics and molecular medicine have significantly transformed their classification and treatment. This study aims to predict the IDH1 genotype in gliomas using radiomics and machine learning (ML) methods. Retrospective data from 108 glioma patients were analyzed, including MRI data supported by demographic details such as age, sex, and comorbidities. Tumor segmentation was manually performed using 3D Slicer software, and 112 radiomic features were extracted with the PyRadiomics library. Feature selection using the mRMR algorithm identified 17 significant radiomic features. Various ML algorithms, including KNN, Ensemble, DT, LR, Discriminant and SVM, were applied to predict the IDH1 genotype. The KNN and Ensemble models achieved the highest sensitivity (92-100%) and specificity (100%), emerging as the most successful models. Comparative analyses demonstrated that KNN achieved an accuracy of 92.59%, sensitivity of 92.38%, specificity of 100%, precision of 100%, and an F1-score of 95.02%. Similarly, the Ensemble model achieved an accuracy of 90.74%, sensitivity of 90.65%, specificity of 100%, precision of 100%, and an F1-score of 95.13%. To evaluate their effectiveness, KNN and Ensemble models were compared with commonly used machine learning approaches in glioma classification. LR, a conventional statistical approach, exhibited lower predictive performance with an accuracy of 79.63%, while SVM, a frequently utilized ML model for radiomics-based tumor classification, achieved an accuracy of 85.19%. Our findings are consistent with previous research indicating that radiomics-based ML models achieve high accuracy in IDH1 mutation prediction, with reported performances typically exceeding 80%. These findings suggest that KNN and Ensemble models are more effective in capturing the non-linear radiomic patterns associated with IDH1 status, compared to traditional ML approaches. Our findings indicate that radiomic analyses provide comprehensive genotypic classification by assessing the entire tumor and present a safer, faster, and more patient-friendly alternative to traditional biopsies. This study highlights the potential of radiomics and ML techniques, particularly KNN, Ensemble, and SVM, as powerful tools for predicting the molecular characteristics of gliomas and developing personalized treatment strategies.
dc.description.urihttps://doi.org/10.1007/s10143-025-03515-z
dc.description.urihttps://pubmed.ncbi.nlm.nih.gov/40299088
dc.description.urihttp://dx.doi.org/10.1007/s10143-025-03515-z
dc.identifier.doi10.1007/s10143-025-03515-z
dc.identifier.eissn1437-2320
dc.identifier.openairedoi_dedup___::d3624279e1562a51b39a0df955c0477a
dc.identifier.orcid0000-0001-6504-6489
dc.identifier.orcid0000-0001-9635-6308
dc.identifier.orcid0000-0003-3936-6694
dc.identifier.orcid0000-0003-2306-0826
dc.identifier.orcid0000-0002-5762-6149
dc.identifier.orcid0000-0001-6593-6625
dc.identifier.pubmed40299088
dc.identifier.scopus2-s2.0-105003890711
dc.identifier.urihttps://hdl.handle.net/20.500.12597/42644
dc.identifier.volume48
dc.language.isoeng
dc.publisherSpringer Science and Business Media LLC
dc.relation.ispartofNeurosurgical Review
dc.rightsOPEN
dc.subjectMale
dc.subjectAdult
dc.subjectRadiomics
dc.subjectGenotype
dc.subjectBrain Neoplasms
dc.subjectResearch
dc.subjectGlioma
dc.subjectMiddle Aged
dc.subjectPrognosis
dc.subjectMagnetic Resonance Imaging
dc.subjectIsocitrate Dehydrogenase
dc.subjectMachine Learning
dc.subjectYoung Adult
dc.subjectHumans
dc.subjectFemale
dc.subjectRetrospective Studies
dc.subjectAged
dc.titleFrom pixels to prognosis: leveraging radiomics and machine learning to predict IDH1 genotype in gliomas
dc.typeArticle
dspace.entity.typePublication
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