Back to Search Start Over

Prognostic and Predictive Value of Integrated Qualitative and Quantitative Magnetic Resonance Imaging Analysis in Glioblastoma

Authors :
Frederick J. A. Meijer
Monique M. Anten
Sjoert A. H. Pegge
Vivianne C. G. Tjan-Heijnen
Benno Küsters
Koos Hovinga
Maikel Verduin
Alida A. Postma
Maarten te Dorsthorst
Sander M. J. van Kuijk
Ernst-Jan M. Speel
Mark ter Laan
Elles G. M. Revenich
Ann Hoeben
Sergey Primakov
Wendy W.J. de Leng
Inge Compter
Olaf E. M. G. Schijns
Martijn P. G. Broen
Henry C. Woodruff
Onno P.M. Teernstra
Philippe Lambin
Bram Ramaekers
Jan Beckervordersandforth
Daniëlle B.P. Eekers
Linda Ackermans
Marc Vooijs
Radiotherapie
RS: GROW - R2 - Basic and Translational Cancer Biology
Precision Medicine
RS: GROW - R3 - Innovative Cancer Diagnostics & Therapy
Epidemiologie
RS: CAPHRI - R2 - Creating Value-Based Health Care
MUMC+: DA Pat Pathologie (9)
Pathologie
RS: MHeNs - R1 - Cognitive Neuropsychiatry and Clinical Neuroscience
Klinische Neurowetenschappen
MUMC+: MA Med Staf Spec Neurologie (9)
MUMC+: MA Med Staf Spec Neurochirurgie (9)
RS: MHeNs - R3 - Neuroscience
Neurochirurgie
MUMC+: MA Radiotherapie OC (9)
Interne Geneeskunde
MUMC+: MA Medische Oncologie (9)
Beeldvorming
MUMC+: DA BV Medisch Specialisten Radiologie (9)
MUMC+: DA BV AIOS Nucleaire Geneeskunde (9)
MUMC+: DA BV AIOS Radiologie (9)
Source :
Cancers, 13, Cancers, 13, 4, Cancers, Volume 13, Issue 4, Cancers, 13(4):722. Multidisciplinary Digital Publishing Institute (MDPI), Cancers, Vol 13, Iss 722, p 722 (2021)
Publication Year :
2021

Abstract

Glioblastoma (GBM) is the most malignant primary brain tumor for which no curative treatment options exist. Non-invasive qualitative (Visually Accessible Rembrandt Images (VASARI)) and quantitative (radiomics) imaging features to predict prognosis and clinically relevant markers for GBM patients are needed to guide clinicians. A retrospective analysis of GBM patients in two neuro-oncology centers was conducted. The multimodal Cox-regression model to predict overall survival (OS) was developed using clinical features with VASARI and radiomics features in isocitrate dehydrogenase (IDH)-wild type GBM. Predictive models for IDH-mutation, 06-methylguanine-DNA-methyltransferase (MGMT)-methylation and epidermal growth factor receptor (EGFR) amplification using imaging features were developed using machine learning. The performance of the prognostic model improved upon addition of clinical, VASARI and radiomics features, for which the combined model performed best. This could be reproduced after external validation (C-index 0.711 95% CI 0.64–0.78) and used to stratify Kaplan–Meijer curves in two survival groups (p-value &lt<br />0.001). The predictive models performed significantly in the external validation for EGFR amplification (area-under-the-curve (AUC) 0.707, 95% CI 0.582–8.25) and MGMT-methylation (AUC 0.667, 95% CI 0.522–0.82) but not for IDH-mutation (AUC 0.695, 95% CI 0.436–0.927). The integrated clinical and imaging prognostic model was shown to be robust and of potential clinical relevance. The prediction of molecular markers showed promising results in the training set but could not be validated after external validation in a clinically relevant manner. Overall, these results show the potential of combining clinical features with imaging features for prognostic and predictive models in GBM, but further optimization and larger prospective studies are warranted.

Details

ISSN :
20726694
Database :
OpenAIRE
Journal :
Cancers, 13, Cancers, 13, 4, Cancers, Volume 13, Issue 4, Cancers, 13(4):722. Multidisciplinary Digital Publishing Institute (MDPI), Cancers, Vol 13, Iss 722, p 722 (2021)
Accession number :
edsair.doi.dedup.....ed1eee61148171a4bad3da7daa602314