Publication:
Morphological MRI-based features provide pretreatment survival prediction in glioblastoma.

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Date

2018-10-15

Authors

Perez-Beteta, Julian
Molina-Garcia, David
Martinez-Gonzalez, Alicia
Henares-Molina, Araceli
Amo-Salas, Mariano
Luque, Belen
Arregui, Elena
Calvo, Manuel
Borras, Jose M
Martino, Juan

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Springer
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Abstract

Objectives: We wished to determine whether tumor morphology descriptors obtained from pretreatment magnetic resonance images and clinical variables could predict survival for glioblastoma patients. Methods: A cohort of 404 glioblastoma patients (311 discoveries and 93 validations) was used in the study. Pretreatment volumetric postcontrast T1-weighted magnetic resonance images were segmented to obtain the relevant morphological measures. Kaplan-Meier, Cox proportional hazards, correlations, and Harrell’s concordance indexes (c-indexes) were used for the statistical analysis. Results: A linear prognostic model based on the outstanding variables (age, contrast-enhanced (CE) rim width, and surface regularity) identified a group of patients with significantly better survival (p < 0.001, HR = 2.57) with high accuracy (discovery c-index = 0.74; validation c-index = 0.77). A similar model applied to totally resected patients was also able to predict survival (p < 0.001, HR = 3.43) with high predictive value (discovery c-index = 0.81; validation c-index = 0.92). Biopsied patients with better survival were well identified (p < 0.001, HR = 7.25) by a model including age and CE volume (c-index = 0.87). Conclusions: Simple linear models based on small sets of meaningful MRI-based pretreatment morphological features and age predicted survival of glioblastoma patients to a high degree of accuracy. The partition of the population using the extent of resection improved the prognostic value of those measures.

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MeSH Terms

Prognosis
Linear Models
Biopsy
Magnetic Resonance Imaging

DeCS Terms

Descriptores
Espectroscopía de Resonancia Magnética
Neoplasias
Imagen por Resonancia Magnética
Modelos Lineales

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Keywords

Glioblastoma, Prognosis, Biomarkers, Survival analysis, Multivariate analysis

Citation

Pérez-Beteta J, Molina-García D, Martínez-González A, Henares-Molina A, Amo-Salas M, Luque B, et al. Morphological MRI-based features provide pretreatment survival prediction in glioblastoma. Eur Radiol. 2019 Apr;29(4):1968-1977