The added value for MRI radiomics and deep-learning for glioblastoma prognostication compared to clinical and molecular information
D. Abler, O. Pusterla, A. Joye-K\"uhnis, N. Andratschke, M. Bach, A. Bink, S. M. Christ, P. Hagmann, B. Pouymayou, E. Pravat\`a, P. Radojewski, M. Reyes, L. Ruinelli, R. Schaer, B. Stieltjes, G. Treglia, W. Valenzuela, R. Wiest, S. Zoergiebel, M. Guckenberger, S. Tanadini-Lang

TL;DR
This study evaluates whether MRI radiomics and deep learning add prognostic value for glioblastoma beyond clinical and molecular data, finding minimal additional benefit in a large multi-center dataset.
Contribution
It provides a comprehensive multi-center analysis comparing radiomics and deep learning models to clinical predictors for glioblastoma prognosis.
Findings
Combined radiomics models slightly outperform clinical-only models in external validation.
Deep learning models show similar trends but lack statistical significance.
Imaging data has greater relevance for overall survival prediction than clinical data.
Abstract
Background: Radiomics shows promise in characterizing glioblastoma, but its added value over clinical and molecular predictors has yet to be proven. This study assessed the added value of conventional radiomics (CR) and deep learning (DL) MRI radiomics for glioblastoma prognosis (<= 6 vs > 6 months survival) on a large multi-center dataset. Methods: After patient selection, our curated dataset gathers 1152 glioblastoma (WHO 2016) patients from five Swiss centers and one public source. It included clinical (age, gender), molecular (MGMT, IDH), and baseline MRI data (T1, T1 contrast, FLAIR, T2) with tumor regions. CR and DL models were developed using standard methods and evaluated on internal and external cohorts. Sub-analyses assessed models with different feature sets (imaging-only, clinical/molecular-only, combined-features) and patient subsets (S-1: all patients, S-2: with…
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