Cluster-based prognostication in glioblastoma: Unveiling heterogeneity based on diffusion and perfusion similarities

Background.   While the association between diffusion and perfusion magnetic resonance imaging (MRI) and survival in glioblastoma is established, prognostic models for patients are lacking. This study employed clustering of functional imaging to identify distinct functional phenotypes in untreated g...

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Main Authors: Foltyn-Dumitru, Martha (Author) , Keßler, Tobias (Author) , Sahm, Felix (Author) , Wick, Wolfgang (Author) , Heiland, Sabine (Author) , Bendszus, Martin (Author) , Vollmuth, Philipp (Author) , Schell, Marianne (Author)
Format: Article (Journal)
Language:English
Published: June 2024
In: Neuro-Oncology
Year: 2024, Volume: 26, Issue: 6, Pages: 1099-1108
ISSN:1523-5866
DOI:10.1093/neuonc/noad259
Online Access:Verlag, lizenzpflichtig, Volltext: https://doi.org/10.1093/neuonc/noad259
Verlag, lizenzpflichtig, Volltext: https://academic.oup.com/neuro-oncology/advance-article/doi/10.1093/neuonc/noad259/7503332
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Author Notes:Martha Foltyn-Dumitru, Tobias Kessler, Felix Sahm, Wolfgang Wick, Sabine Heiland, Martin Bendszus, Philipp Vollmuth, and Marianne Schell
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Summary:Background.   While the association between diffusion and perfusion magnetic resonance imaging (MRI) and survival in glioblastoma is established, prognostic models for patients are lacking. This study employed clustering of functional imaging to identify distinct functional phenotypes in untreated glioblastomas, assessing their prognostic significance for overall survival. - Methods.   A total of 289 patients with glioblastoma who underwent preoperative multimodal MR imaging were included. Mean values of apparent diffusion coefficient normalized relative cerebral blood volume and relative cerebral blood flow were calculated for different tumor compartments and the entire tumor. Distinct imaging patterns were identified using partition around medoids (PAM) clustering on the training dataset, and their ability to predict overall survival was assessed. Additionally, tree-based machine-learning models were trained to ascertain the significance of features pertaining to cluster membership. - Results.   Using the training dataset (231/289) we identified 2 stable imaging phenotypes through PAM clustering with significantly different overall survival (OS). Validation in an independent test set revealed a high-risk group with a median OS of 10.2 months and a low-risk group with a median OS of 26.6 months (P = 0.012). Patients in the low-risk cluster had high diffusion and low perfusion values throughout, while the high-risk cluster displayed the reverse pattern. Including cluster membership in all multivariate Cox regression analyses improved performance (P ≤ 0.004 each). - Conclusions.   Our research demonstrates that data-driven clustering can identify clinically relevant, distinct imaging phenotypes, highlighting the potential role of diffusion, and perfusion MRI in predicting survival rates of glioblastoma patients.
Item Description:Advance access date 28 December 2023
Gesehen am 03.06.2024
Physical Description:Online Resource
ISSN:1523-5866
DOI:10.1093/neuonc/noad259