TY - JOUR
T1 - Toward image-based personalization of glioblastoma therapy
T2 - A clinical and biological validation study of a novel, deep learning-driven tumor growth model
AU - Metz, Marie Christin
AU - Ezhov, Ivan
AU - Peeken, Jan C.
AU - Buchner, Josef A.
AU - Lipkova, Jana
AU - Kofler, Florian
AU - Waldmannstetter, Diana
AU - Delbridge, Claire
AU - Diehl, Christian
AU - Bernhardt, Denise
AU - Schmidt-Graf, Friederike
AU - Gempt, Jens
AU - Combs, Stephanie E.
AU - Zimmer, Claus
AU - Menze, Bjoern
AU - Wiestler, Benedikt
N1 - Publisher Copyright:
© The Author(s) 2023. Published by Oxford University Press.
PY - 2024/1/1
Y1 - 2024/1/1
N2 - Background. The diffuse growth pattern of glioblastoma is one of the main challenges for accurate treatment. Computational tumor growth modeling has emerged as a promising tool to guide personalized therapy. Here, we performed clinical and biological validation of a novel growth model, aiming to close the gap between the experimental state and clinical implementation. Methods. One hundred and twenty-four patients fromThe Cancer Genome Archive (TCGA) and 397 patients from the UCSF Glioma Dataset were assessed for significant correlations between clinical data, genetic pathway activation maps (generated with PARADIGM; TCGA only), and infiltration (Dw) as well as proliferation (ρ) parameters stemming from a Fisher–Kolmogorov growth model.To further evaluate clinical potential, we performed the same growth modeling on preoperative magnetic resonance imaging data from 30 patients of our institution and compared model-derived tumor volume and recurrence coverage with standard radiotherapy plans. Results. The parameter ratio Dw/ρ (P < .05 inTCGA) as well as the simulated tumor volume (P < .05 inTCGA/UCSF) were significantly inversely correlated with overall survival. Interestingly, we found a significant correlation between 11 proliferation pathways and the estimated proliferation parameter. Depending on the cutoff value for tumor cell density, we observed a significant improvement in recurrence coverage without significantly increased radiation volume utilizing model-derived target volumes instead of standard radiation plans. Conclusions. Identifying a significant correlation between computed growth parameters and clinical and biological data, we highlight the potential of tumor growth modeling for individualized therapy of glioblastoma.This might improve the accuracy of radiation planning in the near future.
AB - Background. The diffuse growth pattern of glioblastoma is one of the main challenges for accurate treatment. Computational tumor growth modeling has emerged as a promising tool to guide personalized therapy. Here, we performed clinical and biological validation of a novel growth model, aiming to close the gap between the experimental state and clinical implementation. Methods. One hundred and twenty-four patients fromThe Cancer Genome Archive (TCGA) and 397 patients from the UCSF Glioma Dataset were assessed for significant correlations between clinical data, genetic pathway activation maps (generated with PARADIGM; TCGA only), and infiltration (Dw) as well as proliferation (ρ) parameters stemming from a Fisher–Kolmogorov growth model.To further evaluate clinical potential, we performed the same growth modeling on preoperative magnetic resonance imaging data from 30 patients of our institution and compared model-derived tumor volume and recurrence coverage with standard radiotherapy plans. Results. The parameter ratio Dw/ρ (P < .05 inTCGA) as well as the simulated tumor volume (P < .05 inTCGA/UCSF) were significantly inversely correlated with overall survival. Interestingly, we found a significant correlation between 11 proliferation pathways and the estimated proliferation parameter. Depending on the cutoff value for tumor cell density, we observed a significant improvement in recurrence coverage without significantly increased radiation volume utilizing model-derived target volumes instead of standard radiation plans. Conclusions. Identifying a significant correlation between computed growth parameters and clinical and biological data, we highlight the potential of tumor growth modeling for individualized therapy of glioblastoma.This might improve the accuracy of radiation planning in the near future.
KW - deep learning
KW - glioblastoma
KW - personalized therapy
KW - tumor growth modeling
UR - http://www.scopus.com/inward/record.url?scp=85186551655&partnerID=8YFLogxK
U2 - 10.1093/noajnl/vdad171
DO - 10.1093/noajnl/vdad171
M3 - Article
AN - SCOPUS:85186551655
SN - 2632-2498
VL - 6
JO - Neuro-Oncology Advances
JF - Neuro-Oncology Advances
IS - 1
M1 - vdad171
ER -