Patient-specific prediction of glioblastoma growth via reduced order modeling and neural networks.

in Mathematical biosciences by D Cerrone, D Riccobelli, S Gazzoni, P Vitullo, F Ballarin, J Falco, F Acerbi, A Manzoni, P Zunino, P Ciarletta

TLDR

  • The study presents a proof-of-concept for a mathematical model of Glioblastoma growth, enabling real-time prediction and patient-specific parameter identification from longitudinal neuroimaging data.
  • The framework combines neural networks with sensitivity analyses to ensure robustness and interpretability, identifying key biophysical parameters governing tumor dynamics.

Abstract

Glioblastoma is among the most aggressive brain tumors in adults, characterized by patient-specific invasion patterns driven by the underlying brain microstructure. In this work, we present a proof-of-concept for a mathematical model of GBL growth, enabling real-time prediction and patient-specific parameter identification from longitudinal neuroimaging data. The framework exploits a diffuse-interface mathematical model to describe the tumor evolution and a reduced-order modeling strategy, relying on proper orthogonal decomposition, trained on synthetic data derived from patient-specific brain anatomies reconstructed from magnetic resonance imaging and diffusion tensor imaging. A neural network surrogate learns the inverse mapping from tumor evolution to model parameters, achieving significant computational speed-up while preserving high accuracy. To ensure robustness and interpretability, we perform both global and local sensitivity analyses, identifying the key biophysical parameters governing tumor dynamics and assessing the stability of the inverse problem solution. These results establish a methodological foundation for future clinical deployment of patient-specific digital twins in neuro-oncology.

Overview

  • The study presents a mathematical model of Glioblastoma growth, enabling real-time prediction and patient-specific parameter identification from longitudinal neuroimaging data.
  • The model uses a diffuse-interface mathematical approach to describe the tumor evolution, along with a reduced-order modeling strategy based on proper orthogonal decomposition.
  • The framework combines neural networks with sensitivity analyses to ensure robustness and interpretability, identifying key biophysical parameters governing tumor dynamics.

Comparative Analysis & Findings

  • The results establish a methodological foundation for patient-specific digital twins in neuro-oncology, enabling real-time predictions and personalized treatment strategies.
  • The study demonstrates the ability to accurately model tumor growth and identify patient-specific parameters from longitudinal neuroimaging data.
  • The framework also enables sensitivity analysis, allowing for the identification of key biophysical parameters governing tumor dynamics and assessment of solution stability.

Implications and Future Directions

  • The study has the potential to inform personalized treatment strategies for Glioblastoma patients, enabling targeted therapies and improved patient outcomes.
  • Future research directions include incorporating additional biomarkers and refining the model's biophysical parameters through machine learning and data-driven approaches.
  • The framework also offers opportunities for integration with other models and algorithms, enabling multimodal analysis and more comprehensive understanding of tumor dynamics.