Biophysical modeling, particularly involving partial differential equations (PDEs), offers significant potential for tailoring disease treatment protocols to individual patients. However, the inverse problem-solving aspect of these models presents a substantial challenge, either due to the high computational requirements of model-based approaches or the limited robustness of deep learning (DL) methods. We propose a novel framework that leverages the unique strengths of both approaches in a synergistic manner. Our method incorporates a DL ensemble for initial parameter estimation, facilitating efficient downstream evolutionary sampling initialized with this DL-based prior. We showcase the effectiveness of integrating a rapid deep-learning algorithm with a high-precision evolution strategy in estimating brain tumor cell concentrations from magnetic resonance images. The DL-Prior plays a pivotal role, significantly constraining the effective sampling-parameter space. This reduction results in a fivefold convergence acceleration and a Dice-score of 95%.
A Learnable Prior Improves Inverse Tumor Growth Modeling
A combined deep learning and evolutionary sampling approach improves the speed and accuracy of parameter estimation in biophysical models, specifically for estimating brain tumor cell concentrations from MRI images.
- Year
- 2024
- Venue
- arXiv 2024
- Authors
- 14
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2403.04500v2ARXIV-DEFAULT
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