Deep Probabilistic Modeling of Glioma Growth
About
Existing approaches to modeling the dynamics of brain tumor growth, specifically glioma, employ biologically inspired models of cell diffusion, using image data to estimate the associated parameters. In this work, we propose an alternative approach based on recent advances in probabilistic segmentation and representation learning that implicitly learns growth dynamics directly from data without an underlying explicit model. We present evidence that our approach is able to learn a distribution of plausible future tumor appearances conditioned on past observations of the same tumor.
Jens Petersen, Paul F. J\"ager, Fabian Isensee, Simon A. A. Kohl, Ulf Neuberger, Wolfgang Wick, J\"urgen Debus, Sabine Heiland, Martin Bendszus, Philipp Kickingereder, Klaus H. Maier-Hein• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Glioma tumor growth prediction | MRI dataset 379 patients (test) | Test Loss38.9 | 3 |
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