Brain Tumor Progression Modeling - A Data Driven Approach

Christian Weber1*,Michael Götz,Bram Stieltjes,Joanna Polanska,Franciszek Binczyk,Rafal Tarnawski,Barbara Bobek-Billewicz,Klaus Maier-Hein
1.German Cancer Research Center
Abstract

Abstract

Malignant gliomas are highly heterogeneous brain tumors with complex an- isotropic growth patterns and occult invasion. Computational modeling of cell migration and proliferation has been subject of intensive research aiming at a deeper understanding of the tumor biology and the ability to predict growth and thus improve therapy. However, current modeling techniques follow a generative approach and make strong assumptions about underlying mechanisms. The tumor is so far treated as homogeneous entity with behavioral parameters extrapolated from previous longitudinal image information. We present a novel way of approaching this problem by employing data driven, discrim- inative modeling techniques that learn relevant features from observed growth patterns and are able to make meaningful predictions solely on basis of local and regional tissue characteristics at one given point in time. We demonstrate superior performance of the proposed discriminative method (DICE score 83) compared to the state of the art generative approach (DICE score 72) on six patients and a total of nine different time intervals. Our approach can help estimating occult invasion as well as it can advance our understanding of the tumor biology and lead to valuable predictions of tumor growth patterns that could guide and improve radio therapy.

Keywords

classificationradiation margintumor growth modelradio therapy
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Source Code and Data

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