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arxiv: 2306.10611 · v1 · pith:GV3QML22new · submitted 2023-06-18 · 📡 eess.IV · cs.CV· cs.LG

Deep learning-based group-wise registration for longitudinal MRI analysis in glioma

classification 📡 eess.IV cs.CVcs.LG
keywords gliomaregistrationlongitudinalanalysisclassicalgrowthlearning-basedmethods
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Glioma growth may be quantified with longitudinal image registration. However, the large mass-effects and tissue changes across images pose an added challenge. Here, we propose a longitudinal, learning-based, and groupwise registration method for the accurate and unbiased registration of glioma MRI. We evaluate on a dataset from the Glioma Longitudinal AnalySiS consortium and compare it to classical registration methods. We achieve comparable Dice coefficients, with more detailed registrations, while significantly reducing the runtime to under a minute. The proposed methods may serve as an alternative to classical toolboxes, to provide further insight into glioma growth.

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