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Classification of Vascular Malformations Based on T2 STIR Magnetic Resonance Imaging

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Bildverarbeitung für die Medizin 2022

Part of the book series: Informatik aktuell ((INFORMAT))

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Zusammenfassung

Vascular malformations (VMs) are a rare condition. They can be categorized into high-flow and low-flow VMs, which is a challenging task for radiologists. In this work, a very heterogeneous set of MRI images with only rough annotations are used for classification with a convolutional neural network. The main focus is to describe the challenging data set and strategies to deal with such data in terms of preprocessing, annotation usage and choice of the network architecture. We achieved a classification result of 89.47% F1-score with a 3D ResNet 18.

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Correspondence to Christoph Palm .

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© 2022 Der/die Autor(en), exklusiv lizenziert an Springer Fachmedien Wiesbaden GmbH, ein Teil von Springer Nature

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Nunes, D.W., Hammer, M., Hammer, S., Uller, W., Palm, C. (2022). Classification of Vascular Malformations Based on T2 STIR Magnetic Resonance Imaging. In: Maier-Hein, K., Deserno, T.M., Handels, H., Maier, A., Palm, C., Tolxdorff, T. (eds) Bildverarbeitung für die Medizin 2022. Informatik aktuell. Springer Vieweg, Wiesbaden. https://doi.org/10.1007/978-3-658-36932-3_57

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