Segmentation of brain tumors using a semi-automatic computational strategy

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Abstract

In this work, a semi-automatic computational strategy is proposed for brain tumor segmentation. The filtering (erosion + gaussian filters), segmentation (level set technique) and quantification (BT volume) stages are applied to magnetic resonance imaging in order to generate the three-dimensional morphology of brain tumors. The Jaccard's Similarity Index is considered to contrast manual segmentation with semi-automatic segmentations of brain tumor. In this sense, the highest Jaccard's Similarity Index provides the best parameters of the techniques that constitute the semi-automatic computational strategy. Results are promising, showing an excellent correlation between these segmentations. The volume is used for the brain tumors characterization.

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Vera, M., Huérfano, Y., Gelvez, E., Valbuena, O., Salazar, J., Molina, V., … Sáenz, F. (2019). Segmentation of brain tumors using a semi-automatic computational strategy. In Journal of Physics: Conference Series (Vol. 1160). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/1160/1/012002

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