Fusion based on attention mechanism and context constraint for multi-modal brain tumor segmentation.

Comput Med Imaging Graph

Université de Rouen Normandie, LITIS - QuantIF, Rouen 76183, France; Normandie Univ, INSA Rouen, UNIROUEN, UNIHAVRE, LITIS, France. Electronic address:

Published: December 2020

AI Article Synopsis

  • The paper introduces a deep learning-based 3D brain tumor segmentation network that utilizes multi-sequence MRI datasets in a three-stage process.
  • The first stage involves using a 3D U-Net to generate context constraints for tumor regions, followed by fusing multi-sequence MRIs with an attention mechanism for individual tumor segmentation.
  • A new loss function addresses multiple class segmentation, and a second 3D U-Net refines the predictions, achieving promising results in metrics like dice score and hausdorff distance on the BraTS 2017 dataset.

Article Abstract

This paper presents a 3D brain tumor segmentation network from multi-sequence MRI datasets based on deep learning. We propose a three-stage network: generating constraints, fusion under constraints and final segmentation. In the first stage, an initial 3D U-Net segmentation network is introduced to produce an additional context constraint for each tumor region. Under the obtained constraint, multi-sequence MRI are then fused using an attention mechanism to achieve three single tumor region segmentations. Considering the location relationship of the tumor regions, a new loss function is introduced to deal with the multiple class segmentation problem. Finally, a second 3D U-Net network is applied to combine and refine the three single prediction results. In each stage, only 8 initial filters are used, allowing to decrease significantly the number of parameters to be estimated. We evaluated our method on BraTS 2017 dataset. The results are promising in terms of dice score, hausdorff distance, and the amount of memory required for training.

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http://dx.doi.org/10.1016/j.compmedimag.2020.101811DOI Listing

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