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Multi-modal Segmentation with Missing MR Sequences Using Pre-trained Fusion Networks

机译:使用预先培训的融合网络丢失MR序列的多模态分割

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Missing data is a common problem in machine learning and in retrospective imaging research it is often encountered in the form of missing imaging modalities. We propose to take into account missing modalities in the design and training of neural networks, to ensure that they are capable of providing the best possible prediction even when multiple images are not available. The proposed network combines three modifications to the standard 3D UNet architecture: a training scheme with dropout of modalities, a multi-pathway architecture with fusion layer in the final stage, and the separate pre-training of these pathways. These modifications are evaluated incrementally in terms of performance on full and missing data, using the BraTS multi-modal segmentation challenge. The final model shows significant improvement with respect to the state of the art on missing data and requires less memory during training.
机译:缺少数据是机器学习中的常见问题,并且在回顾性的成像研究中,它通常以缺失的成像方式的形式遇到。我们建议考虑到神经网络的设计和培训中缺少的方式,以确保它们能够提供最佳的预测,即使多个图像不可用。所提出的网络将三种修改与标准3D UNET架构相结合:具有模态的训练方案,在最终阶段中具有融合层的多通路架构,以及这些途径的单独预训练。使用BRATS多模态分割挑战,在完整缺失数据的性能方面逐步评估这些修改。最终模型对缺失数据的最新技术表现出显着的改进,并且在训练期间需要更少的内存。

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