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RevPHiSeg: A Memory-Efficient Neural Network for Uncertainty Quantification in Medical Image Segmentation

机译:RevPhiseg:用于医学图像分割中的不确定度量的记忆高效的神经网络

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Quantifying segmentation uncertainty has become an important issue in medical image analysis due to the inherent ambiguity of anatomical structures and its pathologies. Recently, neural network-based uncertainty quantification methods have been successfully applied to various problems. One of the main limitations of the existing techniques is the high memory requirement during training; which limits their application to processing smaller field-of-views (FOVs) and/or using shallower architectures. In this paper, we investigate the effect of using reversible blocks for building memory-efficient neural network architectures for quantification of segmentation uncertainty. The reversible architecture achieves memory saving by exactly computing the activations from the outputs of the subsequent layers during backpropaga-tion instead of storing the activations for each layer. We incorporate the reversible blocks into a recently proposed architecture called PHiSeg that is developed for uncertainty quantification in medical image segmentation. The reversible architecture, RevPHiSeg, allows training neural networks for quantifying segmentation uncertainty on GPUs with limited memory and processing larger FOVs. We perform experiments on the LIDC-IDRI dataset and an in-house prostate dataset, and present comparisons with PHiSeg. The results demonstrate that RevPHiSeg consumes ~30% less memory compared to PHiSeg while achieving very similar segmentation accuracy.
机译:由于解剖结构及其病理学的固有模糊性,量化分割不确定性已成为医学图像分析的重要问题。最近,基于神经网络的不确定性量化方法已经成功应用于各种问题。现有技术的主要局限之一是培训期间的内存高的需求;这将其应用限制为处理较小的视野(FOV)和/或使用较浅的架构。在本文中,我们研究了使用可逆块来建立内存高效神经网络架构的效果,以便定量分割不确定性。可逆架构通过在BackPropaga-Tion期间恰好计算从后续层的输出而不是存储每个层的激活来实现内存节省。我们将可逆块纳入最近提出的架构,称为PHISEG,该架构是为了在医学图像分割中用于不确定性量化而开发的。 Reversible架构RevPhiseg允许培训神经网络,用于量化GPU的分割不确定性,内存有限,处理更大的FOV。我们在LIDC-IDRI数据集和内部前列腺数据集上执行实验,并与PHISEG进行比较。结果表明,与PHISEG相比,Refphiseg消耗了〜30%的内存,同时实现了非常相似的分割精度。

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