Med-NCA: Robust and Lightweight Segmentation with Neural Cellular Automata

John Kalkhof, Camila Gonz'alez, A. Mukhopadhyay
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引用次数: 1

Abstract

Access to the proper infrastructure is critical when performing medical image segmentation with Deep Learning. This requirement makes it difficult to run state-of-the-art segmentation models in resource-constrained scenarios like primary care facilities in rural areas and during crises. The recently emerging field of Neural Cellular Automata (NCA) has shown that locally interacting one-cell models can achieve competitive results in tasks such as image generation or segmentations in low-resolution inputs. However, they are constrained by high VRAM requirements and the difficulty of reaching convergence for high-resolution images. To counteract these limitations we propose Med-NCA, an end-to-end NCA training pipeline for high-resolution image segmentation. Our method follows a two-step process. Global knowledge is first communicated between cells across the downscaled image. Following that, patch-based segmentation is performed. Our proposed Med-NCA outperforms the classic UNet by 2% and 3% Dice for hippocampus and prostate segmentation, respectively, while also being 500 times smaller. We also show that Med-NCA is by design invariant with respect to image scale, shape and translation, experiencing only slight performance degradation even with strong shifts; and is robust against MRI acquisition artefacts. Med-NCA enables high-resolution medical image segmentation even on a Raspberry Pi B+, arguably the smallest device able to run PyTorch and that can be powered by a standard power bank.
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Med-NCA:基于神经细胞自动机的鲁棒轻量级分割
在使用深度学习进行医学图像分割时,访问适当的基础设施至关重要。这一要求使得在农村地区初级保健设施等资源受限的情况下和危机期间难以运行最先进的分割模型。最近出现的神经细胞自动机(NCA)领域表明,局部相互作用的单细胞模型可以在低分辨率输入的图像生成或分割等任务中获得竞争结果。然而,它们受到高VRAM要求和难以达到高分辨率图像收敛的限制。为了克服这些限制,我们提出了Med-NCA,一种用于高分辨率图像分割的端到端NCA训练管道。我们的方法分为两步。全局知识首先在缩小图像的细胞之间进行交流。之后,执行基于补丁的分割。我们提出的Med-NCA在海马体和前列腺分割方面分别比经典UNet高2%和3%,同时也小500倍。我们还表明,通过设计,Med-NCA在图像尺度、形状和平移方面是不变的,即使有强烈的移位,也只会出现轻微的性能下降;并且对MRI采集伪影具有鲁棒性。Med-NCA甚至可以在树莓派B+上实现高分辨率医学图像分割,树莓派B+可以说是能够运行PyTorch的最小设备,可以由标准充电宝供电。
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