Universal Topology Refinement for Medical Image Segmentation with Polynomial Feature Synthesis

Liu Li, Hanchun Wang, Matthew Baugh, Qiang Ma, Weitong Zhang, Cheng Ouyang, Daniel Rueckert, Bernhard Kainz
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Abstract

Although existing medical image segmentation methods provide impressive pixel-wise accuracy, they often neglect topological correctness, making their segmentations unusable for many downstream tasks. One option is to retrain such models whilst including a topology-driven loss component. However, this is computationally expensive and often impractical. A better solution would be to have a versatile plug-and-play topology refinement method that is compatible with any domain-specific segmentation pipeline. Directly training a post-processing model to mitigate topological errors often fails as such models tend to be biased towards the topological errors of a target segmentation network. The diversity of these errors is confined to the information provided by a labelled training set, which is especially problematic for small datasets. Our method solves this problem by training a model-agnostic topology refinement network with synthetic segmentations that cover a wide variety of topological errors. Inspired by the Stone-Weierstrass theorem, we synthesize topology-perturbation masks with randomly sampled coefficients of orthogonal polynomial bases, which ensures a complete and unbiased representation. Practically, we verified the efficiency and effectiveness of our methods as being compatible with multiple families of polynomial bases, and show evidence that our universal plug-and-play topology refinement network outperforms both existing topology-driven learning-based and post-processing methods. We also show that combining our method with learning-based models provides an effortless add-on, which can further improve the performance of existing approaches.
利用多项式特征合成对医学图像进行通用拓扑细化分割
尽管现有的医学图像分割方法在像素精度上令人印象深刻,但它们往往忽视拓扑的正确性,导致其分割结果无法用于许多下游任务。一种方法是重新训练此类模型,同时加入拓扑驱动的损失成分。然而,这样做的计算成本很高,而且往往不切实际。更好的解决方案是采用一种通用的即插即用拓扑细化方法,这种方法可以与任何特定领域的分割管道兼容。直接训练拓扑处理模型来减少拓扑误差往往会失败,因为这种模型往往偏向于目标分割网络的拓扑误差。我们的方法通过使用涵盖各种拓扑错误的合成分割来训练一个与模型无关的拓扑细化网络,从而解决了这个问题。在 Stone-Weierstrass 定理的启发下,我们用随机采样的正交多项式基的系数合成拓扑扰动掩码,从而确保了完整且无偏的表示。在实践中,我们验证了我们的方法与多个多项式基系列兼容的效率和有效性,并证明我们的通用即插即用拓扑细化网络优于现有的基于拓扑驱动学习的方法和后处理方法。我们还展示了将我们的方法与基于学习的模型相结合的简便附加方法,它能进一步提高现有方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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