利用随机专家为医学图像分割进行隐式解剖渲染

Chenyu You, Weicheng Dai, Yifei Min, Lawrence Staib, James S Duncan
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摘要

整合高级语义相关内容和低级解剖特征在医学图像分割中至关重要。为此,最近基于深度学习的医学分割方法在更好地模拟此类信息方面大有可为。然而,用于医学分割的卷积算子通常是在规则网格上运行的,这就从本质上模糊了高频区域,即边界区域。在这项工作中,我们提出了 MORSE,这是一种在解剖学层面设计的通用隐式神经渲染框架,用于辅助医学图像分割的学习。与基于离散网格的表示法相比,隐式神经表示法在拟合复杂信号和解决计算机图形问题方面更有效。我们方法的核心是以端到端的方式将医学图像分割表述为渲染问题。具体来说,我们不断将粗略的分割预测与模糊的基于坐标的点表示相一致,并将这些特征汇总以自适应地完善边界区域。为了并行优化多尺度像素级特征,我们利用专家混合(MoE)的理念,设计并训练具有随机门控机制的 MORSE。我们的实验证明,MORSE 可以与不同的医疗分割骨干技术很好地配合使用,在二维和三维监督医疗分割方法中不断取得具有竞争力的性能改进。我们还从理论上分析了 MORSE 的优越性。
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Implicit Anatomical Rendering for Medical Image Segmentation with Stochastic Experts.

Integrating high-level semantically correlated contents and low-level anatomical features is of central importance in medical image segmentation. Towards this end, recent deep learning-based medical segmentation methods have shown great promise in better modeling such information. However, convolution operators for medical segmentation typically operate on regular grids, which inherently blur the high-frequency regions, i.e., boundary regions. In this work, we propose MORSE, a generic implicit neural rendering framework designed at an anatomical level to assist learning in medical image segmentation. Our method is motivated by the fact that implicit neural representation has been shown to be more effective in fitting complex signals and solving computer graphics problems than discrete grid-based representation. The core of our approach is to formulate medical image segmentation as a rendering problem in an end-to-end manner. Specifically, we continuously align the coarse segmentation prediction with the ambiguous coordinate-based point representations and aggregate these features to adaptively refine the boundary region. To parallelly optimize multi-scale pixel-level features, we leverage the idea from Mixture-of-Expert (MoE) to design and train our MORSE with a stochastic gating mechanism. Our experiments demonstrate that MORSE can work well with different medical segmentation backbones, consistently achieving competitive performance improvements in both 2D and 3D supervised medical segmentation methods. We also theoretically analyze the superiority of MORSE.

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