Effective Semi-Supervised Medical Image Segmentation With Probabilistic Representations and Prototype Learning

Yuchen Yuan;Xi Wang;Xikai Yang;Pheng-Ann Heng
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Abstract

Label scarcity, class imbalance and data uncertainty are three primary challenges that are commonly encountered in the semi-supervised medical image segmentation. In this work, we focus on the data uncertainty issue that is overlooked by previous literature. To address this issue, we propose a probabilistic prototype-based classifier that introduces uncertainty estimation into the entire pixel classification process, including probabilistic representation formulation, probabilistic pixel-prototype proximity matching, and distribution prototype update, leveraging principles from probability theory. By explicitly modeling data uncertainty at the pixel level, model robustness of our proposed framework to tricky pixels, such as ambiguous boundaries and noises, is greatly enhanced when compared to its deterministic counterpart and other uncertainty-aware strategy. Empirical evaluations on three publicly available datasets that exhibit severe boundary ambiguity show the superiority of our method over several competitors. Moreover, our method also demonstrates a stronger model robustness to simulated noisy data. Code is available at https://github.com/IsYuchenYuan/PPC.
利用概率表征和原型学习实现有效的半监督医学图像分割
标签稀缺性、类别不平衡和数据不确定性是半监督医学图像分割中常见的三个主要挑战。在这项工作中,我们重点关注数据不确定性问题,这是被以往的文献所忽视的。为了解决这个问题,我们提出了一种基于概率原型的分类器,利用概率论的原理,将不确定性估计引入到整个像素分类过程中,包括概率表示公式、概率像素-原型接近匹配和分布原型更新。通过在像素级明确建模数据的不确定性,我们提出的框架的模型鲁棒性对棘手的像素,如模糊的边界和噪声,相比于其确定性对口和其他不确定性感知策略大大增强。对表现出严重边界模糊的三个公开可用数据集的实证评估表明,我们的方法优于几个竞争对手。此外,该方法对模拟噪声数据具有较强的鲁棒性。代码可从https://github.com/IsYuchenYuan/PPC获得。
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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