Consistency-guided Meta-Learning for Bootstrapping Semi-Supervised Medical Image Segmentation

Qingyue Wei, Lequan Yu, Xianhang Li, Wei Shao, Cihang Xie, Lei Xing, Yuyin Zhou
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引用次数: 2

Abstract

Medical imaging has witnessed remarkable progress but usually requires a large amount of high-quality annotated data which is time-consuming and costly to obtain. To alleviate this burden, semi-supervised learning has garnered attention as a potential solution. In this paper, we present Meta-Learning for Bootstrapping Medical Image Segmentation (MLB-Seg), a novel method for tackling the challenge of semi-supervised medical image segmentation. Specifically, our approach first involves training a segmentation model on a small set of clean labeled images to generate initial labels for unlabeled data. To further optimize this bootstrapping process, we introduce a per-pixel weight mapping system that dynamically assigns weights to both the initialized labels and the model's own predictions. These weights are determined using a meta-process that prioritizes pixels with loss gradient directions closer to those of clean data, which is based on a small set of precisely annotated images. To facilitate the meta-learning process, we additionally introduce a consistency-based Pseudo Label Enhancement (PLE) scheme that improves the quality of the model's own predictions by ensembling predictions from various augmented versions of the same input. In order to improve the quality of the weight maps obtained through multiple augmentations of a single input, we introduce a mean teacher into the PLE scheme. This method helps to reduce noise in the weight maps and stabilize its generation process. Our extensive experimental results on public atrial and prostate segmentation datasets demonstrate that our proposed method achieves state-of-the-art results under semi-supervision. Our code is available at https://github.com/aijinrjinr/MLB-Seg.
基于一致性引导的元学习自举半监督医学图像分割
医学成像取得了显著的进步,但通常需要大量高质量的注释数据,这些数据耗时且成本高昂。为了减轻这种负担,半监督学习作为一种潜在的解决方案引起了人们的关注。在本文中,我们提出了一种用于自引导医学图像分割(MLB-Seg)的元学习方法,这是一种解决半监督医学图像分割挑战的新方法。具体来说,我们的方法首先涉及在一小组干净标记的图像上训练分割模型,以生成未标记数据的初始标签。为了进一步优化这个自举过程,我们引入了一个逐像素权重映射系统,该系统可以动态地为初始化的标签和模型自己的预测分配权重。这些权重是使用元过程确定的,该过程优先考虑损失梯度方向更接近干净数据的像素,这是基于一小组精确注释的图像。为了促进元学习过程,我们还引入了一种基于一致性的伪标签增强(PLE)方案,该方案通过集成来自相同输入的各种增强版本的预测来提高模型自身预测的质量。为了提高通过对单个输入的多次增强得到的权重图的质量,我们在PLE方案中引入了一个平均教师。该方法有助于降低权重图中的噪声,稳定权重图的生成过程。我们在公共心房和前列腺分割数据集上的广泛实验结果表明,我们提出的方法在半监督下取得了最先进的结果。我们的代码可在https://github.com/aijinrjinr/MLB-Seg上获得。
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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