Correspondence-based Generative Bayesian Deep Learning for semi-supervised volumetric medical image segmentation

IF 5.4 2区 医学 Q1 ENGINEERING, BIOMEDICAL Computerized Medical Imaging and Graphics Pub Date : 2024-02-06 DOI:10.1016/j.compmedimag.2024.102352
Yuzhou Zhao , Xinyu Zhou , Tongxin Pan , Shuyong Gao , Wenqiang Zhang
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Abstract

Automated medical image segmentation plays a crucial role in diverse clinical applications. The high annotation costs of fully-supervised medical segmentation methods have spurred a growing interest in semi-supervised methods. Existing semi-supervised medical segmentation methods train the teacher segmentation network using labeled data to establish pseudo labels for unlabeled data. The quality of these pseudo labels is constrained as these methods fail to effectively address the significant bias in the data distribution learned from the limited labeled data. To address these challenges, this paper introduces an innovative Correspondence-based Generative Bayesian Deep Learning (C-GBDL) model. Built upon the teacher–student architecture, we design a multi-scale semantic correspondence method to aid the teacher model in generating high-quality pseudo labels. Specifically, our teacher model, embedded with the multi-scale semantic correspondence, learns a better-generalized data distribution from input volumes by feature matching with the reference volumes. Additionally, a double uncertainty estimation schema is proposed to further rectify the noisy pseudo labels. The double uncertainty estimation takes the predictive entropy as the first uncertainty estimation and takes the structural similarity between the input volume and its corresponding reference volumes as the second uncertainty estimation. Four groups of comparative experiments conducted on two public medical datasets demonstrate the effectiveness and the superior performance of our proposed model. Our code is available on https://github.com/yumjoo/C-GBDL.

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基于对应关系的生成贝叶斯深度学习,用于半监督容积医学图像分割。
自动医学影像分割在各种临床应用中发挥着至关重要的作用。全监督医学图像分割方法的标注成本较高,这促使人们对半监督方法的兴趣与日俱增。现有的半监督医学图像分割方法使用已标注数据训练教师分割网络,为未标注数据建立伪标签。这些伪标签的质量受到限制,因为这些方法无法有效解决从有限的标记数据中学到的数据分布中存在的显著偏差。为了应对这些挑战,本文介绍了一种创新的基于对应关系的生成式贝叶斯深度学习(C-GBDL)模型。在师生架构的基础上,我们设计了一种多尺度语义对应方法,以帮助教师模型生成高质量的伪标签。具体来说,我们的教师模型嵌入了多尺度语义对应方法,通过与参考体积进行特征匹配,从输入体积中学习到更通用的数据分布。此外,我们还提出了一种双重不确定性估计模式,以进一步修正噪声伪标签。双重不确定性估算将预测熵作为第一不确定性估算,将输入体积与相应参考体积之间的结构相似性作为第二不确定性估算。在两个公共医疗数据集上进行的四组对比实验证明了我们提出的模型的有效性和优越性能。我们的代码可在 https://github.com/yumjoo/C-GBDL 上获取。
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来源期刊
CiteScore
10.70
自引率
3.50%
发文量
71
审稿时长
26 days
期刊介绍: The purpose of the journal Computerized Medical Imaging and Graphics is to act as a source for the exchange of research results concerning algorithmic advances, development, and application of digital imaging in disease detection, diagnosis, intervention, prevention, precision medicine, and population health. Included in the journal will be articles on novel computerized imaging or visualization techniques, including artificial intelligence and machine learning, augmented reality for surgical planning and guidance, big biomedical data visualization, computer-aided diagnosis, computerized-robotic surgery, image-guided therapy, imaging scanning and reconstruction, mobile and tele-imaging, radiomics, and imaging integration and modeling with other information relevant to digital health. The types of biomedical imaging include: magnetic resonance, computed tomography, ultrasound, nuclear medicine, X-ray, microwave, optical and multi-photon microscopy, video and sensory imaging, and the convergence of biomedical images with other non-imaging datasets.
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