IEEE Trans Med Imaging. 2022 Nov;41(11):3062-3073. doi: 10.1109/TMI.2022.3176915. Epub 2022 Oct 27.
Manually segmenting medical images is expertise-demanding, time-consuming and laborious. Acquiring massive high-quality labeled data from experts is often infeasible. Unfortunately, without sufficient high-quality pixel-level labels, the usual data-driven learning-based segmentation methods often struggle with deficient training. As a result, we are often forced to collect additional labeled data from multiple sources with varying label qualities. However, directly introducing additional data with low-quality noisy labels may mislead the network training and undesirably offset the efficacy provided by those high-quality labels. To address this issue, we propose a Mean-Teacher-assisted Confident Learning (MTCL) framework constructed by a teacher-student architecture and a label self-denoising process to robustly learn segmentation from a small set of high-quality labeled data and plentiful low-quality noisy labeled data. Particularly, such a synergistic framework is capable of simultaneously and robustly exploiting (i) the additional dark knowledge inside the images of low-quality labeled set via perturbation-based unsupervised consistency, and (ii) the productive information of their low-quality noisy labels via explicit label refinement. Comprehensive experiments on left atrium segmentation with simulated noisy labels and hepatic and retinal vessel segmentation with real-world noisy labels demonstrate the superior segmentation performance of our approach as well as its effectiveness on label denoising.
手动分割医学图像需要专业知识,既耗时又费力。从专家那里获取大量高质量的标记数据通常是不可行的。不幸的是,如果没有足够的高质量像素级标签,通常基于数据驱动的学习的分割方法往往难以进行充分的训练。因此,我们经常被迫从多个来源收集额外的具有不同标签质量的标记数据。然而,直接引入带有低质量噪声标签的额外数据可能会误导网络训练,并不适当地抵消高质量标签提供的效果。为了解决这个问题,我们提出了一个由教师-学生架构和标签自去噪过程构建的 Mean-Teacher-assisted Confident Learning (MTCL) 框架,以从小量高质量标记数据和大量低质量噪声标记数据中稳健地学习分割。特别是,这种协同框架能够同时稳健地利用(i)低质量标记集图像中的额外暗知识,通过基于扰动的无监督一致性;以及(ii)通过显式标签细化利用其低质量噪声标签的生产信息。在带有模拟噪声标签的左心房分割和带有真实世界噪声标签的肝脏和视网膜血管分割上的综合实验表明了我们的方法的优越分割性能,以及其在标签去噪方面的有效性。