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通过差异感知选择性训练从不完美标注中学习新冠病毒肺炎病变分割

Learning COVID-19 Pneumonia Lesion Segmentation From Imperfect Annotations via Divergence-Aware Selective Training.

作者信息

Yang Shuojue, Wang Guotai, Sun Hui, Luo Xiangde, Sun Peng, Li Kang, Wang Qijun, Zhang Shaoting

出版信息

IEEE J Biomed Health Inform. 2022 Aug;26(8):3673-3684. doi: 10.1109/JBHI.2022.3172978. Epub 2022 Aug 11.

Abstract

Automatic segmentation of COVID-19 pneumonia lesions is critical for quantitative measurement for diagnosis and treatment management. For this task, deep learning is the state-of-the-art method while requires a large set of accurately annotated images for training, which is difficult to obtain due to limited access to experts and the time-consuming annotation process. To address this problem, we aim to train the segmentation network from imperfect annotations, where the training set consists of a small clean set of accurately annotated images by experts and a large noisy set of inaccurate annotations by non-experts. To avoid the labels with different qualities corrupting the segmentation model, we propose a new approach to train segmentation networks to deal with noisy labels. We introduce a dual-branch network to separately learn from the accurate and noisy annotations. To fully exploit the imperfect annotations as well as suppressing the noise, we design a Divergence-Aware Selective Training (DAST) strategy, where a divergence-aware noisiness score is used to identify severely noisy annotations and slightly noisy annotations. For severely noisy samples we use an regularization through dual-branch consistency between predictions from the two branches. We also refine slightly noisy samples and use them as supplementary data for the clean branch to avoid overfitting. Experimental results show that our method achieves a higher performance than standard training process for COVID-19 pneumonia lesion segmentation when learning from imperfect labels, and our framework outperforms the state-of-the-art noise-tolerate methods significantly with various clean label percentages.

摘要

新型冠状病毒肺炎(COVID-19)病变的自动分割对于诊断和治疗管理的定量测量至关重要。对于这项任务,深度学习是目前的先进方法,但需要大量精确标注的图像进行训练,由于专家资源有限以及标注过程耗时,这很难实现。为了解决这个问题,我们旨在从不完美的标注中训练分割网络,其中训练集由专家准确标注的少量干净图像集和非专家不准确标注的大量噪声图像集组成。为避免不同质量的标签破坏分割模型,我们提出一种新方法来训练分割网络以处理噪声标签。我们引入一个双分支网络,分别从准确和噪声标注中学习。为了充分利用不完美标注并抑制噪声,我们设计了一种散度感知选择性训练(DAST)策略,其中使用散度感知噪声分数来识别严重噪声标注和轻微噪声标注。对于严重噪声样本,我们通过两个分支预测之间的双分支一致性进行正则化。我们还对轻微噪声样本进行细化,并将其用作干净分支的补充数据以避免过拟合。实验结果表明,当从不完美标签学习时,我们的方法在COVID-19肺炎病变分割方面比标准训练过程具有更高的性能,并且我们的框架在各种干净标签百分比下均显著优于当前最先进的噪声容忍方法。

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