使用单阳性标签进行多标签胸部 X 光图像分类

Jiayin Xiao, Si Li, Tongxu Lin, Jian Zhu, Xiaochen Yuan, David Dagan Feng, Bin Sheng
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摘要

用于多标签胸部 X 光(CXR)图像分类的深度学习方法通常需要大规模数据集。然而,获取这种带有完整注释的数据集成本高、耗时长,而且容易产生噪声标签。因此,我们在 CXR 图像分类(简称 SPML-CXR)中引入了一个弱监督学习问题,称为单正向多标签学习(Single Positive Multi-label Learning,SPML)。解决 SPML-CXR 问题的一个简单方法是假设所有未注释的病理标签都是阴性的,但这可能会引入假阴性标签,降低模型性能。为此,我们提出了 SPML-CXR 的多级伪标签一致性(MPC)框架。首先,受半监督学习中伪标签和一致性正则化的启发,我们构建了一个从弱到强的一致性框架,将弱增量图像上的模型预测视为伪标签,用于监督同一图像强增量版本上的模型预测,并定义了基于图像级扰动的一致性(IPC)正则化来恢复潜在的误贴正标签。此外,我们还加入了随机弹性变形(RED)作为额外的强增强,以增强扰动。其次,为了扩展扰动空间,我们在特征级的一致性框架中设计了扰动流,并引入了基于特征级扰动的一致性(FPC)正则化作为补充。第三,我们设计了一个基于变换器的编码器模块,通过批量级基于变换器的相关性(BTC)正则化来探索每个小批量内的样本关系。在 CheXpert 和 MIMIC-CXR 数据集上进行的大量实验表明,我们的 MPC 框架在解决 SPML-CXR 问题上非常有效。
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Multi-Label Chest X-Ray Image Classification with Single Positive Labels.

Deep learning approaches for multi-label Chest X-ray (CXR) images classification usually require large-scale datasets. However, acquiring such datasets with full annotations is costly, time-consuming, and prone to noisy labels. Therefore, we introduce a weakly supervised learning problem called Single Positive Multi-label Learning (SPML) into CXR images classification (abbreviated as SPML-CXR), in which only one positive label is annotated per image. A simple solution to SPML-CXR problem is to assume that all the unannotated pathological labels are negative, however, it might introduce false negative labels and decrease the model performance. To this end, we present a Multi-level Pseudo-label Consistency (MPC) framework for SPML-CXR. First, inspired by the pseudo-labeling and consistency regularization in semi-supervised learning, we construct a weak-to-strong consistency framework, where the model prediction on weakly-augmented image is treated as the pseudo label for supervising the model prediction on a strongly-augmented version of the same image, and define an Image-level Perturbation-based Consistency (IPC) regularization to recover the potential mislabeled positive labels. Besides, we incorporate Random Elastic Deformation (RED) as an additional strong augmentation to enhance the perturbation. Second, aiming to expand the perturbation space, we design a perturbation stream to the consistency framework at the feature-level and introduce a Feature-level Perturbation-based Consistency (FPC) regularization as a supplement. Third, we design a Transformer-based encoder module to explore the sample relationship within each mini-batch by a Batch-level Transformer-based Correlation (BTC) regularization. Extensive experiments on the CheXpert and MIMIC-CXR datasets have shown the effectiveness of our MPC framework for solving the SPML-CXR problem.

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