Bidur Khanal, Binod Bhattarai, Bishesh Khanal, Cristian A Linte
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Thus, it is not clear if the methods improving learning with noisy labels in natural image datasets such as CIFAR would also help with medical images. In this work, we explore contrastive and pretext task-based selfsupervised pretraining to initialize the weights of a deep learning classification model for two medical datasets with self-induced noisy labels-<i>NCT-CRC-HE-100K</i> tissue histological images and <i>COVID-QU-Ex</i> chest X-ray images. Our results show that models initialized with pretrained weights obtained from self-supervised learning can effectively learn better features and improve robustness against noisy labels.</p>","PeriodicalId":520016,"journal":{"name":"Data engineering in medical imaging : first MICCAI Workshop, DEMI 2023, Held in Conjunction with MICCAI 2023, Vancouver, BC, Canada, October 8, 2023, Proceedings. 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引用次数: 0
摘要
噪声标签会损害基于深度学习的有监督图像分类性能,因为模型可能会过度拟合噪声并学习损坏的特征提取器。对于带有噪声标签数据的自然图像分类训练,使用对比性自监督预训练权重进行模型初始化已被证明可以减少特征破坏并提高分类性能。然而,目前还没有研究:i) 其他自监督方法(如基于任务的预训练)如何影响噪声标签下的学习;ii) 在噪声标签环境下,仅针对医学图像的自监督预训练方法。医学图像通常具有较小的数据集和细微的类间变化,需要人类的专业知识来确保分类的正确性。因此,目前还不清楚在 CIFAR 等自然图像数据集中改进噪声标签学习的方法是否也有助于医学图像。在这项工作中,我们探索了基于对比和借口任务的自我监督预训练,以初始化两个自带噪声标签的医学数据集--NCT-CRC-HE-100K 组织学图像和 COVID-QU-Ex 胸部 X 光图像的深度学习分类模型的权重。我们的研究结果表明,使用自监督学习获得的预训练权重初始化的模型可以有效地学习到更好的特征,并提高对噪声标签的鲁棒性。
Improving Medical Image Classification in Noisy Labels Using only Self-supervised Pretraining.
Noisy labels hurt deep learning-based supervised image classification performance as the models may overfit the noise and learn corrupted feature extractors. For natural image classification training with noisy labeled data, model initialization with contrastive self-supervised pretrained weights has shown to reduce feature corruption and improve classification performance. However, no works have explored: i) how other self-supervised approaches, such as pretext task-based pretraining, impact the learning with noisy label, and ii) any self-supervised pretraining methods alone for medical images in noisy label settings. Medical images often feature smaller datasets and subtle inter-class variations, requiring human expertise to ensure correct classification. Thus, it is not clear if the methods improving learning with noisy labels in natural image datasets such as CIFAR would also help with medical images. In this work, we explore contrastive and pretext task-based selfsupervised pretraining to initialize the weights of a deep learning classification model for two medical datasets with self-induced noisy labels-NCT-CRC-HE-100K tissue histological images and COVID-QU-Ex chest X-ray images. Our results show that models initialized with pretrained weights obtained from self-supervised learning can effectively learn better features and improve robustness against noisy labels.