Sani Matina Mahdizadeh, Royat Ali, Baghshah Mahdieh Soleymani
Computer Science and Engineering, Sharif University of Technology, Tehran, Iran.
Electrical Engineering, Sharif University of Technology, Tehran, Iran.
Med Biol Eng Comput. 2025 Mar;63(3):721-731. doi: 10.1007/s11517-024-03224-7. Epub 2024 Oct 30.
Deep neural networks have reached remarkable achievements in medical image processing tasks, specifically in classifying and detecting various diseases. However, when confronted with limited data, these networks face a critical vulnerability, often succumbing to overfitting by excessively memorizing the limited information available. This work addresses the challenge mentioned above by improving the supervised contrastive learning method leveraging both image-level labels and domain-specific augmentations to enhance model robustness. This approach integrates self-supervised pre-training with a two-stage supervised contrastive learning strategy. In the first stage, we employ a modified supervised contrastive loss that not only focuses on reducing false negatives but also introduces an elimination effect to address false positives. In the second stage, a relaxing mechanism is introduced that refines positive and negative pairs based on similarity, ensuring that only relevant image representations are aligned. We evaluate our method on the BreakHis dataset, which consists of breast cancer histopathology images, and demonstrate an increase in classification accuracy by 1.45% in the image level, compared to the state-of-the-art method. This improvement corresponds to 93.63% absolute accuracy, highlighting the effectiveness of our approach in leveraging properties of data to learn more appropriate representation space. The code implementation of this study is accessible on GitHub https://github.com/matinamehdizadeh/Breast-Cancer-Detection .
深度神经网络在医学图像处理任务中取得了显著成就,特别是在对各种疾病进行分类和检测方面。然而,当面对有限的数据时,这些网络面临一个关键的脆弱性,常常因过度记忆可用的有限信息而陷入过拟合。这项工作通过改进监督对比学习方法来应对上述挑战,该方法利用图像级标签和特定领域的增强技术来提高模型的鲁棒性。这种方法将自监督预训练与两阶段监督对比学习策略相结合。在第一阶段,我们采用一种改进的监督对比损失,它不仅专注于减少假阴性,还引入了一种消除效应来解决假阳性问题。在第二阶段,引入了一种松弛机制,该机制基于相似性对正例和负例进行细化,确保仅对齐相关的图像表示。我们在由乳腺癌组织病理学图像组成的BreakHis数据集上评估我们的方法,与最先进的方法相比,在图像级别上分类准确率提高了1.45%。这种改进对应于93.63%的绝对准确率,突出了我们的方法在利用数据属性学习更合适的表示空间方面的有效性。本研究的代码实现可在GitHub上获取,网址为https://github.com/matinamehdizadeh/Breast-Cancer-Detection 。