Beijing Institute of Technology, No. 5, Zhong Guan Cun South Street, Beijing, 100081, China.
Beijing Institute of Technology, No. 5, Zhong Guan Cun South Street, Beijing, 100081, China.
Comput Med Imaging Graph. 2023 Sep;108:102278. doi: 10.1016/j.compmedimag.2023.102278. Epub 2023 Jul 31.
Fundus images are widely used in the screening and diagnosis of eye diseases. Current classification algorithms for computer-aided diagnosis in fundus images rely on large amounts of data with reliable labels. However, the appearance of noisy labels degrades the performance of data-dependent algorithms, such as supervised deep learning. A noisy label learning framework suitable for the multiclass classification of fundus diseases is presented in this paper, which combines data cleansing (DC), adaptive negative learning (ANL), and sharpness-aware minimization (SAM) modules. Firstly, the DC module filters the noisy labels in the training dataset based on the prediction confidence. Then, the ANL module modifies the loss function by choosing complementary labels, which are neither the given labels nor the labels with the highest confidence. Moreover, for better generalization, the SAM module is applied by simultaneously optimizing the loss and its sharpness. Extensive experiments on both private and public datasets show that our method greatly promotes the performance for classification of multiple fundus diseases with noisy labels.
眼底图像被广泛应用于眼部疾病的筛查和诊断。目前,眼底图像计算机辅助诊断的分类算法依赖于具有可靠标签的大量数据。然而,有噪声标签的出现降低了数据依赖算法(如监督深度学习)的性能。本文提出了一种适用于眼底疾病多类分类的噪声标签学习框架,该框架结合了数据清洗(DC)、自适应负学习(ANL)和锐度感知最小化(SAM)模块。首先,DC 模块根据预测置信度过滤训练数据集中的噪声标签。然后,ANL 模块通过选择既不是给定标签也不是置信度最高的标签的互补标签来修改损失函数。此外,为了更好的泛化,通过同时优化损失和其锐度,应用了 SAM 模块。在私有和公共数据集上的广泛实验表明,我们的方法极大地提高了带有噪声标签的多种眼底疾病分类的性能。