Weakly Supervised Anomaly Localization and Segmentation of Biomarkers in OCT Images

Xiaoming Liu, Qi Liu
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Abstract

Identifying biomarkers from optical coherence tomography images is critical in diagnosing and treating ophthalmic diseases. Most existing biomarker segmentation methods require pixel-level annotations for training, which is time-consuming and labor-intensive. This paper proposed a novel weakly supervised biomarker localization and segmentation method. The framework includes a classification network and a teacher-student network to exploit category annotated data through contrastive learning and anomaly localization strategies based on knowledge distillation. The classification network combines cross-entropy loss and self- supervised contrastive loss to ensure that the model focuses on the characteristics of the biomarker of interest. We introduce a knowledge distillation-based anomaly localization method to localize biomarker-related pathological regions accurately. The trained classification network acts as a teacher model to guide the training of the student network to learn the features of normal OCT images. The biomarker regions can be accurately localized by the differences between the feature maps generated by the two networks. Experiment results on the public dataset demonstrate the effectiveness of the proposed method.
OCT图像中生物标记物的弱监督异常定位与分割
从光学相干断层扫描图像中识别生物标志物对眼科疾病的诊断和治疗至关重要。大多数现有的生物标记物分割方法都需要像素级的标注来进行训练,这既耗时又费力。提出了一种新的弱监督生物标记物定位与分割方法。该框架包括一个分类网络和一个师生网络,通过对比学习和基于知识蒸馏的异常定位策略来开发类别标注数据。该分类网络结合了交叉熵损失和自监督对比损失,以确保模型专注于感兴趣的生物标志物的特征。我们引入了一种基于知识提取的异常定位方法来准确定位与生物标志物相关的病理区域。训练后的分类网络作为教师模型,指导训练学生网络学习正常OCT图像的特征。生物标记区域可以通过两个网络生成的特征图之间的差异来精确定位。在公共数据集上的实验结果证明了该方法的有效性。
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