Xu Shicheng, Li Wei, Li Zuoyong, Zhao Tiesong, Zhang Bob
IEEE Trans Med Imaging. 2025 Feb;44(2):801-814. doi: 10.1109/TMI.2024.3461231. Epub 2025 Feb 4.
Anomaly detection can significantly aid doctors in interpreting chest X-rays. The commonly used strategy involves utilizing the pre-trained network to extract features from normal data to establish feature representations. However, when a pre-trained network is applied to more detailed X-rays, differences of similarity can limit the robustness of these feature representations. Therefore, we propose an intra- and inter-correlation learning framework for chest X-ray anomaly detection. Firstly, to better leverage the similar anatomical structure information in chest X-rays, we introduce the Anatomical-Feature Pyramid Fusion Module for feature fusion. This module aims to obtain fusion features with both local details and global contextual information. These fusion features are initialized by a trainable feature mapper and stored in a feature bank to serve as centers for learning. Furthermore, to Facing Differences of Similarity (FDS) introduced by the pre-trained network, we propose an intra- and inter-correlation learning strategy: 1) We use intra-correlation learning to establish intra-correlation between mapped features of individual images and semantic centers, thereby initially discovering lesions; 2) We employ inter-correlation learning to establish inter-correlation between mapped features of different images, further mitigating the differences of similarity introduced by the pre-trained network, and achieving effective detection results even in diverse chest disease environments. Finally, a comparison with 18 state-of-the-art methods on three datasets demonstrates the superiority and effectiveness of the proposed method across various scenarios.
异常检测可以显著帮助医生解读胸部X光片。常用的策略是利用预训练网络从正常数据中提取特征以建立特征表示。然而,当将预训练网络应用于更详细的X光片时,相似性差异会限制这些特征表示的鲁棒性。因此,我们提出了一种用于胸部X光片异常检测的内部和相互关联学习框架。首先,为了更好地利用胸部X光片中相似的解剖结构信息,我们引入了解剖特征金字塔融合模块进行特征融合。该模块旨在获得具有局部细节和全局上下文信息的融合特征。这些融合特征由可训练的特征映射器初始化并存储在特征库中,作为学习的中心。此外,为了应对预训练网络引入的相似性差异(FDS),我们提出了一种内部和相互关联学习策略:1)我们使用内部关联学习在单个图像的映射特征与语义中心之间建立内部关联,从而初步发现病变;2)我们采用相互关联学习在不同图像的映射特征之间建立相互关联,进一步减轻预训练网络引入的相似性差异,并即使在多样的胸部疾病环境中也能实现有效的检测结果。最后,在三个数据集上与18种先进方法进行的比较证明了所提出方法在各种场景下的优越性和有效性。