Weakly Supervised Anomaly Detection for Chest X-Ray Image
- URL: http://arxiv.org/abs/2311.09642v2
- Date: Sat, 18 Nov 2023 16:44:24 GMT
- Title: Weakly Supervised Anomaly Detection for Chest X-Ray Image
- Authors: Haoqi Ni, Ximiao Zhang, Min Xu, Ning Lang, and Xiuzhuang Zhou
- Abstract summary: We propose a weakly supervised anomaly detection framework for Chest X-Ray (CXR) examination.
WSCXR firstly constructs sets of normal and anomaly image features respectively.
It then refines the anomaly image features by eliminating normal region features through anomaly feature mining.
- Score: 6.506869371228188
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Chest X-Ray (CXR) examination is a common method for assessing thoracic
diseases in clinical applications. While recent advances in deep learning have
enhanced the significance of visual analysis for CXR anomaly detection, current
methods often miss key cues in anomaly images crucial for identifying disease
regions, as they predominantly rely on unsupervised training with normal
images. This letter focuses on a more practical setup in which few-shot anomaly
images with only image-level labels are available during training. For this
purpose, we propose WSCXR, a weakly supervised anomaly detection framework for
CXR. WSCXR firstly constructs sets of normal and anomaly image features
respectively. It then refines the anomaly image features by eliminating normal
region features through anomaly feature mining, thus fully leveraging the
scarce yet crucial features of diseased areas. Additionally, WSCXR employs a
linear mixing strategy to augment the anomaly features, facilitating the
training of anomaly detector with few-shot anomaly images. Experiments on two
CXR datasets demonstrate the effectiveness of our approach.
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