| Literature DB >> 33129145 |
Hongyu Wang1, Shanshan Wang2, Zibo Qin3, Yanning Zhang3, Ruijiang Li4, Yong Xia5.
Abstract
Chest X-ray is the most common radiology examinations for the diagnosis of thoracic diseases. However, due to the complexity of pathological abnormalities and lack of detailed annotation of those abnormalities, computer-aided diagnosis (CAD) of thoracic diseases remains challenging. In this paper, we propose the triple-attention learning (A 3 Net) model for this CAD task. This model uses the pre-trained DenseNet-121 as the backbone network for feature extraction, and integrates three attention modules in a unified framework for channel-wise, element-wise, and scale-wise attention learning. Specifically, the channel-wise attention prompts the deep model to emphasize the discriminative channels of feature maps; the element-wise attention enables the deep model to focus on the regions of pathological abnormalities; the scale-wise attention facilitates the deep model to recalibrate the feature maps at different scales. The proposed model has been evaluated on 112,120images in the ChestX-ray14 dataset with the official patient-level data split. Compared to state-of-the-art deep learning models, our model achieves the highest per-class AUC in classifying 13 out of 14 thoracic diseases and the highest average per-class AUC of 0.826 over 14 thoracic diseases.Entities:
Keywords: Attention mechanism; Chest radiography; Deep learning; Thoracic disease classification
Mesh:
Year: 2020 PMID: 33129145 DOI: 10.1016/j.media.2020.101846
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545