Author:
Li Dongfang,Huo Hua,Jiao Shupei,Sun Xiaowei,Chen Shuya
Abstract
AbstractChest X-ray (CXR) is an extensively utilized radiological modality for supporting the diagnosis of chest diseases. However, existing research approaches suffer from limitations in effectively integrating multi-scale CXR image features and are also hindered by imbalanced datasets. Therefore, there is a pressing need for further advancement in computer-aided diagnosis (CAD) of thoracic diseases. To tackle these challenges, we propose a multi-branch residual attention network (MBRANet) for thoracic disease diagnosis. MBRANet comprises three components. Firstly, to address the issue of inadequate extraction of spatial and positional information by the convolutional layer, a novel residual structure incorporating a coordinate attention (CA) module is proposed to extract features at multiple scales. Next, based on the concept of a Feature Pyramid Network (FPN), we perform multi-scale feature fusion in the following manner. Thirdly, we propose a novel Multi-Branch Feature Classifier (MFC) approach, which leverages the class-specific residual attention (CSRA) module for classification instead of relying solely on the fully connected layer. In addition, the designed BCEWithLabelSmoothing loss function improves the generalization ability and mitigates the problem of class imbalance by introducing a smoothing factor. We evaluated MBRANet on the ChestX-Ray14, CheXpert, MIMIC-CXR, and IU X-Ray datasets and achieved average AUCs of 0.841, 0.895, 0.805, and 0.745, respectively. Our method outperformed state-of-the-art baselines on these benchmark datasets.
Funder
National Natural Science Foundation of China
Major Science and Technology Program of Henan Province
Henan Province Central Guided Local Science and Technology Development Funding Project
Publisher
Springer Science and Business Media LLC
Reference58 articles.
1. Hansell, D. M. et al. Fleischner society: Glossary of terms for thoracic imaging. Radiology 246(3), 697–722 (2008).
2. Wang, X., Peng, Y., Lu, L., Lu, Z., Bagheri, M. & Summers, R.M. Chestx-ray8: Hospital-scale chest X-ray database and benchmarks on weakly-supervised classification and localization of common thorax diseases, 2097–2106 (2017).
3. Irvin, J. et al. Chexpert: A large chest radiograph dataset with uncertainty labels and expert comparison. Proc. AAAI Conf. Artif. Intell. 33(01), 590–597 (2019).
4. Salehinejad, H., Colak, E., Dowdell, T., Barfett, J. & Valaee, S. Synthesizing chest X-ray pathology for training deep convolutional neural networks. IEEE Trans. Med. Imaging 38(5), 1197–1206 (2018).
5. Guan, Q. & Huang, Y. Multi-label chest X-ray image classification via category-wise residual attention learning. Pattern Recognit. Lett. 130, 259–266 (2020).