| Literature DB >> 34112095 |
Jiansheng Fang1,2,3, Yanwu Xu4, Yitian Zhao4, Yuguang Yan5, Junling Liu6, Jiang Liu7,8.
Abstract
BACKGROUND: Chest X-rays are the most commonly available and affordable radiological examination for screening thoracic diseases. According to the domain knowledge of screening chest X-rays, the pathological information usually lay on the lung and heart regions. However, it is costly to acquire region-level annotation in practice, and model training mainly relies on image-level class labels in a weakly supervised manner, which is highly challenging for computer-aided chest X-ray screening. To address this issue, some methods have been proposed recently to identify local regions containing pathological information, which is vital for thoracic disease classification. Inspired by this, we propose a novel deep learning framework to explore discriminative information from lung and heart regions. RESULT: We design a feature extractor equipped with a multi-scale attention module to learn global attention maps from global images. To exploit disease-specific cues effectively, we locate lung and heart regions containing pathological information by a well-trained pixel-wise segmentation model to generate binarization masks. By introducing element-wise logical AND operator on the learned global attention maps and the binarization masks, we obtain local attention maps in which pixels are are 1 for lung and heart region and 0 for other regions. By zeroing features of non-lung and heart regions in attention maps, we can effectively exploit their disease-specific cues in lung and heart regions. Compared to existing methods fusing global and local features, we adopt feature weighting to avoid weakening visual cues unique to lung and heart regions. Our method with pixel-wise segmentation can help overcome the deviation of locating local regions. Evaluated by the benchmark split on the publicly available chest X-ray14 dataset, the comprehensive experiments show that our method achieves superior performance compared to the state-of-the-art methods.Entities:
Keywords: Chest X-rays; Lung and heart regions; Multi-scale attention; Pixel-wise segmentation; Thoracic diseases classification
Mesh:
Year: 2021 PMID: 34112095 PMCID: PMC8194196 DOI: 10.1186/s12880-021-00627-y
Source DB: PubMed Journal: BMC Med Imaging ISSN: 1471-2342 Impact factor: 1.930
Fig. 1Examples demonstrating pathological regions of eight thoracic diseases of chest X-rays. Predicted bounding boxes by our method are shown in blue and ground truth in red
Fig. 2The framework of our proposed method. A feature extractor equipped with a multi-scale attention module aims to learn the discriminative information from a chest X-ray image to generate a global attention map. A well-trained pixel segmentation model locates the lung and heart regions to binarize a mask in which pixels are 1 for lung and heart regions and 0 for other regions. A local attention map focusing on the lung and heart regions is formed by introducing a logical AND operator on the mask and the global attention map. This local attention map contains features of the pathological region and suppresses the normal region
The statistics of the benchmark split on the Chest X-ray14 dataset
| Diseases | Train | Test | Box |
|---|---|---|---|
| Atelectasis | 8280 | 3279 | 180 |
| Cardiomegaly | 1707 | 1069 | 146 |
| Effusion | 8659 | 4658 | 153 |
| Infiltration | 13,782 | 6112 | 123 |
| Mass | 4034 | 1748 | 85 |
| Nodule | 4708 | 1623 | 79 |
| Pneumonia | 876 | 555 | 120 |
| Pneumothorax | 2637 | 2665 | 98 |
| Consolidation | 2852 | 1815 | 0 |
| Edema | 1378 | 925 | 0 |
| Emphysema | 1423 | 1093 | 0 |
| Fibrosis | 1251 | 435 | 0 |
| Pleural thickening | 2242 | 1143 | 0 |
| Hernia | 141 | 86 | 0 |
| Multi-label totals | 53,970 | 27,206 | 984 |
| Finding | 36,024 | 15,735 | 984 |
| No finding | 50,500 | 9861 | 0 |
| Totals | 86,524 | 25,596 | 984 |
Comparison of AUROC performance on the benchmark split of Chest X-ray14 dataset
| Diseases | DCNN [ | CheXNet [ | SENet [ | SDFN [ |
|---|---|---|---|---|
| Atelectasis | 0.7837 | 0.7919 | 0.7963 | 0.7810 |
| Cardiomegaly | 0.8937 | 0.9038 | 0.9085 | 0.8850 |
| Effusion | 0.8704 | 0.8744 | 0.8769 | 0.8320 |
| Infiltration | 0.6826 | 0.6942 | 0.6974 | 0.7000 |
| Mass | 0.7875 | 0.8142 | 0.8144 | 0.8150 |
| Nodule | 0.7125 | 0.7286 | 0.7509 | 0.7650 |
| Pneumonia | 0.7110 | 0.7477 | 0.7190 | |
| Pneumothorax | 0.8232 | 0.8431 | 0.8467 | 0.8660 |
| Consolidation | 0.7895 | 0.7933 | 0.7996 | 0.7430 |
| Edema | 0.8673 | 0.8777 | 0.8420 | |
| Emphysema | 0.8398 | 0.8726 | 0.8907 | 0.9210 |
| Fibrosis | 0.7656 | 0.7986 | 0.8041 | 0.8350 |
| Pleural thickening | 0.7398 | 0.7528 | 0.7547 | 0.7910 |
| Hernia | 0.8406 | 0.8545 | 0.9035 | 0.9110 |
| Average | 0.7934 | 0.8105 | 0.8205 | 0.8150 |
The float numbers with bold font denote the best performance
Fig. 3ROC Curves of our proposed method on the benchmark split of Chest X-ray14 dataset
Fig. 4Pathological region visualization of the box set in the Chest X-ray14 dataset. The red bounding box is the pathological region by hand-labeled, and the blue bounding box is predicted by our model
Comparison of IoU performance on the box set of the chest X-ray14 dataset
| Methods | Atelectasis | Cardiomegaly | Effusion | Infiltration |
|---|---|---|---|---|
| FE | 0.1713 | 0.5515 | 0.3242 | 0.3819 |
| FE w/o MA | 0.1212 | 0.4430 | 0.3258 | 0.2783 |