Arman Haghanifar, Mahdiyar Molahasani Majdabadi, Younhee Choi, S. Deivalakshmi, Seokbum Ko
One of the primary clinical observations for screening the infectious by the novel coronavirus is capturing a chest x-ray image. In most of the patients, a chest x-ray contains abnormalities, such as consolidation, which are the results of COVID-19 viral pneumonia. In this study, research is conducted on efficiently detecting imaging features of this type of pneumonia using deep convolutional neural networks in a large dataset. It is demonstrated that simple models, alongside the majority of pretrained networks in the literature, focus on irrelevant features for decision-making. In this paper, numerous chest x-ray images from various sources are collected, and the largest publicly accessible dataset is prepared. Finally, using the transfer learning paradigm, the well-known CheXNet model is utilized for developing COVID-CXNet. This powerful model is capable of detecting the novel coronavirus pneumonia based on relevant and meaningful features with precise localization. COVID-CXNet is a step towards a fully automated and robust COVID-19 detection system.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Pneumonia Detection | COVID-19 CXR Dataset | F-Score | 0.85 | COVID-CXNet |
| Classification | COVID-19 CXR Dataset | Accuracy (%) | 94.2 | COVID-CXNet |
| 1 Image, 2*2 Stitchi | COVID-19 CXR Dataset | F-Score | 0.85 | COVID-CXNet |
| Multi-class Classification | COVID-19 CXR Dataset | Accuracy (%) | 94.2 | COVID-CXNet |