COVID-19 Infection Localization and Severity Grading from Chest X-ray
Images
- URL: http://arxiv.org/abs/2103.07985v1
- Date: Sun, 14 Mar 2021 18:06:06 GMT
- Title: COVID-19 Infection Localization and Severity Grading from Chest X-ray
Images
- Authors: Anas M. Tahir, Muhammad E. H. Chowdhury, Amith Khandakar, Tawsifur
Rahman, Yazan Qiblawey, Uzair Khurshid, Serkan Kiranyaz, Nabil Ibtehaz, M
Shohel Rahman, Somaya Al-Madeed, Khaled Hameed, Tahir Hamid, Sakib Mahmud,
Maymouna Ezeddin
- Abstract summary: Coronavirus disease 2019 (COVID-19) has been the main agenda of the whole world, since it came into sight in December 2019.
We have constructed the largest benchmark dataset with 33,920 CXR images, including 11,956 COVID-19 samples.
The proposed approach has achieved an outstanding COVID-19 detection performance with both sensitivity and specificity values above 99%.
- Score: 3.4546388019336143
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Coronavirus disease 2019 (COVID-19) has been the main agenda of the whole
world, since it came into sight in December 2019 as it has significantly
affected the world economy and healthcare system. Given the effects of COVID-19
on pulmonary tissues, chest radiographic imaging has become a necessity for
screening and monitoring the disease. Numerous studies have proposed Deep
Learning approaches for the automatic diagnosis of COVID-19. Although these
methods achieved astonishing performance in detection, they have used limited
chest X-ray (CXR) repositories for evaluation, usually with a few hundred
COVID-19 CXR images only. Thus, such data scarcity prevents reliable evaluation
with the potential of overfitting. In addition, most studies showed no or
limited capability in infection localization and severity grading of COVID-19
pneumonia. In this study, we address this urgent need by proposing a systematic
and unified approach for lung segmentation and COVID-19 localization with
infection quantification from CXR images. To accomplish this, we have
constructed the largest benchmark dataset with 33,920 CXR images, including
11,956 COVID-19 samples, where the annotation of ground-truth lung segmentation
masks is performed on CXRs by a novel human-machine collaborative approach. An
extensive set of experiments was performed using the state-of-the-art
segmentation networks, U-Net, U-Net++, and Feature Pyramid Networks (FPN). The
developed network, after an extensive iterative process, reached a superior
performance for lung region segmentation with Intersection over Union (IoU) of
96.11% and Dice Similarity Coefficient (DSC) of 97.99%. Furthermore, COVID-19
infections of various shapes and types were reliably localized with 83.05% IoU
and 88.21% DSC. Finally, the proposed approach has achieved an outstanding
COVID-19 detection performance with both sensitivity and specificity values
above 99%.
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