CoVSeverity-Net: an efficient deep learning model for COVID-19 severity estimation from Chest X-Ray images

被引:5
作者
Deb S.D. [1 ]
Jha R.K. [1 ]
Kumar R. [2 ]
Tripathi P.S. [3 ]
Talera Y. [3 ]
Kumar M. [4 ]
机构
[1] Department of Electrical Engineering, Indian Institute of Technology Patna, Patna
[2] Department of Paediatrics, Netaji Subhas Medical College & Hospital, Patna
[3] Department of Radiodiagnosis, Mahatma Gandhi Memorial Government Medical College, Indore
[4] Patna Medical College and Hospital, Bihar
关键词
Chest X-Ray; COVID-19; CoVSeverity-Net; Severity estimation;
D O I
10.1007/s42600-022-00254-8
中图分类号
学科分类号
摘要
Purpose: COVID-19 is not going anywhere and is slowly becoming a part of our life. The World Health Organization declared it a pandemic in 2020, and it has affected all of us in many ways. Several deep learning techniques have been developed to detect COVID-19 from Chest X-Ray images. COVID-19 infection severity scoring can aid in establishing the optimum course of treatment and care for a positive patient, as all COVID-19 positive patients do not require special medical attention. Still, very few works are reported to estimate the severity of the disease from the Chest X-Ray images. The unavailability of the large-scale dataset might be a reason. Methods: We aim to propose CoVSeverity-Net, a deep learning-based architecture for predicting the severity of COVID-19 from Chest X-ray images. CoVSeverity-Net is trained on a public COVID-19 dataset, curated by experienced radiologists for severity estimation. For that, a large publicly available dataset is collected and divided into three levels of severity, namely Mild, Moderate, and Severe. Results: An accuracy of 85.71% is reported. Conducting 5-fold cross-validation, we have obtained an accuracy of 87.82 ± 6.25%. Similarly, conducting 10-fold cross-validation we obtained accuracy of 91.26 ± 3.42. The results were better when compared with other state-of-the-art architectures. Conclusion: We strongly believe that this study has a high chance of reducing the workload of overworked front-line radiologists, speeding up patient diagnosis and treatment, and easing pandemic control. Future work would be to train a novel deep learning-based architecture on a larger dataset for severity estimation. © 2023, The Author(s), under exclusive licence to The Brazilian Society of Biomedical Engineering.
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页码:85 / 98
页数:13
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