- 영문명
- Evaluation of Deep-Learning Feature Based COVID-19 Classifier in Various Neural Network
- 발행기관
- 대한방사선과학회(구 대한방사선기술학회)
- 저자명
- 홍준용(Jun-Yong Hong) 정영진(Young-Jin Jung)
- 간행물 정보
- 『방사선기술과학』방사선기술과학 제43권 제5호, 397~404쪽, 전체 8쪽
- 주제분류
- 의약학 > 방사선과학
- 파일형태
- 발행일자
- 2020.10.30

국문 초록
영문 초록
Coronavirus disease(COVID-19) is highly infectious disease that directly affects the lungs. To observe the clinical findings from these lungs, the Chest Radiography(CXR) can be used in a fast manner. However, the diagnostic performance via CXR needs to be improved, since the identifying these findings are highly time-consuming and prone to human error. Therefore, Artificial Intelligence(AI) based tool may be useful to aid the diagnosis of COVID-19 via CXR. In this study, we explored various Deep learning(DL) approach to classify COVID-19, other viral pneumonia and normal. For the original dataset and lung-segmented dataset, the pre-trained AlexNet, SqueezeNet, ResNet18, DenseNet201 were transfer- trained and validated for 3 class - COVID-19, viral pneumonia, normal. In the results, AlexNet showed the highest mean accuracy of 99.15±2.69% and fastest training time of 1.61±0.56 min among 4 pre-trained neural networks. In this study, we demonstrated the performance of 4 pre-trained neural networks in COVID-19 diagnosis with CXR images. Further, we plotted the class activation map(CAM) of each network and demonstrated that the lung-segmentation pre-processing improve the performance of COVID-19 classifier with CXR images by excluding background features.
목차
Ⅰ. 서 론
Ⅱ. 대상 및 방법
Ⅲ. 결 과
Ⅳ. 고 찰
Ⅴ. 결 론
REFERENCES
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