A Cascaded Learning Strategy for Robust COVID-19 Pneumonia Chest X-Ray Screening (2004.12786v2)
Abstract: We introduce a comprehensive screening platform for the COVID-19 (a.k.a., SARS-CoV-2) pneumonia. The proposed AI-based system works on chest x-ray (CXR) images to predict whether a patient is infected with the COVID-19 disease. Although the recent international joint effort on making the availability of all sorts of open data, the public collection of CXR images is still relatively small for reliably training a deep neural network (DNN) to carry out COVID-19 prediction. To better address such inefficiency, we design a cascaded learning strategy to improve both the sensitivity and the specificity of the resulting DNN classification model. Our approach leverages a large CXR image dataset of non-COVID-19 pneumonia to generalize the original well-trained classification model via a cascaded learning scheme. The resulting screening system is shown to achieve good classification performance on the expanded dataset, including those newly added COVID-19 CXR images.
- Chun-Fu Yeh (3 papers)
- Hsien-Tzu Cheng (7 papers)
- Andy Wei (2 papers)
- Hsin-Ming Chen (1 paper)
- Po-Chen Kuo (14 papers)
- Keng-Chi Liu (5 papers)
- Mong-Chi Ko (2 papers)
- Ray-Jade Chen (1 paper)
- Po-Chang Lee (1 paper)
- Jen-Hsiang Chuang (1 paper)
- Chi-Mai Chen (1 paper)
- Yi-Chang Chen (14 papers)
- Wen-Jeng Lee (2 papers)
- Ning Chien (1 paper)
- Jo-Yu Chen (1 paper)
- Yu-Sen Huang (1 paper)
- Yu-Chien Chang (1 paper)
- Yu-Cheng Huang (4 papers)
- Nai-Kuan Chou (1 paper)
- Kuan-Hua Chao (2 papers)