Using Deep Convolutional Neural Networks to Diagnose COVID-19 From Chest
X-Ray Images
- URL: http://arxiv.org/abs/2007.09695v1
- Date: Sun, 19 Jul 2020 15:47:37 GMT
- Title: Using Deep Convolutional Neural Networks to Diagnose COVID-19 From Chest
X-Ray Images
- Authors: Yi Zhong
- Abstract summary: This project presents an open-source dataset of COVID-19 CXRs, named COVID-19-CXR-Dataset, and introduces a deep convolutional neural network model.
The model validates on 740 test images and achieves 87.3% accuracy, 89.67 % precision, and 84.46% recall, and correctly classifies 98 out of 100 COVID-19 x-ray images in test set.
- Score: 2.2442606948134927
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The COVID-19 epidemic has become a major safety and health threat worldwide.
Imaging diagnosis is one of the most effective ways to screen COVID-19. This
project utilizes several open-source or public datasets to present an
open-source dataset of COVID-19 CXRs, named COVID-19-CXR-Dataset, and
introduces a deep convolutional neural network model. The model validates on
740 test images and achieves 87.3% accuracy, 89.67 % precision, and 84.46%
recall, and correctly classifies 98 out of 100 COVID-19 x-ray images in test
set with more than 81% prediction probability under the condition of 95%
confidence interval. This project may serve as a reference for other
researchers aiming to advance the development of deep learning applications in
medical imaging.
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