COVID-19 Classification of X-ray Images Using Deep Neural Networks (2010.01362v2)
Abstract: In the midst of the coronavirus disease 2019 (COVID-19) outbreak, chest X-ray (CXR) imaging is playing an important role in the diagnosis and monitoring of patients with COVID-19. Machine learning solutions have been shown to be useful for X-ray analysis and classification in a range of medical contexts. The purpose of this study is to create and evaluate a machine learning model for diagnosis of COVID-19, and to provide a tool for searching for similar patients according to their X-ray scans. In this retrospective study, a classifier was built using a pre-trained deep learning model (ReNet50) and enhanced by data augmentation and lung segmentation to detect COVID-19 in frontal CXR images collected between January 2018 and July 2020 in four hospitals in Israel. A nearest-neighbors algorithm was implemented based on the network results that identifies the images most similar to a given image. The model was evaluated using accuracy, sensitivity, area under the curve (AUC) of receiver operating characteristic (ROC) curve and of the precision-recall (P-R) curve. The dataset sourced for this study includes 2362 CXRs, balanced for positive and negative COVID-19, from 1384 patients (63 +/- 18 years, 552 men). Our model achieved 89.7% (314/350) accuracy and 87.1% (156/179) sensitivity in classification of COVID-19 on a test dataset comprising 15% (350 of 2326) of the original data, with AUC of ROC 0.95 and AUC of the P-R curve 0.94. For each image we retrieve images with the most similar DNN-based image embeddings; these can be used to compare with previous cases.
- Elisha Goldstein (2 papers)
- Daphna Keidar (5 papers)
- Daniel Yaron (2 papers)
- Yair Shachar (2 papers)
- Ayelet Blass (2 papers)
- Leonid Charbinsky (1 paper)
- Israel Aharony (1 paper)
- Liza Lifshitz (1 paper)
- Dimitri Lumelsky (1 paper)
- Ziv Neeman (1 paper)
- Matti Mizrachi (1 paper)
- Majd Hajouj (1 paper)
- Nethanel Eizenbach (1 paper)
- Eyal Sela (2 papers)
- Chedva S Weiss (1 paper)
- Philip Levin (1 paper)
- Ofer Benjaminov (1 paper)
- Gil N Bachar (1 paper)
- Shlomit Tamir (1 paper)
- Yael Rapson (2 papers)