Open Access
21 December 2021 Evaluation of multiple open-source deep learning models for detecting and grading COVID-19 on chest radiographs
Alexander Risman, Miguel Trelles, David W. Denning
Author Affiliations +
Abstract

Purpose: Chest x-rays are complex to report accurately. Viral pneumonia is often subtle in its radiological appearance. In the context of the COVID-19 pandemic, rapid triage of cases and exclusion of other pathologies with artificial intelligence (AI) can assist over-stretched radiology departments. We aim to validate three open-source AI models on an external test set.

Approach: We tested three open-source deep learning models, COVID-Net, COVIDNet-S-GEO, and CheXNet for their ability to detect COVID-19 pneumonia and to determine its severity using 129 chest x-rays from two different vendors Phillips and Agfa.

Results: All three models detected COVID-19 pneumonia (AUCs from 0.666 to 0.778). Only the COVID Net-S-GEO and CheXNet models performed well on severity scoring (Pearson’s r 0.927 and 0.833, respectively); COVID-Net only performed well at either task on images taken with a Philips machine (AUC 0.735) and not an Agfa machine (AUC 0.598).

Conclusions: Chest x-ray triage using existing machine learning models for COVID-19 pneumonia can be successfully implemented using open-source AI models. Evaluation of the model using local x-ray machines and protocols is highly recommended before implementation to avoid vendor or protocol dependent bias.

© 2021 Society of Photo-Optical Instrumentation Engineers (SPIE)
Alexander Risman, Miguel Trelles, and David W. Denning "Evaluation of multiple open-source deep learning models for detecting and grading COVID-19 on chest radiographs," Journal of Medical Imaging 8(6), 064502 (21 December 2021). https://doi.org/10.1117/1.JMI.8.6.064502
Received: 2 February 2021; Accepted: 2 December 2021; Published: 21 December 2021
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KEYWORDS
X-rays

Artificial intelligence

Chest imaging

Data modeling

Machine learning

Manufacturing

Performance modeling

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