Deep neural network to detect COVID-19: one architecture for both CT Scans and Chest X-rays

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Abstract

Since December 2019, the novel COVID-19’s spread rate is exponential, and AI-driven tools are used to prevent further spreading [1]. They can help predict, screen, and diagnose COVID-19 positive cases. Within this scope, imaging with Computed Tomography (CT) scans and Chest X-rays (CXRs) are widely used in mass triage situations. In the literature, AI-driven tools are limited to one data type either CT scan or CXR to detect COVID-19 positive cases. Integrating multiple data types could possibly provide more information in detecting anomaly patterns due to COVID-19. Therefore, in this paper, we engineered a Convolutional Neural Network (CNN) -tailored Deep Neural Network (DNN) that can collectively train/test both CT scans and CXRs. In our experiments, we achieved an overall accuracy of 96.28% (AUC = 0.9808 and false negative rate = 0.0208). Further, major existing DNNs provided coherent results while integrating CT scans and CXRs to detect COVID-19 positive cases.

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Mukherjee, H., Ghosh, S., Dhar, A., Obaidullah, S. M., Santosh, K. C., & Roy, K. (2021). Deep neural network to detect COVID-19: one architecture for both CT Scans and Chest X-rays. Applied Intelligence, 51(5), 2777–2789. https://doi.org/10.1007/s10489-020-01943-6

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