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Smartphone-based detection of COVID-19 and associated pneumonia using thermal imaging and a transfer learning algorithm

COVID-19-related pneumonia is typically diagnosed using chest x-ray or computed tomography images. However, these techniques can only be used in hospitals. In contrast, thermal cameras are portable, inexpensive devices that can be connected to smartphones. Thus, they can be used to detect and monito...

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Bibliographic Details
Published in:Journal of biophotonics 2024-01, p.e202300486-e202300486
Main Authors: Hoffer, Oshrit, Brzezinski, Rafael Y, Ganim, Adam, Shalom, Perry, Ovadia-Blechman, Zehava, Ben-Baruch, Lital, Lewis, Nir, Peled, Racheli, Shimon, Carmi, Naftali-Shani, Nili, Katz, Eyal, Zimmer, Yair, Rabin, Neta
Format: Article
Language:English
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Summary:COVID-19-related pneumonia is typically diagnosed using chest x-ray or computed tomography images. However, these techniques can only be used in hospitals. In contrast, thermal cameras are portable, inexpensive devices that can be connected to smartphones. Thus, they can be used to detect and monitor medical conditions outside hospitals. Herein, a smartphone-based application using thermal images of a human back was developed for COVID-19 detection. Image analysis using a deep learning algorithm revealed a sensitivity and specificity of 88.7% and 92.3%, respectively. The findings support the future use of noninvasive thermal imaging in primary screening for COVID-19 and associated pneumonia.
ISSN:1864-063X
1864-0648
DOI:10.1002/jbio.202300486