Automated processing of thermal imaging to detect COVID-19 and microvascular dysfunction

Author:

Brzezinski R Y1,Rabin N2,Lewis N1,Peled R1,Tsur A1,Kerpel A1,Marom E M1,Shenhar-Tsarfaty S3,Naftali-Shani N1,Rahav G1,Grossman E M1,Zimmer Y4,Ovadia-Blechman Z4,Leor J1,Hoffer O4

Affiliation:

1. Tel Aviv University and Sheba Medical Center, Tel Aviv, Israel

2. Tel Aviv University, Tel Aviv, Israel

3. Tel Aviv Sourasky Medical Center, Tel Aviv, Israel

4. Afeka Tel Aviv Academic College of Engineering, Tel Aviv, Israel

Abstract

Abstract Background Coronavirus disease 2019 (COVID-19) is associated with microvascular dysfunction. Non-invasive thermal imaging can hypothetically detect changes in perfusion, inflammation and vascular injury. We sought to develop a new point-of-care, non-contact thermal imaging tool to detect COVID-19 by microvascular dysfunction, based on image processing algorithms and machine learning analysis. Materials and methods We captured thermal images of the back of 101 individuals, with (n=62) and without (n=39) COVID-19, using a portable thermal camera that connects directly to smartphones. We developed new image processing algorithms that automatically extract multiple texture and shape features of the thermal images (Figure 1A). We then evaluated the ability of our thermal features to detect COVID-19 and systemic changes of heat distribution associated with microvascular disease. We also assessed correlations between thermal imaging to conventional biomarkers and chest X-ray (CXR). Results Our novel image processing algorithms achieved up to 92% sensitivity in detecting COVID-19 with an area under the curve of 0.85 (95% CI: 0.78, 0.93; p<0.01). Systemic alterations in blood flow associated with vascular disease were observed across the entire back. Thermal imaging scores were inversely correlated with clinical variables associated with COVID-19 disease progression, including blood oxygen saturation, C- reactive protein, and D-dimer. The thermal imaging findings were not correlated with the results of CXR. Conclusions We show, for the first time, that a hand-held thermal imaging device can be used to detect COVID-19. Non-invasive thermal imaging could be used to screen for COVID-19 in out-of-hospital settings, especially in low-income regions with limited imaging resources. Moreover, thermal imaging might detect micro-angiopathies and endothelial dysfunction in patients with COVID-19 and could possibly improve risk stratification of infected individuals (Figure 1B). Funding Acknowledgement Type of funding sources: Public Institution(s). Main funding source(s): 1. The Israel Innovation Authority2. The Nicholas and Elizabeth Slezak Super Center for Cardiac Research and Biomedical Engineering at Tel Aviv University Figure 1. A. Representative steps of our thermal image processing algorithms. B. A schematic illustration of the research design and potential impact.

Publisher

Oxford University Press (OUP)

Subject

Cardiology and Cardiovascular Medicine

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