COVID-Net US: A Tailored, Highly Efficient, Self-Attention Deep Convolutional Neural Network Design for Detection of COVID-19 Patient Cases from Point-of-care Ultrasound Imaging
Alexander MacLean, Saad Abbasi, Ashkan Ebadi, Andy Zhao, Maya Pavlova,, Hayden Gunraj, Pengcheng Xi, Sonny Kohli, and Alexander Wong

TL;DR
COVID-Net US is a highly efficient deep learning model designed for COVID-19 detection from lung POCUS images, achieving high accuracy with minimal computational resources, suitable for resource-limited settings.
Contribution
The paper introduces COVID-Net US, a novel self-attention deep CNN tailored for COVID-19 screening from POCUS images, with significantly reduced complexity and fast inference on low-cost devices.
Findings
Achieves over 0.98 AUC in COVID-19 detection
Offers 353X lower architectural complexity
Enables 14.3X faster inference on Raspberry Pi
Abstract
The Coronavirus Disease 2019 (COVID-19) pandemic has impacted many aspects of life globally, and a critical factor in mitigating its effects is screening individuals for infections, thereby allowing for both proper treatment for those individuals as well as action to be taken to prevent further spread of the virus. Point-of-care ultrasound (POCUS) imaging has been proposed as a screening tool as it is a much cheaper and easier to apply imaging modality than others that are traditionally used for pulmonary examinations, namely chest x-ray and computed tomography. Given the scarcity of expert radiologists for interpreting POCUS examinations in many highly affected regions around the world, low-cost deep learning-driven clinical decision support solutions can have a large impact during the on-going pandemic. Motivated by this, we introduce COVID-Net US, a highly efficient, self-attention…
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