COVID-Net USPro: An Open-Source Explainable Few-Shot Deep Prototypical Network to Monitor and Detect COVID-19 Infection from Point-of-Care Ultrasound Images
Jessy Song, Ashkan Ebadi, Adrian Florea, Pengcheng Xi and, St\'ephane Tremblay, Alexander Wong

TL;DR
COVID-Net USPro is an explainable few-shot deep learning model that accurately detects COVID-19 from ultrasound images with minimal data, aiding rapid diagnosis during the pandemic.
Contribution
This paper introduces COVID-Net USPro, a novel few-shot prototypical network that effectively detects COVID-19 from ultrasound images with high accuracy and explainability, even with limited data.
Findings
Achieves 99.65% accuracy in COVID-19 detection
Operates effectively with only 5 training examples per class
Validated by clinicians for pattern-based decision making
Abstract
As the Coronavirus Disease 2019 (COVID-19) continues to impact many aspects of life and the global healthcare systems, the adoption of rapid and effective screening methods to prevent further spread of the virus and lessen the burden on healthcare providers is a necessity. As a cheap and widely accessible medical image modality, point-of-care ultrasound (POCUS) imaging allows radiologists to identify symptoms and assess severity through visual inspection of the chest ultrasound images. Combined with the recent advancements in computer science, applications of deep learning techniques in medical image analysis have shown promising results, demonstrating that artificial intelligence-based solutions can accelerate the diagnosis of COVID-19 and lower the burden on healthcare professionals. However, the lack of a huge amount of well-annotated data poses a challenge in building effective deep…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Ultrasound in Clinical Applications · Radiomics and Machine Learning in Medical Imaging
