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      Sonographic Diagnosis of COVID-19: A Review of Image Processing for Lung Ultrasound

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          Abstract

          The sustained increase in new cases of COVID-19 across the world and potential for subsequent outbreaks call for new tools to assist health professionals with early diagnosis and patient monitoring. Growing evidence around the world is showing that lung ultrasound examination can detect manifestations of COVID-19 infection. Ultrasound imaging has several characteristics that make it ideally suited for routine use: small hand-held systems can be contained inside a protective sheath, making it easier to disinfect than X-ray or computed tomography equipment; lung ultrasound allows triage of patients in long term care homes, tents or other areas outside of the hospital where other imaging modalities are not available; and it can determine lung involvement during the early phases of the disease and monitor affected patients at bedside on a daily basis. However, some challenges still remain with routine use of lung ultrasound. Namely, current examination practices and image interpretation are quite challenging, especially for unspecialized personnel. This paper reviews how lung ultrasound (LUS) imaging can be used for COVID-19 diagnosis and explores different image processing methods that have the potential to detect manifestations of COVID-19 in LUS images. Then, the paper reviews how general lung ultrasound examinations are performed before addressing how COVID-19 manifests itself in the images. This will provide the basis to study contemporary methods for both segmentation and classification of lung ultrasound images. The paper concludes with a discussion regarding practical considerations of lung ultrasound image processing use and draws parallels between different methods to allow researchers to decide which particular method may be best considering their needs. With the deficit of trained sonographers who are working to diagnose the thousands of people afflicted by COVID-19, a partially or totally automated lung ultrasound detection and diagnosis tool would be a major asset to fight the pandemic at the front lines.

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          Most cited references39

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          ImageNet classification with deep convolutional neural networks

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            SSD: Single Shot MultiBox Detector

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              Focal Loss for Dense Object Detection

              The highest accuracy object detectors to date are based on a two-stage approach popularized by R-CNN, where a classifier is applied to a sparse set of candidate object locations. In contrast, one-stage detectors that are applied over a regular, dense sampling of possible object locations have the potential to be faster and simpler, but have trailed the accuracy of two-stage detectors thus far. In this paper, we investigate why this is the case. We discover that the extreme foreground-background class imbalance encountered during training of dense detectors is the central cause. We propose to address this class imbalance by reshaping the standard cross entropy loss such that it down-weights the loss assigned to well-classified examples. Our novel Focal Loss focuses training on a sparse set of hard examples and prevents the vast number of easy negatives from overwhelming the detector during training. To evaluate the effectiveness of our loss, we design and train a simple dense detector we call RetinaNet. Our results show that when trained with the focal loss, RetinaNet is able to match the speed of previous one-stage detectors while surpassing the accuracy of all existing state-of-the-art two-stage detectors. Code is at: https://github.com/facebookresearch/Detectron.
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                Author and article information

                Contributors
                Journal
                Front Big Data
                Front Big Data
                Front. Big Data
                Frontiers in Big Data
                Frontiers Media S.A.
                2624-909X
                09 March 2021
                2021
                : 4
                : 612561
                Affiliations
                [ 1 ]Faculty of Engineering and Applied Science, Ontario Tech University, Oshawa, ON, Canada
                [ 2 ]Marion Surgical, Toronto, ON, Canada
                Author notes

                Edited by: Simon DiMaio, Intuitive Surgical, Inc., United States

                Reviewed by: Maria F. Chan, Memorial Sloan Kettering Cancer Center, United States

                Tina Kapur, Harvard Medical School, United States

                *Correspondence: Carlos Rossa, carlos.rossa@ 123456ontariotechu.ca

                This article was submitted to Medicine and Public Health, a section of the journal Frontiers in Big Data

                Article
                612561
                10.3389/fdata.2021.612561
                7968725
                5c0a1e23-415b-4cc5-aa5f-5bde243e3e04
                Copyright © 2021 McDermott, Łącki, Sainsbury, Henry, Filippov and Rossa.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 30 September 2020
                : 14 January 2021
                Funding
                Funded by: Natural Sciences and Engineering Research Council of Canada 10.13039/501100000038
                Categories
                Big Data
                Review

                covid-19,lung ultrasound,image processing,machine learning,diagnosis,segmentation,classification

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