Please use this identifier to cite or link to this item: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/18805
Title: Deep Learning-based Classification of COVID-19 Lung Ultrasound for Tele-operative Robot-assisted diagnosis
Authors: Adedigba, Adeyinka Peace
Adeshina, Steve Adetunji
Keywords: Deep Convolutional Neural Network
healthcare workers
Lung ultrasound
mixed-precision training
Robot-assisted diagnosis
Tele-medicine
Issue Date: 15-Jul-2021
Publisher: 2021 1st International Conference on Multidisciplinary Engineering and Applied Science (ICMEAS)
Citation: Adedigba, A. P., & Adeshina, S. A. (2021, July). Deep learning-based classification of COVID-19 lung ultrasound for tele-operative robot-assisted diagnosis. In 2021 1st International Conference on Multidisciplinary Engineering and Applied Science (ICMEAS) (pp. 1-6). IEEE.
Abstract: Despite the implementation of strict COVID-19 guideline, over 300,000 healthcare workers has been infected with COVID-19 globally with over 7,000 deaths. This risk of infection and loss of vital healthcare workers can be eliminated by deploying a deep learning enhanced teleoperated robot. The robot for this study was developed by Worchester Polytechnic Institute, US, to be deployed for COVID-19 at the Nigerian National Hospital Abuja. In this paper, we develop a deep learning-based automatic classification o f l ung u ultrasound images f or rapid, efficient a nd a ccurate d iagnosis o f p atients f or t he developed teleoperated robot. Two lightweight models (SqueezeNet and MobileNetV2) were trained on COVID-US benchmark dataset with a computational- and memory-efficient mixed-precision training. The models achieve 99.74% (± 1) accuracy, 99.39% (± 1) recall and 99.58% (± 2) precision rate. We believe that a timely deployment of this model on the teleoperated robot will remove the risk of infection of healthcare workers.
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/18805
Appears in Collections:Mechatronics Engineering



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