2021
DOI: 10.1016/j.knosys.2021.106849
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Transfer learning for establishment of recognition of COVID-19 on CT imaging using small-sized training datasets

Abstract: The coronavirus disease, called COVID-19, which is spreading fast worldwide since the end of 2019, and has become a global challenging pandemic. Until 27th May 2020, it caused more than 5.6 million individuals infected throughout the world and resulted in greater than 348,145 deaths. CT images-based classification technique has been tried to use the identification of COVID-19 with CT imaging by hospitals, which aims to minimize the possibility of virus transmission and alleviate the burden of clinicians and ra… Show more

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Cited by 67 publications
(35 citation statements)
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“…However, the amount of labeled radiology images used for training limits the performance and generalization of those models [ 59 ]. In order to address this issue, several transfer learning-based approaches for COVID-19 identification have been developed in the literature [ 29 , 41 ].…”
Section: Background Studymentioning
confidence: 99%
“…However, the amount of labeled radiology images used for training limits the performance and generalization of those models [ 59 ]. In order to address this issue, several transfer learning-based approaches for COVID-19 identification have been developed in the literature [ 29 , 41 ].…”
Section: Background Studymentioning
confidence: 99%
“…On the clinical scale, deep convolutional neural networks (DCNN) are developed to automatically identify COVID-19’s infections and regions of interest (ROI) via medical images in an economical and efficient manner [23] , which can be especially helpful for the less-developed communities. Pre-trained DL models such as ResNet, U-Net, VB-Net, and others, have also been employed for X-ray or CT image segmentation in COVID-19 applications [23] , which have generated promising results in distinguishing COVID-19 from community-acquired pneumonia by segmenting and locating infected lung regions and lesions, and hence tracking and evaluating the virus’ severity and evolution over time [24] .…”
Section: Literature Reviewmentioning
confidence: 99%
“…On the clinical scale, deep convolutional neural networks (DCNN) are developed to automatically identify COVID-19’s infections and regions of interest (ROI) via medical images in an economical and efficient manner [23] , which can be especially helpful for the less-developed communities. Pre-trained DL models such as ResNet, U-Net, VB-Net, and others, have also been employed for X-ray or CT image segmentation in COVID-19 applications [23] , which have generated promising results in distinguishing COVID-19 from community-acquired pneumonia by segmenting and locating infected lung regions and lesions, and hence tracking and evaluating the virus’ severity and evolution over time [24] . On the other hand, as numerical data pertaining to the number of suspected, confirmed, cured, and death COVID-19 cases, passengers travel trajectories, etc., are being shared widely on the internet daily, traditional and novel ML methods can be applied to learn from the vastly available information to forecast the transmission of COVID-19 [25] .…”
Section: Literature Reviewmentioning
confidence: 99%
“…O trabalho realizado por [Turkoglu 2021], apresenta um método em Multiple Kernels-ELM (MKs-ELM-DNN), para a detecc ¸ão de COVID-19 por meio de imagens de TC de tórax utilizando a rede DenseNet201. Já na pesquisa dos autores [Li et al 2021], foi proposto um método (CheXNet) baseado em transferência de aprendizagem que visa identificar COVID-19 em imagens de TC de tórax. No trabalho de [Arora et al 2021], é feito o uso da Super Resoluc ¸ão (SR) no pré-processamento das imagens com técnicas de aumento de dados e a transferência de aprendizagem.…”
Section: Detecc ¸ãO Da Covid-19: Tomografias Computadorizadasunclassified