2020
DOI: 10.1109/access.2020.3001973
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Artificial Intelligence and COVID-19: Deep Learning Approaches for Diagnosis and Treatment

Abstract: COVID-19 outbreak has put the whole world in an unprecedented difficult situation bringing life around the world to a frightening halt and claiming thousands of lives. Due to COVID-19's spread in 212 countries and territories and increasing numbers of infected cases and death tolls mounting to 5,212,172 and 334,915 (as of May 22 2020), it remains a real threat to the public health system. This paper renders a response to combat the virus through Artificial Intelligence (AI). Some Deep Learning (DL) methods hav… Show more

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Cited by 433 publications
(235 citation statements)
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References 73 publications
(110 reference statements)
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“…There are a variety of methods which can be used to develop prognostic models, ranging from logistic regression and survival analysis to more complex machine learning algorithms and deep learning [ 3 ]. As a consequence of the emergent interest in deep learning, a number of techniques have been developed within this field with respect to the diagnosis, treatment and prognosis of the COVID-19 disease, including densely connected neural networks, recurrent networks and generative adversarial networks [ 4 ]. There is currently no consensus as to which of these techniques yields the most robust prognostic models [ 5 ], and whilst several models have been developed at a time when they are urgently required, there are a number of limitations which have impeded their use [ 6 ].…”
Section: Introductionmentioning
confidence: 99%
“…There are a variety of methods which can be used to develop prognostic models, ranging from logistic regression and survival analysis to more complex machine learning algorithms and deep learning [ 3 ]. As a consequence of the emergent interest in deep learning, a number of techniques have been developed within this field with respect to the diagnosis, treatment and prognosis of the COVID-19 disease, including densely connected neural networks, recurrent networks and generative adversarial networks [ 4 ]. There is currently no consensus as to which of these techniques yields the most robust prognostic models [ 5 ], and whilst several models have been developed at a time when they are urgently required, there are a number of limitations which have impeded their use [ 6 ].…”
Section: Introductionmentioning
confidence: 99%
“…3 As a consequence of the emergent interest in deep learning, a number of techniques have been developed within this eld with respect to the diagnosis, treatment and prognosis of the COVID-19 disease, including densely connected neural networks, recurrent networks and generative adversarial networks. 4 There is currently no consensus as to which of these techniques yields the most robust prognostic models, 5 and whilst several models have been developed at a time when they are urgently required, there are a number of limitations which have impeded their use. 6 Several of the current models have been found to be highly susceptible to bias.…”
Section: Introductionmentioning
confidence: 99%
“…The researchers in [7] focus on analyzing the data available at web-based platforms to demonstrate the trends about the effect of 'SARS-CoV-2' across the globe. The authors in [8] reviewed the findings of the recent literature published on 'COVID-19'. They highlighted the challenges in its diagnosis and treatment.…”
Section: Related Workmentioning
confidence: 99%