2022
DOI: 10.1016/j.imu.2021.100835
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Indirect supervision applied to COVID-19 and pneumonia classification

Abstract: The novel coronavirus 19 (COVID-19) continues to have a devastating effect around the globe, leading many scientists and clinicians to actively seek to develop new techniques to assist with the tackling of this disease. Modern machine learning methods have shown promise in their adoption to assist the healthcare industry through their data and analytics-driven decision making, inspiring researchers to develop new angles to fight the virus. In this paper, we aim to develop a CNN-based method for the detection o… Show more

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Cited by 4 publications
(1 citation statement)
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References 43 publications
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“…The majority of the current disease classification solutions focus, primarily, on distinguishing whether an infection is present or not, without paying much attention to where the network is looking. Previously 13 , we extended the classification of COVID-19 and pneumonia by utilizing a popular visualization technique known as Grad-CAM 83 . Using Grad-CAM, we validated where the four best-performing networks (MobileNet V2, EfficientNet B1, EfficientNet B3, VGG-16) were focusing, verifying that they are properly looking at the correct patterns in the image and activating around those patterns.…”
Section: Discussionmentioning
confidence: 99%
“…The majority of the current disease classification solutions focus, primarily, on distinguishing whether an infection is present or not, without paying much attention to where the network is looking. Previously 13 , we extended the classification of COVID-19 and pneumonia by utilizing a popular visualization technique known as Grad-CAM 83 . Using Grad-CAM, we validated where the four best-performing networks (MobileNet V2, EfficientNet B1, EfficientNet B3, VGG-16) were focusing, verifying that they are properly looking at the correct patterns in the image and activating around those patterns.…”
Section: Discussionmentioning
confidence: 99%